- Department of Statistics, University of Chicago, Chicago, IL, United States
We develop biologically plausible training mechanisms for self-supervised learning (SSL) in deep networks. Specifically, by biologically plausible training we mean (i) all updates of weights are based on current activities of pre-synaptic units and current, or activity retrieved from short term memory of post synaptic units, including at the top-most error computing layer, (ii) complex computations such as normalization, inner products and division are avoided, (iii) asymmetric connections between units, and (iv) most learning is carried out in an unsupervised manner. SSL with a contrastive loss satisfies the third condition as it does not require labeled data and it introduces robustness to observed perturbations of objects, which occur naturally as objects or observers move in 3D and with variable lighting over time. We propose a contrastive hinge based loss whose error involves simple local computations satisfying (ii), as opposed to the standard contrastive losses employed in the literature, which do not lend themselves easily to implementation in a network architecture due to complex computations involving ratios and inner products. Furthermore, we show that learning can be performed with one of two more plausible alternatives to backpropagation that satisfy conditions (i) and (ii). The first is difference target propagation (DTP), which trains network parameters using target-based local losses and employs a Hebbian learning rule, thus overcoming the biologically implausible symmetric weight problem in backpropagation. The second is layer-wise learning, where each layer is directly connected to a layer computing the loss error. The layers are either updated sequentially in a greedy fashion (GLL) or in random order (RLL), and each training stage involves a single hidden layer network. Backpropagation through one layer needed for each such network can either be altered with fixed random feedback weights (RF) or using updated random feedback weights (URF) as in Amity's study 2019. Both methods represent alternatives to the symmetric weight issue of backpropagation. By training convolutional neural networks (CNNs) with SSL and DTP, GLL or RLL, we find that our proposed framework achieves comparable performance to standard BP learning downstream linear classifier evaluation of the learned embeddings.
1. Introduction
The rapid development of deep learning in recent years has raised extensive interest in applying artificial neural networks (ANNs) to the modeling of cortical computations. Multiple lines of research, including those using convolutional neural networks (CNNs) to model processing in the ventral visual stream (McIntosh et al., 2016; Yamins and DiCarlo, 2016) and those using recurrent neural networks (RNNs) as models of generic cortical computation (Song et al., 2016; Masse et al., 2019) have suggested that ANNs are not only able to replicate behavioral activities (e.g., categorization) of biological systems but are also capable of reproducing neuronal activities observed in vivo or in vitro. These observations, combined with the structural similarities (e.g., a hierarchy of layers and recurrent connections) between ANNs and cortical areas, make the use of deep learning a promising approach for modeling neural computations.
Despite these successes, there are some fundamental problems confronting this approach. One issue with classification ANNs as a model for cortical learning is their reliance on massive amounts of labeled data and most ANN's employ backpropagation for learning. To be more specific, modern classification ANNs are trained to match their predictions to a set of target labels each associated with a training data point (e.g., an image), while biological systems, such as humans, usually learn without a large degree of supervision. Most notably, backpropagation (BP), the learning rule for modern ANNs employing the chain rule for differentiation (Rumelhart et al., 1986), is biologically implausible, as the same set of synaptic weights that have been used to compute the feedforward signals are also needed to compute the feedback error signals. Such a symmetric synaptic weight matrix does not exist in the brain (Zipser and Rumelhart, 1993; Amit, 2019; Lillicrap et al., 2020). In this article by biologically plausible training, we refer to an algorithm that satisfies the following conditions: (i) all updates of weights are based on current activities of pre-synaptic units and current, or activity retrieved from short term memory of post synaptic units, including at the top-most error computing layer, (ii) complex computations such as normalization, inner products and division are avoided, (iii) asymmetric connections between units, and (iv) most learning is carried out in an unsupervised manner.
In recent years, a number of solutions have been proposed to address the symmetric connection issue (Lee et al., 2015; Akrout et al., 2019; Amit, 2019; Belilovsky et al., 2019; Lillicrap et al., 2020). In parallel, in the deep learning community at large, there has been growing interest in self-supervised learning (SSL) where unlabeled data is used to create useful embeddings for downstream prediction tasks (Caron et al., 2020; Chen et al., 2020; He et al., 2020; Zbontar et al., 2021). Rather than relying on labels as external teaching signals, SSL methods train neural networks with an objective function that attempts to maximize the agreement between two separate but related views of input, each serving as the internal teaching signal for the other. Works such as Chen et al. (2020) and He et al. (2020) create the two views using random deformations on images, such as random crop and color jittering and other forms of deformation. Note that these deformations can be mapped into the motion of a real-world 3D object that provides the jittering effect in a natural environment, including changes in lighting. In parallel, the work in Oord et al. (2018) and Henaff (2020) explore this idea by creating pairs of views from neighboring patches in a larger image as surrogates for a gaze shift. Since the agreement maximization between related views alone would cause the networks to produce a constant embedding regardless of the inputs (collapsing), different SSL methods employ different regularization terms to prevent collapsing, either using negative examples (Oord et al., 2018; Chen et al., 2020; He et al., 2020; Henaff, 2020): images that are unrelated to the pair of related views or using some constraints on the structure of the embedding, such as forcing the different embedding coordinates to be uncorrelated: Zbontar et al. (2021), or well spread out in the embedding space (Caron et al., 2020).
Self-supervised learning produces embeddings of the data with strong representation and robustness properties, in an unsupervised manner. Multiple lines of research have shown that embeddings from networks trained by SSL are comparable to those from networks trained by supervised methods in downstream tasks such as linear evaluation, namely training a linear classifier on labeled data using the learned embedding. These embeddings are also robust to natural variation in the presentation of objects, performing particularly well in transfer learning (Chen et al., 2020; He et al., 2020). These properties of SSL, along with its unsupervised nature, make it an ideal model for cortical computations. Inheriting the patch-based method proposed by Oord et al. (2018), recent works (Löwe et al., 2019; Illing et al., 2021) have used the patch-based SSL for biologically plausible learning by coupling them with localized learning rules and losses. In the meantime, Zhuang et al. (2021) used the deformation-based SSL methods proposed in Chen et al. (2020) and He et al. (2020) to train goal-driven ANNs that predicts neuronal activities with backpropagation. However, the deformation-based SSL methods per-se have not been investigated thoroughly as a computational model for learning in the brain.
