A generalized reinforcement learning based deep neural network agent model for diverse cognitive constructs

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作者
Sandeep Sathyanandan Nair
Vignayanandam Ravindernath Muddapu
C. Vigneswaran
Pragathi P. Balasubramani
Dhakshin S. Ramanathan
Jyoti Mishra
V. Srinivasa Chakravarthy
机构
[1] Indian Institute of Technology Madras,Computational Neuroscience Lab, Department of Biotechnology, Bhupat and Jyoti Mehta School of Biosciences
[2] University of California,Neural Engineering and Translation Labs, Department of Psychiatry
[3] San Diego,Department of Mental Health
[4] VA San Diego Medical Center,Blue Brain Project
[5] École Polytechnique Fédérale de Lausanne (EPFL),Department of Cognitive Science
[6] Indian Institute of Technology,undefined
[7] Kanpur,undefined
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Human cognition is characterized by a wide range of capabilities including goal-oriented selective attention, distractor suppression, decision making, response inhibition, and working memory. Much research has focused on studying these individual components of cognition in isolation, whereas in several translational applications for cognitive impairment, multiple cognitive functions are altered in a given individual. Hence it is important to study multiple cognitive abilities in the same subject or, in computational terms, model them using a single model. To this end, we propose a unified, reinforcement learning-based agent model comprising of systems for representation, memory, value computation and exploration. We successfully modeled the aforementioned cognitive tasks and show how individual performance can be mapped to model meta-parameters. This model has the potential to serve as a proxy for cognitively impaired conditions, and can be used as a clinical testbench on which therapeutic interventions can be simulated first before delivering to human subjects.
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