AIによる意思決定戦略の解明(How Do We Reach Decisions? Researchers Pioneer AI Method to Uncover Cognitive Strategies)

2025-07-02 カリフォルニア大学サンディエゴ校(UCSD)

UCサンディエゴの研究者らは、人間の意思決定プロセスを可視化する新たなAI手法を開発。小規模なニューラルネットワークを用いて、個々の選択戦略や認知パターンを抽出・解釈可能とした。従来のブラックボックス的なAIとは異なり、意思決定の根拠や心理的傾向を明示できる点が革新的。医療・教育・政策設計など多分野での応用が期待され、説明可能なAIによる認知支援の新たな可能性を開いた。

<関連情報>

小さなリカレントニューラルネットワークで認知戦略を発見する Discovering cognitive strategies with tiny recurrent neural networks

Li Ji-An,Marcus K. Benna & Marcelo G. Mattar
Nature  Published:02 July 2025
DOI:https://doi.org/10.1038/s41586-025-09142-4

AIによる意思決定戦略の解明(How Do We Reach Decisions? Researchers Pioneer AI Method to Uncover Cognitive Strategies)

Abstract

Understanding how animals and humans learn from experience to make adaptive decisions is a fundamental goal of neuroscience and psychology. Normative modelling frameworks such as Bayesian inference1 and reinforcement learning2 provide valuable insights into the principles governing adaptive behaviour. However, the simplicity of these frameworks often limits their ability to capture realistic biological behaviour, leading to cycles of handcrafted adjustments that are prone to researcher subjectivity. Here we present a novel modelling approach that leverages recurrent neural networks to discover the cognitive algorithms governing biological decision-making. We show that neural networks with just one to four units often outperform classical cognitive models and match larger neural networks in predicting the choices of individual animals and humans, across six well-studied reward-learning tasks. Critically, we can interpret the trained networks using dynamical systems concepts, enabling a unified comparison of cognitive models and revealing detailed mechanisms underlying choice behaviour. Our approach also estimates the dimensionality of behaviour3 and offers insights into algorithms learned by meta-reinforcement learning artificial intelligence agents. Overall, we present a systematic approach for discovering interpretable cognitive strategies in decision-making, offering insights into neural mechanisms and a foundation for studying healthy and dysfunctional cognition.

1601コンピュータ工学
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