A Recurrent Neural Network Model Accounts for Both Timing and Working Memory Components of an Interval Discrimination Task

Author:

Chinoy Rehan B.1,Tanwar Ashita1,Buonomano Dean V.1

Affiliation:

1. Departments of Neurobiology and Psychology, Brain Research Institute, and Integrative Center for Learning and Memory, University of California, Los Angeles, CA 90095–1763, USA

Abstract

Abstract Interval discrimination is of fundamental importance to many forms of sensory processing, including speech and music. Standard interval discrimination tasks require comparing two intervals separated in time, and thus include both working memory (WM) and timing components. Models of interval discrimination invoke separate circuits for the timing and WM components. Here we examine if, in principle, the same recurrent neural network can implement both. Using human psychophysics, we first explored the role of the WM component by varying the interstimulus delay. Consistent with previous studies, discrimination was significantly worse for a 250 ms delay, compared to 750 and 1500 ms delays, suggesting that the first interval is stably stored in WM for longer delays. We next successfully trained a recurrent neural network (RNN) on the task, demonstrating that the same network can implement both the timing and WM components. Many units in the RNN were tuned to specific intervals during the sensory epoch, and others encoded the first interval during the delay period. Overall, the encoding strategy was consistent with the notion of mixed selectivity. Units generally encoded more interval information during the sensory epoch than in the delay period, reflecting categorical encoding of short versus long in WM, rather than encoding of the specific interval. Our results demonstrate that, in contrast to standard models of interval discrimination that invoke a separate memory module, the same network can, in principle, solve the timing, WM, and comparison components of an interval discrimination task.

Publisher

Brill

Subject

Cognitive Neuroscience,Applied Psychology,Experimental and Cognitive Psychology,Neuropsychology and Physiological Psychology

Reference71 articles.

1. The reverse hierarchy theory of visual perceptual learning;Ahissar, M.,2004

2. Realistic precision and accuracy of online experiment platforms, web browsers, and devices;Anwyl-Irvine, A.,2021

3. Differential encoding of time by prefrontal and striatal network dynamics;Bakhurin, K. I.,2017

4. A decision model of timing;Balcı, F.,2016

5. Temporal perceptual learning;Bueti, D.,2014

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