In our work, we further pursue this line of research initiated in Löwe et al. (2019) and Illing et al. (2021), with a particular focus on deformation-based SSL. One contribution is to use a variety of global views of the whole object (as shown in Figure 1) with the global deformation framework by Chen et al. (2020), which is a more general way of getting view changes than the vertical patch movements in Löwe et al. (2019) and Illing et al. (2021) that typically focus on only small parts of an object. This appears to be more consistent with the real-time input obtained when observing real-world 3D objects. We then propose a self-supervised loss function with the spatial locality of computations, called contrastive hinge loss, which only requires the simplest form of Hebbian updates using the outputs of the pre- and post-synaptic units (Hebb, 1949). This loss avoids computations, such as normalization, inner product and divisions found in the losses used in Chen et al. (2020), Oord et al. (2018), and He et al. (2020), and requires no global dendritic inputs employed in the loss by Illing et al. (2021). We push our method further toward temporal locality by considering the first image of a positive pair in SSL as stored in “short-term” memory, which is then compared to the second positive pair, or a negative example. Thus, the loss is only computed after the second image is observed, and the gradient can only be affected by the embedding of the second image. We thus make sure that the gradient of the loss does not pass through the first observed image to ensure the temporal locality of our approach.
Figure 1. A more general way of getting shifting views of an object. Our deformation methods try to mimic various ways of getting changed views of an object to form a positive pair. For example, the observation of a dog during two consecutive time steps may experience changing views caused by shortened distance and dimmed lighting. Effects of individual deformations can be found in Figure 2. Images taken from the STL10 dataset.
We then combine our SSL framework with several biologically plausible learning methods proposed for supervised learning in previous works, but with our own novel modifications. We first explore Randomized Layer-wise Learning (RLL) with Random Feedback (RF). In layer-wise learning, each layer has a direct connection to the layer computing the self-supervised loss and updates a single hidden layer with input given by the output of the previous layer. The sequential form of layer-wise learning has been studied in a number of papers (Bengio et al., 2006; Hinton et al., 2006; Jaderberg et al., 2017; Huang et al., 2018; Belilovsky et al., 2019; Nøkland and Eidnes, 2019), which nevertheless requires rigid timing of the updates of each layer. This would seem unlikely in the biological setting. We thus propose the randomized layer-wise learning, which randomizes the layers being updated at each step, for a more plausible mechanism. Since training the single hidden layer with BP introduces the weight symmetry problem, we also explore the possibility of using the RF approach of Lillicrap et al. (2016), which replaces the symmetric feedback weight in BP with a random one. This method works well with shallow networks (in this case one hidden layer) but its performance deteriorates with the depth of the network (Bartunov et al., 2018). It is thus quite suitable for layer-wise learning. Amit (2019) proposed updated random feedback (URF), which uses the same updates to the forward and backward connections starting at random initial conditions as opposed to imposing strict symmetry. This approach works as well as BP on shallow networks. We also investigate Difference Target Propagation (DTP) with pooling layers. DTP (Lee et al., 2015) updates the weights in a network by minimizing a set of local losses, computed as the difference between the bottom-up forward activities and the top-down targets, both propagated through a set of non-linear functions. The localized losses in DTP then yield a Hebbian learning rule for the connectivity weights. Previous works (Bartunov et al., 2018) suggested that pooling layers in CNNs are not compatible with this learning rule and used strided convolutional layers to perform down-sampling of input data. We nevertheless find that pooling layers can in fact be incorporated into networks trained by DTP. With our SSL method, we show that DTP-pooling achieves comparable results to BP on CIFAR10 (Krizhevsky et al., 2014), whereas previous works on supervised DTP (Bartunov et al., 2018) have presented a performance gap between DTP and BP on this dataset.
Finally, we use a simple experiment to demonstrate the robustness of our embedding to object variability in downstream tasks, where the labeled training data contain a more limited range of variability. Although traditionally this is resolved by using data augmentation on the labeled training data, this shows that robustness can be achieved a-priori with unlabeled data.
This article is organized as follows. In section 2, we discuss related works in SSL and in biologically plausible learning rules. In section 3, we describe the technical details of our proposed framework, including our biologically plausible SSL method, DTP-pooling, and RLL with RF. In section 4, we present the experimental results on three different datasets: STL10 (Coates et al., 2011), CIFAR100/CIFAR10 (Krizhevsky et al., 2014), and EMNIST/MNIST (LeCun et al., 2010; Cohen et al., 2017), including our proposed framework's performance in the linear evaluation and transfer learning tasks. We conclude with a discussion section.
2. Related Work
Biologically Plausible Learning Rules. The biological implausibility of backprop was mentioned in Zipser and Rumelhart (1993) and they first suggested separating the feedforward weights of ANNs from the feedback weights. More recently, Lillicrap et al. (2016) proposed a biologically plausible learning rule called “feedback alignment” (FA), which decouples the feedforward and feedback weights by fixing the feedback weights at random values, we rename this “Random Feedback” (RF). However, this method does not scale well to deeper networks and more challenging datasets (Amit, 2019). Several modifications have been proposed to improve the performance of FA. Liao et al. (2016) found that using Batch Normalization (BN) could improve the performance of FA, but it is unclear how BN can be employed by biological neural circuits.
