Literature DB >> 34014709

Temporal and state abstractions for efficient learning, transfer, and composition in humans.

Liyu Xia1, Anne G E Collins2.   

Abstract

Humans use prior knowledge to efficiently solve novel tasks, but how they structure past knowledge during learning to enable such fast generalization is not well understood. We recently proposed that hierarchical state abstraction enabled generalization of simple one-step rules, by inferring context clusters for each rule. However, humans' daily tasks are often temporally extended, and necessitate more complex multi-step, hierarchically structured strategies. The options framework in hierarchical reinforcement learning provides a theoretical framework for representing such transferable strategies. Options are abstract multi-step policies, assembled from simpler one-step actions or other options, that can represent meaningful reusable strategies as temporal abstractions. We developed a novel sequential decision-making protocol to test if humans learn and transfer multi-step options. In a series of four experiments, we found transfer effects at multiple hierarchical levels of abstraction that could not be explained by flat reinforcement learning models or hierarchical models lacking temporal abstractions. We extended the options framework to develop a quantitative model that blends temporal and state abstractions. Our model captures the transfer effects observed in human participants. Our results provide evidence that humans create and compose hierarchical options, and use them to explore in novel contexts, consequently transferring past knowledge and speeding up learning. (PsycInfo Database Record (c) 2021 APA, all rights reserved).

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Year:  2021        PMID: 34014709      PMCID: PMC8485577          DOI: 10.1037/rev0000295

Source DB:  PubMed          Journal:  Psychol Rev        ISSN: 0033-295X            Impact factor:   8.247


  53 in total

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  5 in total

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2.  Serotonin neurons modulate learning rate through uncertainty.

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3.  Learning Structures: Predictive Representations, Replay, and Generalization.

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Review 4.  Advances in modeling learning and decision-making in neuroscience.

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Review 5.  Hierarchical Reinforcement Learning, Sequential Behavior, and the Dorsal Frontostriatal System.

Authors:  Miriam Janssen; Christopher LeWarne; Diana Burk; Bruno B Averbeck
Journal:  J Cogn Neurosci       Date:  2022-07-01       Impact factor: 3.420

  5 in total

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