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Dynamical phases of short-term memory mechanisms in RNNs

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Dinç, Fatih
Yuksekgonul, Mert
Blanco-Pozo, Marta
Cirakman, Ege
Schnitzer, Mark J.
Tanaka, Hidenori
Yuan, Peng
Miolane, Nina

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Short-term memory is essential for cognitive processing, yet our understanding of its neural mechanisms remains unclear. Neuroscience has long focused on how sequential activity patterns, where neurons fire one after another within large networks, can explain how information is maintained. While recurrent connections were shown to drive sequential dynamics, a mechanistic understanding of this process still remains unknown. In this work, we introduce two unique mechanisms that can support this form of short-term memory: slowpoint manifolds generating direct sequences or limit cycles providing temporally localized approximations. Using analytical models, we identify fundamental properties that govern the selection of each mechanism. Precisely, on shortterm memory tasks (delayed cue-discrimination tasks), we derive theoretical scaling laws for critical learning rates as a function of the delay period length, beyond which no learning is possible. We empirically verify these results by training and evaluating approximately 80,000 recurrent neural networks (RNNs), which are publicly available for further analysis1 . Overall, our work provides new insights into short-term memory mechanisms and proposes experimentally testable predictions for systems neuroscience.

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ML Research Press

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Engineering

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Proceedings of Machine Learning Research 42nd International Conference on Machine Learning

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