Another track of research on the improvement of FA focuses on finding a learning rule for the feedback weights (rather than fixing them). Amit (2019) proposed to train the randomly initialized feedback weights using the same updates as those for the feedforward weights and found a significant improvement of error rates in deeper networks, hence the name URF. This work also paid particular attention to the topmost layer. By modifying the loss for supervised learning, the learning rule at the topmost layer in this method yields a Hebbian update and is thus more biologically plausible than the softmax loss. In our work, we follow this idea and propose a more biologically plausible loss for SSL. Similar to Amit (2019), Akrout et al. (2019) also proposed a learning rule for the feedback weights that will force the feedback weights to converge to the feedforward weights, resulting in convergence to backprop. In Illing et al. (2021) both RF and URF are explored as methods to update each trained layer.
An alternative modification of deep learning yielding more biologically plausible update rules is DTP (Lee et al., 2015). Localized losses are introduced in all layers, such that the weight updates are purely local and independent of the outgoing weights. The backward computation in DTP propagates the “targets” top-down and uses a set of backward weights learned through layer-wise autoencoders. This structure on the basis of layer-wise losses connects DTP to predictive coding (Rao and Ballard, 1999; Whittington and Bogacz, 2017), which have formed a well-established computational model for brain areas such as the visual cortex. However, these latter works on predictive coding still suffer from the symmetric weight problem, which is avoided in DTP. Bartunov et al. (2018) further investigated DTP with CNNs and more challenging datasets such as CIFAR10 and found a significant performance gap between backprop and DTP in supervised visual tasks such as classification. Difference target propagation has also been applied to RNNs (Manchev and Spratling, 2020) and variants of DTP, such as that in Ororbia et al. (2020), have been proposed recently to address the slow training issue due to the layer-wise autoencoders in the original algorithm. Meulemans et al. (2020) developed a theoretical analysis of target propagation, showing that this biologically more plausible learning rule in fact approximates Gauss-Newton optimization and is thus significantly different from BP.
In end-to-end learning, all layers in the network, after passing the input signal forward to the next layer, must wait for the signal to feed-forward through the rest of the network and the error signal to propagate back from the last layer. No updates can be done during this period. This constraint is referred to as the locking problem by Jaderberg et al. (2017). Moreover, end-to-end learning requires some mechanism of passing information sequentially through multiple layers, whether using backpropagation or target propagation. Layer-wise learning is an alternative to end-to-end learning that tackles both problems. Greedy unsupervised layer-wise learning was first proposed to improve the initialization of deep supervised neural networks (Bengio et al., 2006; Hinton et al., 2006). Huang et al. (2018) used the layer-wise method to train residual blocks in ResNet sequentially, then refined the network with the standard end-to-end training. Belilovsky et al. (2019) studied the progressive separability of layer-wise trained supervised neural networks and demonstrated Greedy Layer-wise Learning (GLL) can scale to large-scale datasets like ImageNet. Other attempts at supervised layer-wise learning involve a synthetic gradient (Jaderberg et al., 2017) and a layer-wise loss that combines local classifier and similarity matching loss (Nøkland and Eidnes, 2019).
Self-supervised Learning. The idea of SSL has been proposed in Becker and Hinton (1992). The authors of this work used a self-supervised objective that maximizes the agreement between the representations of two related views of an input, subject to how much they both vary as the input is varied. More recent work in the context of deep learning can be found in the Contrastive Predictive Coding (CPC) framework by Oord et al. (2018) where nearby patches from the larger images are used as positive pairs. The methods in Chen et al. (2020) and He et al. (2020) use standard data augmentation and deformation methods such as cropping, resizing, color jittering etc., to create the positive pairs. These methods introduced the concept of contrasts to prevent collapse, where the self-supervised objective includes a term that maximizes the agreement between related representations (“positives,”) as well as a term to minimize the agreement between unrelated representations (“negatives”), thus preventing the networks from producing a constant output regardless of the inputs. Optimizing this objective will create contrasts between positives and negatives, hence the term contrastive learning.
The acquisition of positives is similar across deformation-based SSL methods, using random perturbations of the input. The selection of negatives is what differentiates them. The SIMCLR framework, proposed by Chen et al. (2020), uses all other images within a mini-batch as negatives of an image. In this way, the batch size is associated with the number of negatives and usually needs to be large enough to provide sufficient negatives. To decouple these two hyperparameters, the MOCO framework, by He et al. (2020), uses a dynamic queue of negatives, with its length decoupled from the batch size. During training, every new mini-batch is enqueued and the oldest mini-batch is dequeued, which provides a larger sample of negatives from the continuous space of images.
More recently, a few new methods in SSL have been proposed to eliminate the need for negatives (therefore no contrast), including BYOL (Grill et al., 2020), SIMSIAM (Chen and He, 2021), and Barlow Twins (Zbontar et al., 2021). BYOL and SIMSIAM both used a top-layer linear predictor and a gradient block to asymmetrize the two networks for the pair of positives, and the performance of their idea was proved to be comparable to the contrastive methods. Recent theoretical works have also shed light on why the linear predictor and gradient block help prevent collapse (Tian et al., 2021). Barlow Twins uses a symmetric architecture, and their objective function enforces the cross-correlation matrix between the positives to be as close to an identity matrix as possible. Its objective has a biological interpretation closely related to the redundancy reduction principle (Barlow, 1961), which has been used to describe how the cortical areas process sensory inputs. We do not experiment with Barlow Twins in this article, as we are still exploring biologically plausible ways to implement this loss.
Relationship of SSL to biology. Of interest is the work in Zhuang et al. (2021) which uses SSL to train a model for sensory processing in the ventral visual cortical areas. Using the techniques developed by Yamins and DiCarlo (2016) and Schrimpf et al. (2018), they measured the correlation between recordings of neuronal activities from the ventral visual stream and activities of CNNs trained by the deformation-based SIMCLR, given the same visual inputs and tasks. The CNNs were found to achieve highly accurate neuronal activity predictions in multiple ventral visual cortical areas, even more so than CNNs trained with supervised learning. However, the CNN models in their experiments are not trained as computational models for learning in cortical areas, and thus are trained with BP and the SIMCLR loss, which would be difficult to compute using neural circuits (refer to section 3.1). In our work, we suggest a model for learning, with biologically plausible learning rules and an alternative simpler loss that could be implemented with simple neural circuits.
