Abstract
Despite the significance of short-term memory in cognitive function, the process of encoding and sustaining the input information in neural activity dynamics remains elusive. Herein, we unveiled the significance of transient neural dynamics to short-term memory. By training recurrent neural networks to short-term memory tasks and analyzing the dynamics, the characteristics of the short-term memory mechanism were obtained in which the input information was encoded in the amplitude of transient oscillations, rather than the stationary neural activities. This transient trajectory was attracted to a slow manifold, which permitted the discarding of irrelevant information. Additionally, we investigated the process by which the dynamics acquire robustness to noise. In this transient oscillation, the robustness to noise was obtained by a strong contraction of the neural states after perturbation onto the manifold. This mechanism works for several neural network models and tasks, which implies its relevance to neural information processing in general.
Highlights
We unveiled the significance of transient neural dynamics to short-term memory
We find that the neural activities exhibit a transient oscillation that endures for the time span between the first and second signals
To more closely examine how the neural dynamics compared the frequencies, the neural states corresponding to various ω1 and ω2 at t = Ta were plotted using the three principal components of {xi} [Fig. 2(b)] [27]
Summary
Short-term memory is essential for our cognitive activities [1]. Once an external signal is applied to an internal neuron, its information is encoded therein and saved for a certain time period. To investigate the neural dynamics of short-term memory, we adopted a recurrent neural network (RNN) trained to solve a task that requires memorizing the input information for a given time span. To solve the comparison task, it is necessary for the neural dynamics to maintain the information of the first signal until the second signal input arrives. After the network is trained to solve the task successfully, we analyze the generated neural dynamics to uncover how the input information is encoded and memorized according to the dynamics of neural activities. We analyze how this oscillatory neural activity encodes the input information, provides short-term memory, and solves the task. We introduce the task to compare the frequencies of two signals input with a given time interval as well as the RNN model used to solve it. The possible relevance of the presented mechanism for short-term memory to biological neural dynamics is discussed
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