2017
DOI: 10.1016/j.cobeha.2017.05.025
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Predicting the past, remembering the future

Abstract: Rational analyses of memory suggest that retrievability of past experience depends on its usefulness for predicting the future: memory is adapted to the temporal structure of the environment. Recent research has enriched this view by applying it to semantic memory and reinforcement learning. This paper describes how multiple forms of memory can be linked via common predictive principles, possibly subserved by a shared neural substrate in the hippocampus. Predictive principles offer an explanation for a wide ra… Show more

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Cited by 35 publications
(27 citation statements)
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“…For example, there are elements of hierarchal decision-making and successor representations implicit in the deep temporal (generative) model that underlies inferences about policies and subsequent policy selection. Furthermore, bidirectional planning is, in a loose sense, implicit in the bidirectional message passing between active inference representations of the past and future: see also Gershman (2017). As in pruning approaches, this bidirectional aspect is kept to a manageable size by the induction of subgoals that allow for a chunking or decomposition of the tree search.…”
Section: Relationship To Previous Workmentioning
confidence: 99%
“…For example, there are elements of hierarchal decision-making and successor representations implicit in the deep temporal (generative) model that underlies inferences about policies and subsequent policy selection. Furthermore, bidirectional planning is, in a loose sense, implicit in the bidirectional message passing between active inference representations of the past and future: see also Gershman (2017). As in pruning approaches, this bidirectional aspect is kept to a manageable size by the induction of subgoals that allow for a chunking or decomposition of the tree search.…”
Section: Relationship To Previous Workmentioning
confidence: 99%
“…In summary, the generation of fictive (offline) prediction errors is an essential part of machine learning schemes ( Hinton et al, 1995 ) and has been proposed as the basis of synaptic homoeostasis (Gilestro et al, 2009; Tononi and Cirelli, 2006) These purely theoretical considerations seem to be particularly prescient for the role of the hippocampus in sleep ( Buckner, 2010 ; Buzsaki, 1998 ). Furthermore, they speak to the mechanisms that may underwrite more general structure learning in finessing our generative models of the world ( Gershman, 2017 ; Tenenbaum et al, 2011 ; Tervo et al, 2016 ).
Glossary of terms Memory index: During memory recall, the hippocampal index facilitates neocortical reinstatement of selective activity patterns to recapitulate previous experience.
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Section: Introductionmentioning
confidence: 99%
“…How this plays out in psychopathology are main themes of this article. Much of our focus will be on what Friston and collaborators call “structure learning” (Tervo et al., 2016; Friston et al., 2017; Gershman, 2017; Isomura and Friston, 2018), namely, learning the repertoire or narratives that constitute our prior beliefs–or hypotheses–about how our world works, and how these might be influenced therapeutically. Although the FEP applies to these structural priors, getting them right can be a tricky business.…”
Section: Introductionmentioning
confidence: 99%