The work in Illing et al. (2021) adapts some of the more biologically plausible learning rules mentioned above to the SSL context. Inspired by He et al. (2020), they employ pairs of nearby image patches (small 16x16 sub-images) as positive pairs, motivated by the effect of small eye movements. Negative pairs are created from patches in other images. They also employ a layer-wise learning mechanism, with a loss that computes the inner product of the embedding of the first image of the pair, to a linear transformation of the embedding of the second image. However, the learning rule derived from this loss requires global dendritic inputs from a group of neurons, rather than local and individual pre- and post-synaptic activities. The embedding and the linear transformation are all trained parameters. They note that there is no need to use a large number of negative examples for each positive example, thus making training more realistic in that there is no need to retain a buffer of multiple negative examples. They also explore updating the different layers synchronously and use more biologically plausible update rules for updating each layer similar to those used in Amit (2019).
3. Methods
In this section, we first describe the SSL framework, with a particular focus on how we push it toward a biologically more plausible learning model by modifying its architecture to achieve temporal locality and introducing a contrastive hinge loss with the spatial locality of computations. We then describe how we use RF, layer-wise learning, and DTP to address the symmetric weight problem in BP and our modifications to improve their performance in deep convolutional networks.
3.1. SSL With Global Views and Local Computations
Given an input image , deformation-based SSL first applies two different sets of random deformations to it to create a pair of positive samples. We denote this pair as and , indicating that they are the input into the 0-th layer of our networks (corresponding to the retina). s ∈ {1, …, n} indicates their batch index within a batch of size n. Specifically, we apply (1) random resized crop, (2) random flip, (3) random color jittering (including changes in contrasts, brightness, saturation, and hue), and (4) random changes to grayscale images, resulting in a variety of global views of a whole object. This whole range of deformations can be mapped into the observation of the real-time motion of real-world 3D objects (as shown in Figure 2), making our framework more consistent with how animals perceive “positive pairs”. Notice that in Löwe et al. (2019) and Illing et al. (2021), consecutive patches (sub-images) of fixed sizes following a vertical order were used to create positive pairs of views, to model the gaze shift during observation of an object, whereas in our work, the random resized crop provides shifting views of the object toward random angles and random sizes of the field of view. Löwe et al. (2019) and Illing et al. (2021) also transformed all images to grayscale, while the color jittering in our deformations reflects the change of real-world lighting conditions.
Figure 2. Individual deformations used in our self-supervised learning (SSL) method. Each of them is applied randomly to each image in a batch, creating a variety of views. Images taken from the STL10 dataset.
We denote the set of unrelated negative samples as . We follow the scheme developed by Chen et al. (2020) and select our negatives from the current batch of images fed into the network. However, instead of using the whole batch of unrelated images as in Chen et al. (2020), we only select T negative samples from the batch indicating a small number of closest observations to the original image along the temporal dimension. This reflects our consideration that the memory of the original image can only be stored for a relatively short period of time, using the models for working memory proposed in works such as Mongillo et al. (2008) and Barak and Tsodyks (2014).
The positive pair and the negative samples are then passed into the same encoder network with L layers, and a single-layer projection head to produce their embeddings , , and . The whole network is then trained to minimize the distance between and , i.e., to maximize the agreement between the two related views, and to maximize the distance between and 's in order to prevent collapsing. Chen et al. (2020) achieved this objective using a multinomial logistic loss function and we refer to it as the SIMCLR loss in our work:
where sim(a, b) = a · b/∥a∥2∥b∥2 and τ denotes a temperature hyperparameter.
We use the A, B notation, which is different from that of Chen et al. (2020), to emphasize that in our proposed loss (see below), for each anchor image xA we only use negatives from the “B” list, whereas in SIMCLR negative images come from both the A-list and the B-list so that it is entirely symmetric in terms of the two branches. To compute the update of an individual weight WL,ij in the topmost layer, connecting the pre-synaptic neuron j and post-synaptic neuron i, it is necessary to compute complex ratios and inner products related to the output of the other neurons in this layer, making the learning rule for the topmost layer non-local. Moreover, to make sure the similarity measurements are at the same scale across all data points, all of the embeddings have to be normalized to the unit norm. Although some evidence has been found for this type of computation in the cortex [see Carandini and Heeger (2012)], the instances are usually at lower levels of sensory input and involve local computations with neurons of similar types of responses. In this case, we require normalization over a set of neurons with very diverse responses to very high level functions of the input. Taking into account all these issues motivates the introduction of a simpler learning rule that avoids such operations, which, as we will see, does not degrade performance.
We propose an alternative contrastive loss inspired by the biologically plausible supervised loss in Amit (2019), which requires only local activities of the neurons in the top layer, and does not require normalization, thus lending itself to very simple network implementations. We call it contrastive hinge loss. For a batch of size n with embedding and , the loss is:
where s ∉ is a subset of the B batch. The set could contain all of the batch or at the other extreme just one negative example. Only positives with a distance greater than a margin (m1) and negatives with a distance smaller than a margin (m2) will be selected, making sure that optimization only depends on “problematic” examples. Notice that in the topmost layer the forward computation is xL = WLxL−1 and thus during learning the gradient descent update of WL,ij, i.e., the weight connecting the pre-synaptic neuron j to post-synaptic neuron i, due to a single anchor input is as follows (omitting the s subscript):
where the error signal of this loss is:
In the case of gradient blocking, we block the gradient through , hence the weight update in Equation (3) becomes
During learning, this error signal will only depend on activities local to the ith neuron in the topmost layer. The only information needed from other neurons in the output is in filtering out the “easy” negatives involving L1 distances between activities.
