Predictive learning as a network mechanism for extracting low-dimensional latent space representations

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作者
Stefano Recanatesi
Matthew Farrell
Guillaume Lajoie
Sophie Deneve
Mattia Rigotti
Eric Shea-Brown
机构
[1] University of Washington Center for Computational Neuroscience and Swartz Center for Theoretical Neuroscience,Department of Applied Mathematics
[2] University of Washington,Department of Mathematics and Statistics
[3] Université de Montréal,undefined
[4] Mila-Quebec Artificial Intelligence Institute,undefined
[5] Group for Neural Theory,undefined
[6] Ecole Normal Superieur,undefined
[7] IBM Research AI,undefined
[8] Allen Institute for Brain Science,undefined
来源
Nature Communications | / 12卷
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摘要
Artificial neural networks have recently achieved many successes in solving sequential processing and planning tasks. Their success is often ascribed to the emergence of the task’s low-dimensional latent structure in the network activity – i.e., in the learned neural representations. Here, we investigate the hypothesis that a means for generating representations with easily accessed low-dimensional latent structure, possibly reflecting an underlying semantic organization, is through learning to predict observations about the world. Specifically, we ask whether and when network mechanisms for sensory prediction coincide with those for extracting the underlying latent variables. Using a recurrent neural network model trained to predict a sequence of observations we show that network dynamics exhibit low-dimensional but nonlinearly transformed representations of sensory inputs that map the latent structure of the sensory environment. We quantify these results using nonlinear measures of intrinsic dimensionality and linear decodability of latent variables, and provide mathematical arguments for why such useful predictive representations emerge. We focus throughout on how our results can aid the analysis and interpretation of experimental data.
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