Optimal forgetting: Semantic compression of episodic memories release_ub6wvtyi2raotaxfrtvwloaswa

by David G. Nagy, Balázs Török, Gergo Orban

Published in PLoS Computational Biology by Public Library of Science (PLoS).

2020   Volume 16, Issue 10, e1008367

Abstract

It has extensively been documented that human memory exhibits a wide range of systematic distortions, which have been associated with resource constraints. Resource constraints on memory can be formalised in the normative framework of lossy compression, however traditional lossy compression algorithms result in qualitatively different distortions to those found in experiments with humans. We argue that the form of distortions is characteristic of relying on a generative model adapted to the environment for compression. We show that this semantic compression framework can provide a unifying explanation of a wide variety of memory phenomena. We harness recent advances in learning deep generative models, that yield powerful tools to approximate generative models of complex data. We use three datasets, chess games, natural text, and hand-drawn sketches, to demonstrate the effects of semantic compression on memory performance. Our model accounts for memory distortions related to domain expertise, gist-based distortions, contextual effects, and delayed recall.
In text/plain format

Archived Files and Locations

application/pdf   2.7 MB
file_n6ost4kbdrdu7ej4ddsvxm3vte
journals.plos.org (publisher)
web.archive.org (webarchive)
Read Archived PDF
Preserved and Accessible
Type  article-journal
Stage   published
Date   2020-10-15
Language   en ?
Container Metadata
Open Access Publication
In DOAJ
In ISSN ROAD
In Keepers Registry
ISSN-L:  1553-734X
Work Entity
access all versions, variants, and formats of this works (eg, pre-prints)
Catalog Record
Revision: 46d6c2dd-7913-4130-bf6a-a4504284c097
API URL: JSON