In the extreme case where contains one negative, this update can be viewed as follows. The anchor image xA is shown and the embedding is retained in short-term memory, as modeled for example in Mongillo et al. (2008) and Barak and Tsodyks (2014). Then, is computed and the weight WL,ij updated with . The anchor image is still kept in short term memory and once a saccade has occurred to some other object is computed and the same weight WL,ij is updated with . If several negatives are required needs to be kept in short-term memory for a longer period. Note that the memory trace of needs to be stored in another unit, as the actual i, L unit is activated with or , in order to perform the Hebbian update or . If the block gradient is not implemented, it would be necessary to retain the input in some short term memory as well and retrieve it to the units in the L − 1 layer for the update . It is in this sense that we view the blocked gradient implementation as yielding greater temporal locality for the learning rule, in the context of small numbers of negatives.
The computation of the error signals requires the computation of the difference between the activity stored in short-term memory and the activity . One can imagine the computation of the thresholds in the error signals with rectified units and a combination of excitatory and inhibitory neurons (see Supplementary Material A). Moreover, no normalization is needed. Figure 3 shows the general structure of our proposed self-supervised model.
Figure 3. Overview of our proposed self-supervised model with contrastive hinge loss. The gradient flow in is blocked. For demonstration purpose, only one negative is shown.
3.2. Weight Symmetry and Alternatives to BP
For a multi-layer network with layers 1, 2, …, L, we denote the activation value of the lth layer as . We denote the feedforward weight from the (l−1)th to the lth layer as . The forward computation in this layer can be written as:
where σ is the element-wise non-linearity. In the top layer, where no non-linearity will be applied, the forward computation will be xL = WLxL−1 and a global loss will be computed based on the true labels vector y and final layer activities xL in supervised learning.
The difficulty in imagining a biological implementation of BP has been discussed extensively (Zipser and Rumelhart, 1993; Lillicrap et al., 2020) and boils down to the need for symmetric synaptic connections between neurons in order to propagate the error backward through the layers. Following the feed-forward pass above, in BP the update of the weight matrix Wl is , where
and is a diagonal matrix with the i-th diagonal element being . The need for the outgoing weight Wl+1 when computing the update of the weight matrix introduces the symmetric weight problem.
Random Feedback (RF). Proposed by Lillicrap et al. (2016), this learning rule tackles the symmetric weight problem by simply replacing the weight in Equation (9) with a fixed random matrix Bl+1, i.e., the error signal in RF is computed as:
Although proven to be comparable to BP in shallow networks, the performance of RF degrades as network depth increases, due to the fact that the alignment between Wl+1 and Bl+1 weakens (Amit, 2019). We thus combine RF with layer-wise learning, where the RF error signals Equation (10) are always computed in a shallow, 1-layer network, to tackle this issue with depth.
Updated Random Feedback (URF). In Amit (2019), a more plausible version of BP is proposed, where the RF weights Bl, which are initialized differently from the feedforward weights, are updated with the same increment as the feedforward weights, as defined in Equation (9). The URF method yields results very close to BP, essentially indistinguishable for shallow networks. We compare the performance of RF with the one layer BP/URF in the context of layer-wise training.
Greedy and Randomized Layer-wise Learning. We adapted the supervised Greedy Layer-wise Learning (GLL) method proposed by Belilovsky et al. (2019) to SSL by training convolutional layers sequentially with auxiliary heads and self-supervised loss, as shown in Figure 4. The base encoders are trained layer by layer. For each layer, the new training layer is added on top of the previous architecture, and only parameters in the new training layer and its auxiliary head are updated. Thus, at each step, we are training a network with one hidden layer. Then, we replace the auxiliary heads with a linear classifier layer and only update these weights with supervised learning to measure the representational power of the embedding. The pretrained network with SSL provides the encoder input to the classifier and is not updated.
Figure 4. Training the base encoder in Figure 3 with layer-wise learning. When training layer 3, for example, only the shaded orange and grey blocks are included in the network, and only the orange blocks (layer 3 of the network and the auxiliary head 3) are updated. For Greedy Layer-wise Learning (GLL), the layers are trained till convergence sequentially from bottom to top. For Randomized Layer-wise Learning (RLL), a layer is randomly selected to train for each batch of training data. The feedback weights (red arrows) from head to encoder can be random in our proposal.
Greedy Layer-wise Learning tackles the locking problem as it does not require back-propagating through the whole network to get the full gradients. It does not require storage of activations in intermediate layers. In addition to GLL, where we sequentially train layers with auxiliary heads, we also explore what we called Randomized Layer-wise Learning (RLL), where a random layer in the architecture is selected to update for each batch of training data. The data is first passed through the layers before the selected layer, then the selected layer and corresponding auxiliary classifier. Only parameters in the selected layer and its auxiliary head are updated. RLL maintains the main advantage of GLL in terms of plausibility, in that only one hidden layer is updated, requiring minimal error propagation, and, in addition, it does not require the sequential training of the network, which assumes strict timing of the layer updates.
Incorporating Pooling Layers into DTP. Target propagation (TP) circumvents the symmetric weight problem using layer-local losses. The main idea behind TP is to set a target for each layer in the network, such that by reducing the distance between the feedforward activity and the feedback target in each layer, the global loss would be reduced as well. The targets are propagated top-down through a set of backward nonlinear functions trained using layer local autoencoders. DTP is a variant of TP that introduces an error term into the backward propagation of targets, which accounts for the “imperfection” of the backward functions. A full description and proof of how and why DTP works can be found in Lee et al. (2015) and Meulemans et al. (2020).
In simple multi-layer perceptrons (MLPs), the forward functions fl and backward functions gl in DTP are simply linear layers with nonlinear activation functions, whereas in CNNs they have more complex structures. Convolutional layers are interleaved with pooling layers to perform down-sampling of the data, and thus fl is modeled as the combination of a convolutional layer and the subsequent pooling layers. Bartunov et al. (2018) claimed that pooling layers, which contain a deterministic step (either averaging or taking maximum), are incompatible with DTP, as the inverse of this many-to-one deterministic step can not be modeled using a simple nonlinear function gl. Instead, they used strided convolutional layers to model fl and strided deconvolutional layers to model gl to perform down-sampling and the inverse up-sampling. However, we observe that we can retain pooling layers in the forward pass, i.e., fl = CONV + POOLING, but use strided deconvolutional layers in the backward pass to approximate the inverse of the forward function, i.e., gl = STRIDED DECONV. Essentially, this arrangement will enforce the strided deconvolution to learn the unpooling operation. A comparison of the results in the Experiments section below demonstrates that incorporating max-pooling significantly improves the linear evaluation performances. The full algorithm for DTP with pooling layers is shown in Algorithm 1.
