Local reservoir model for choice-based learning
Makoto Naruse, Eiji Yamamoto, Takashi Nakao, Takuma Akimoto, Hayato, Saigo, Kazuya Okamura, Izumi Ojima, Georg Northoff, Hirokazu Hori

TL;DR
This paper introduces a local reservoir model to explain choice-based learning, showing how decision consistency varies with reservoir size and providing analytical, numerical, and physical implementations.
Contribution
It presents a novel local reservoir framework for modeling decision-based learning, linking physical, neural, and behavioral decision processes.
Findings
Larger reservoirs reduce decision consistency due to less influence of past decisions.
Decreasing reservoir size increases bias and decision repetition.
The model aligns with empirical data on human decision-making.
Abstract
Decision making based on behavioral and neural observations of living systems has been extensively studied in brain science, psychology, and other disciplines. Decision-making mechanisms have also been experimentally implemented in physical processes, such as single photons and chaotic lasers. The findings of these experiments suggest that there is a certain common basis in describing decision making, regardless of its physical realizations. In this study, we propose a local reservoir model to account for choice-based learning (CBL). CBL describes decision consistency as a phenomenon where making a certain decision increases the possibility of making that same decision again later, which has been intensively investigated in neuroscience, psychology, etc. Our proposed model is inspired by the viewpoint that a decision is affected by its local environment, which is referred to as a local…
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Taxonomy
TopicsNeural dynamics and brain function · Olfactory and Sensory Function Studies · Neural and Behavioral Psychology Studies
