Literature DB >> 27903731

Memory Transformation Enhances Reinforcement Learning in Dynamic Environments.

Adam Santoro1,2, Paul W Frankland3,2,4,5, Blake A Richards6,7.   

Abstract

Over the course of systems consolidation, there is a switch from a reliance on detailed episodic memories to generalized schematic memories. This switch is sometimes referred to as "memory transformation." Here we demonstrate a previously unappreciated benefit of memory transformation, namely, its ability to enhance reinforcement learning in a dynamic environment. We developed a neural network that is trained to find rewards in a foraging task where reward locations are continuously changing. The network can use memories for specific locations (episodic memories) and statistical patterns of locations (schematic memories) to guide its search. We find that switching from an episodic to a schematic strategy over time leads to enhanced performance due to the tendency for the reward location to be highly correlated with itself in the short-term, but regress to a stable distribution in the long-term. We also show that the statistics of the environment determine the optimal utilization of both types of memory. Our work recasts the theoretical question of why memory transformation occurs, shifting the focus from the avoidance of memory interference toward the enhancement of reinforcement learning across multiple timescales. SIGNIFICANCE STATEMENT: As time passes, memories transform from a highly detailed state to a more gist-like state, in a process called "memory transformation." Theories of memory transformation speak to its advantages in terms of reducing memory interference, increasing memory robustness, and building models of the environment. However, the role of memory transformation from the perspective of an agent that continuously acts and receives reward in its environment is not well explored. In this work, we demonstrate a view of memory transformation that defines it as a way of optimizing behavior across multiple timescales.
Copyright © 2016 the authors 0270-6474/16/3612228-15$15.00/0.

Entities:  

Keywords:  computational modeling; decision making; episodic memory; memory transformation; reinforcement learning; schema

Mesh:

Year:  2016        PMID: 27903731      PMCID: PMC6601977          DOI: 10.1523/JNEUROSCI.0763-16.2016

Source DB:  PubMed          Journal:  J Neurosci        ISSN: 0270-6474            Impact factor:   6.167


  4 in total

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Authors:  Tomás J Ryan; Paul W Frankland
Journal:  Nat Rev Neurosci       Date:  2022-01-13       Impact factor: 38.755

2.  Systems consolidation impairs behavioral flexibility.

Authors:  Sankirthana Sathiyakumar; Sofia Skromne Carrasco; Lydia Saad; Blake A Richards
Journal:  Learn Mem       Date:  2020-04-15       Impact factor: 2.460

3.  Optimal forgetting: Semantic compression of episodic memories.

Authors:  David G Nagy; Balázs Török; Gergő Orbán
Journal:  PLoS Comput Biol       Date:  2020-10-15       Impact factor: 4.475

Review 4.  A neurobiological perspective on social influence: Serotonin and social adaptation.

Authors:  Patricia Duerler; Franz X Vollenweider; Katrin H Preller
Journal:  J Neurochem       Date:  2022-03-31       Impact factor: 5.546

  4 in total

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