4. Experiments
4.1. Linear Evaluation on CIFAR10
We first test the hypothesis that networks trained by our biologically plausible learning rules produce embeddings with representational powers as good as those of networks trained by BP. The network architecture we use is as follows:
Base Encoder:
Conv 32 3x3 1; Hardtanh;
Conv 32 3x3 1; Maxpool 2;
Conv 64 3x3 1; Hardtanh;
Conv 64 3x3 1; Maxpool 2;
Conv 512 3x3 1; Maxpool 2;
Projection Head:
Flatten;
Linear 64;
where Conv 32 3x3 1 stands for a convolutional layer with filter size 3, channel number 32, and stride 1, and Maxpool 2 stands for a maxpooling layer with filter size 2 and stride size 2, which reduces the image size by a factor of 2. Before the final linear projector, we simply flatten the feature space, applying no average pooling. We use CIFAR100 to train the base encoder. During training, each batch of the data will be randomly deformed two times to create the positive pairs (see Supplementary Material B for examples of CIFAR100 deformations). All deformed images are passed into the base encoder and the encoder produces 64-dimensional embeddings, which are used to calculate the self-supervised loss. The parameters of the encoder are updated to minimize this loss.
We use the standard linear evaluation scheme to evaluate the embeddings. After the base encoders are trained, we fix their parameters and remove the projection head. We use the fixed layers to produce embeddings (the output of the last convolutional layer) as inputs to a linear classifier, trained on 45,000 CIFAR10 examples and tested on 10,000 CIFAR10 examples. The training of the linear classifier is supervised, and we use the classification accuracy as a measure of the representational power of the embeddings. We choose to use different datasets for training the encoders and classifiers because this is a more realistic learning scenario for biological systems: rather than learning from tasks on an ad hoc basis, the brain learns from more general tasks and data and applies the learned synaptic weights to other tasks (e.g., classification). Our experiments with CIFAR10-trained base encoders on the same classification task yield identical performance.
For all experiments, we train the base encoder networks for 400 epochs using the Adam optimizer (Kingma and Ba, 2015), with a learning rate of 0.0001. With DTP, we use a fixed learning rate of 0.001 for the layer-wise autoencoders. For the contrastive losses, we train the base encoders with a batch size of 500. The linear classifiers are trained using the Adam optimizer with a learning rate of 0.001 for 400 epochs. For hyperparameters in the contrastive losses, we use τ = 0.1 for the SIMCLR loss and m1 = 1, m2 = 3 for the contrastive hinge loss, based on the initial distance distributions between positives and negatives in an arbitrary batch (Figure 5). Table 1 shows our experimental results. It can be seen that the proposed biologically more plausible contrastive hinge loss achieves a similar performance to the SIMCLR loss baseline. Overall, the biologically plausible learning rules achieve comparable linear evaluation performance to end-to-end BP. Layer-wise learning performs similarly to end-to-end learning with BP. There is some loss of accuracy with RF layer-wise learning but it still performs much better than end-to-end RF. In fact, the performance of end-to-end RF is close to that of a random encoder, which further demonstrates the failure of RF in deep networks. Notably, while earlier works with supervised learning (Lee et al., 2015; Bartunov et al., 2018) have shown a relatively large difference between BP and DTP in CIFAR classifications, in SSL, we observe close performance between these two learning rules. Figure 6 shows how the values of the contrastive hinge loss evolve using different training methods. The results with SIMCLR combined with biologically plausible learning rules can be found in Supplementary Material C.
Figure 5. The histograms of initial distances between positive pairs and negative pairs in an arbitrary batch of CIFAR100. Our loss selects positives corresponding to the right-hand side of the dashed line, and negatives corresponding to the left-hand side of the solid line.
Table 1. Test accuracy of a linear classifier trained on CIFAR10 embeddings from the self-supervised learning (SSL) and CIFAR100-trained base encoder.
Figure 6. Evolution of the contrastive hinge loss during training (excessively large values are cut off to maintain visibility). On the left, we plot the loss when the base encoder is trained end-to-end (E2E) with backpropagation (BP), random feedback (RF), and difference target propagation (DTP). One the right, we plot the loss when the base encoder is trained with greedy layer-wise learning (GLL)/randomized layer-wise learning (RLL), and the weights are updated with BP/RF. For GLL, each layer is trained 400 epochs, and every 400 epochs in the plot correspond to the training loss of a layer sequentially. For RLL, 5 layers are trained in a randomized way in a total of 2,000 epochs, and the training loss shown is an average among all layers.
In Table 1, we also compared the linear evaluation performance of models with and without our proposed biological constraints, namely the gradient block and a smaller number of negatives. Models with the constraints achieve identical classification results to those without, although DTP experiences a slight performance drop compared to other biologically plausible training methods. Moreover, by plugging the CLAPP loss proposed in Illing et al. (2021) into our deformation-based model and training it on CIFAR100, we obtain 69.05% with end-to-end BP and 68.93% with greedy layer-wise BP on CIFAR10.
Pooling vs. strided convolution in DTP. We compare the linear evaluation performance of the encoder networks using two different down-sampling techniques, namely the max pooling layers and the strided convolutional layers when the networks are trained by DTP. When using max pooling layers, the linear evaluation performance is 71.29% for DTP (Table 1). However, this number quickly drops to 39.42% with strided convolutional layers. Even for straightforward supervised classification training on CIFAR10, with the same architecture, there is a significant advantage using max pooling compared to strided convolution in conjunction with DTP, 71% vs. 58%. This result demonstrates that pooling layers can be compatible with DTP and can also be better down-sampling techniques in certain architectures.
