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Main Authors: Gutheil, Julian, Hitzginger, Simon, Legenstein, Robert
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.22472
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author Gutheil, Julian
Hitzginger, Simon
Legenstein, Robert
author_facet Gutheil, Julian
Hitzginger, Simon
Legenstein, Robert
contents Winner-take-all (WTA) networks constitute a central circuit motif in cortical networks of the brain. In addition, WTA-like activations are abundant in modern deep learning models in the form of the softmax activation for example in attention layers of transformers. While their role in the extraction of latent factors has been studied for relatively simple generative models, their role in the context of highly non-linearly entangled latent factors has remained elusive. In this article, we show that a WTA bottleneck within a deep neural network can enforce under certain well-defined conditions the extraction of categorical latent factors of the data in a multi-task learning setup. In particular, we prove that the representation that emerges in the WTA bottleneck is highly symbolic, where a single neuron or a population of neurons encodes the presence of a single abstract feature such as a specific object, color, or position. We furthermore show empirically on two datasets, that this also holds for architectures and setups that do not fully comply with the assumptions of our theorem and demonstrate the advantages of the acquired symbolic representation for generalization. Our proposed model provides insights into the generalization capabilities of deep neural networks with WTA-like components and may serve as an interface between symbolic and subsymbolic AI systems.
format Preprint
id arxiv_https___arxiv_org_abs_2605_22472
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Winner-Take-All bottlenecks enforce disentangled symbolic representations in multi-task learning
Gutheil, Julian
Hitzginger, Simon
Legenstein, Robert
Machine Learning
Winner-take-all (WTA) networks constitute a central circuit motif in cortical networks of the brain. In addition, WTA-like activations are abundant in modern deep learning models in the form of the softmax activation for example in attention layers of transformers. While their role in the extraction of latent factors has been studied for relatively simple generative models, their role in the context of highly non-linearly entangled latent factors has remained elusive. In this article, we show that a WTA bottleneck within a deep neural network can enforce under certain well-defined conditions the extraction of categorical latent factors of the data in a multi-task learning setup. In particular, we prove that the representation that emerges in the WTA bottleneck is highly symbolic, where a single neuron or a population of neurons encodes the presence of a single abstract feature such as a specific object, color, or position. We furthermore show empirically on two datasets, that this also holds for architectures and setups that do not fully comply with the assumptions of our theorem and demonstrate the advantages of the acquired symbolic representation for generalization. Our proposed model provides insights into the generalization capabilities of deep neural networks with WTA-like components and may serve as an interface between symbolic and subsymbolic AI systems.
title Winner-Take-All bottlenecks enforce disentangled symbolic representations in multi-task learning
topic Machine Learning
url https://arxiv.org/abs/2605.22472