End-to-end and layer-wise learning. Figure 7 compares the linear evaluation performance of end-to-end and layer-wise learning with BP/URF and RF, respectively. We can see that the layer-wise learning achieves similar, if not better, accuracy compared to the traditional end-to-end learning with BP updates. It is known that RF updates do not work well with deep networks when trained with end-to-end learning. Layer-wise learning with RF works around the problem by only updating one layer at a time and improves the performance by a large margin compared to end-to-end training with RF.
Figure 7. CIFAR10 test accuracy of a linear classifier at every layer of an encoder network trained with contrastive hinge loss and End-to-End (E2E) learning, Greedy Layer-wise Learning (GLL), and Randomized Layer-wise Learning (RLL), and updating with Back-propagation (BP) and Random Feedback (RF).
We examine the loss of layer-wise learning in Figure 6 to further understand the behavior and convergence of the two layer-wise learning methods. The networks are trained sequentially with GLL. We calculate the average training loss after each epoch, while a layer is trained. Every 400 epochs in the plot correspond to the training loss of a layer sequentially. The training loss has a significant jump when a new layer is added to the top of the network, and then rapidly decreases to values lower than the previous layer and converges. For RLL, we train a total of 2,000 epochs. Different layers are selected for each batch of data, and the training loss is an average among all batches, and hence all layers in an epoch. The average training loss slightly oscillates and converges. Note that the values of the RLL loss cannot be directly compared to the loss of GLL since the training loss for RLL is an average across all layers.
The results show that layer-wise learning could be a more biologically plausible alternative to end-to-end learning. In addition, the effectiveness of RLL further indicates that it is not necessary to train the layers sequentially. Randomly selecting a layer to update and training all layers simultaneously gives competitive results compared to sequential layer-wise training.
4.2. Linear Evaluation on STL10
For comparison with previous works (Löwe et al., 2019; Illing et al., 2021), we also perform our experiments with the STL10 dataset (Coates et al., 2011). We use the VGG6 network (Simonyan and Zisserman, 2015), a VGG-like network that was used in Illing et al. (2021), but with a projection head of size 64 following a 2 x 2 average pooling layer. We first apply a 64 x 64 random resized crop on the original 96 x 96 images and apply the other deformations in Figure 2 to the images to create the positives and negatives. We take half of the unlabeled part of STL10, which contains 50,000 data points, to train the base encoder for 100 epochs. When computing the contrastive hinge loss, we also use only 5 negative samples. We have also performed preliminary experiments on models with 1 negative example, which yields similar performance to those with 5 negatives. During the linear evaluation, the classifier is trained on the 5,000 training data points of labeled STL10 for 200 epochs and tested on the 8,000 testing data points of labeled STL10. We use a learning rate of 0.0001 for training the base encoder and 0.005 for training the classifier. We also experiment with the patch-based method and CLAPP loss proposed in Illing et al. (2021), where the positive pairs are created using vertical, adjacent 16 x 16 grayscale patches from the 64 x 64 crops. We experimented with the CLAPP loss with both end-to-end (E2E) learning and greedy layer-wise learning (GLL). The results are given in Table 2.
Table 2. Linear evaluation results with labeled STL10, using a base encoder trained on unlabeled STL10.
To understand whether the network discovers more semantic features of the input images as the network goes deeper, we visualize in Figure 8 the embeddings of the test set in labeled STL10 using the dimensionality reduction technique t-distributed stochastic neighbor embedding (t-SNE) (Van der Maaten and Hinton, 2008), in each layer of a network trained by BP and GLL. As the network deepens, the separation between embeddings representing “animals” and “vehicles” becomes increasingly obvious, and the clustering effect of each specific category within the two large categories also strengthens, especially on the “vehicles” side. Notice that at this stage, the downstream classifier has not been trained and the base encoder has not seen the labeled data, suggesting that the unsupervised learning alone has already enabled the network to develop certain levels of semantic understanding of the data.
Figure 8. t-SNE visualization of the embeddings of STL10 labeled test data, from a VGG6 network trained by greedy layer-wise learning (GLL) using BP only for the 2-layers involved in GLL. We apply global average pooling to embeddings to get vector representations and then apply t-SNE. Each dot represents an image.
4.3. Handling Variability
In order to explore the robustness of our SSL method to perturbations unseen during training, we design the following experiments. First, we train a base encoder using CIFAR100 and the network architecture mentioned in Section 4.1 above, with our contrastive hinge loss. We then use this base encoder to produce embeddings of CIFAR10 and train a classifier on these embeddings. We then test the classifier on a set of deformed CIFAR10 images shown in Figure 9. We also train a supervised network with the same architecture on “normal” CIFAR10 and test it on deformed images. For both self-supervised and supervised networks, we experiment with 5,000 and 50,000 training data for the classifier. The results in Table 3 suggest that self-supervised networks with contrastive hinge loss are indeed more robust to deformations or perturbations than supervised networks, even with a limited amount of data. In the supervised setting, it is possible to use data augmentation to improve the robustness, but what we see here is that by using the robust embedding it is possible to quickly learn robust classifiers without the extensive data augmentation process for each subsequent classification task.
Figure 9. Examples of the deformed CIFAR10 images (even rows) used to test the classifier trained on normal, undeformed CIFAR10 (odd rows).
Table 3. Test accuracy on deformed CIFAR10 images, using a single-layer classifier trained with SSL embeddings or a network with supervised learning directly.
For further explorations of the perturbation robustness property of SSL combined with biologically plausible learning, we use two other sets of data, namely the 28 x 28 gray-scale digits (MNIST) (LeCun et al., 2010) and letters (EMNIST) (Cohen et al., 2017). We first train the base encoders on EMNIST and then we use the trained encoders to produce embeddings of MNIST and train a linear classifier on these embeddings. We then test the classifiers on a set of affine-transformed MNIST. Examples of the original and transformed EMNIST and MNIST can be found in Supplementary Material B. This experiment design aims to verify the robustness of the SSL framework, by comparing its performance with a fully supervised CNN trained by MNIST and tested on transformed MNIST. For this set of experiments, we use a shallower CNN with the following architecture:
Base Encoder:
Conv 32 3x3 1; Maxpool 2; Tanh;
Conv 64 3x3 1; Maxpool 2; Tanh;
Conv 128 3x3 1; Maxpool 2; Tanh;
Projection Head:
Flatten;
Linear 64;
We note that for the relatively easy task of classifying MNIST digits, all the unsupervised training methods perform above 98%, even using end-to-end feedback alignment. After all a random network with this structure, where we only train the linear classification layer, also yields above 98% accuracy. Thus, the interesting question is how well does the unsupervised network generalize to the transformed digits.
We train the base encoder networks for 400 epochs using the Adam optimizer, with a learning rate chosen between [0.0001, 0.001]. In DTP, we again use a fixed learning rate of 0.001 for the layer-wise auto-encoders. We train the base encoders with a batch size of 1,000, and the linear classifier is trained for 200 epochs using Adam optimizer with a learning rate of 0.001. We use m1 = 1, m2 = 1.5 for the contrastive hinge loss. The results of these experiments are shown in Table 4.
Table 4. Test accuracy on transformed MNIST using the pre-trained networks with SSL on EMNIST letters.
We found that all classification results on the transformed MNIST by SSL are better than those by training a supervised network with MNIST digits and testing it on transformed MNIST digits directly, showing the robustness of our proposed biologically more plausible SSL method. Since traditionally robustness of classification ANNs is ensured by applying data augmentations to the training data, our results suggest that there may not be a need to augment the data when training the classifiers, making learning more efficient.
5. Discussion
In this work, we have shown that it is possible to construct a biologically plausible deep learning framework, using local Hebbian updates and in some cases avoiding the locking problem, using SSL combined with layer-wise learning or DTP. We have also introduced a very simple contrastive loss whose gradient involves only local updates based on pre- and post-synaptic activities. An embedding is learned through the self-supervised contrastive loss using a large collection of unlabeled images. The evaluation of the embedding is done by training a linear classifier, taking as input the trained embedding, but using a separate collection of labeled images from different categories. Layer-wise learning requires physical connections between each layer and the error computing layer. This is consistent with the fact that direct connections do exist between various retinotopic layers and higher cortical areas (Van Essen et al., 2019). The fact that randomized layer-wise training is effective means that there is no need to sequence the learning of the different layers.
Using these alternative learning methods, we have produced comparable embeddings to the backprop-trained ones for linear evaluation. The small reduction in downstream accuracy would easily be remedied by the essentially unlimited amount of unlabeled data available to the visual system. We have shown that the perturbations inherent in the self-supervised learning yield embeddings that are more robust to perturbations than direct classifier training. Furthermore, we have shown that there is no need for large numbers of negative examples for each positive pair in order to obtain the same results. A future direction of research would involve actually training on continuous videos of moving objects, with small buffers for the negative images.
The SSL methods that avoid computing a contrast with negative examples are of particular interest. They try to force the embedding of the positives to be “spread out” over the embedding space. The related losses that have been proposed in the literature involve rather complex computations, and in further research, we would like to explore biologically plausible alternatives of them.
Considering the approach of using ANNs as models of cortical areas in general, although Yamins and DiCarlo (2016) have shown that in many ways CNNs are similar to the ventral visual stream, including the end-to-end behavior and the population level activities, many aspects of CNNs are still far from biologically realistic. For example, units in CNNs are continuously valued, while real neurons are discrete, emitting binary spikes. Even if we use CNNs to simply model the firing rates of neurons, negative unit values are still a problem. Another source of implausibility is that CNNs involve only feedforward connections, while biological neurons in the cortex are also recurrently connected, with different connectivity patterns between different cell types and areas. Moreover, the weight sharing property of convolutional layers lacks neurobiological support and using locally connected layers (Bartunov et al., 2018; Amit, 2019) may be a more biologically plausible approach. To further develop our proposed framework, these aspects are definitely to be considered.
Author's Note
We explore more biologically plausible alternatives to back propagation in deep networks in the context of self-supervised learning, which is a more natural framework for ongoing learning as it does not require labeled data. Moreover the framework of contrastive learning that uses pairs of perturbed versions of an image vs. pairs of unrelated images seems to be easily obtained from the regular flow of visual input into the system.
Data Availability Statement
The original contributions presented in the study are included in the article/Supplementary Material, further inquiries can be directed to the corresponding author.
Author Contributions
All authors listed have made a substantial, direct, and intellectual contribution to the work and approved it for publication.
Funding
This work is partially funded by the NIMH CRNCS Award No. RO1 MH11555 grant titled: Multiscale dynamics of cortical circuits for visual recognition and memory. The grant covered salary support for part of the time YA spent on this research.
Conflict of Interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Publisher's Note
All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.
Acknowledgments
We thank the referees for important and helpful suggestions. This work was supported in part by NIMH/CRCNS Award No. R01 MH11555.
Supplementary Material
The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fncom.2022.789253/full#supplementary-material
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Keywords: difference target propagation, layerwise learning, hinge loss, back-propagation (BP), self-supervised learning
Citation: Tang M, Yang Y and Amit Y (2022) Biologically Plausible Training Mechanisms for Self-Supervised Learning in Deep Networks. Front. Comput. Neurosci. 16:789253. doi: 10.3389/fncom.2022.789253
Received: 04 October 2021; Accepted: 28 January 2022;
Published: 21 March 2022.
Edited by:
Eilif Benjamin Muller, University of Montreal, CanadaReviewed by:
Shahab Bakhtiari, McGill University, CanadaBernd Illing, Swiss Federal Institute of Technology Lausanne, Switzerland
Copyright © 2022 Tang, Yang and Amit. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Yali Amit, YW1pdCYjeDAwMDQwO21hcngudWNoaWNhZ28uZWR1