2020
DOI: 10.1371/journal.pcbi.1008367
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Optimal forgetting: Semantic compression of episodic memories

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 com… Show more

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Cited by 12 publications
(13 citation statements)
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“… 51 models how both individual examples and statistical regularities could be learned within HF. Post-consolidation episodic memories are more prone to schema-based distortions in which semantic or contextual knowledge influences recall 6 , 52 , consistent with the behaviour of generative models 32 . Neural representations in the entorhinal cortex (EC) such as grid cells 53 are thought to encode latent structures underlying experiences 31 , 54 , and other regions of the association cortex, such as the medial prefrontal cortex (mPFC), may compress stimuli to a minimal representation 55 .…”
Section: Mainsupporting
confidence: 60%
See 1 more Smart Citation
“… 51 models how both individual examples and statistical regularities could be learned within HF. Post-consolidation episodic memories are more prone to schema-based distortions in which semantic or contextual knowledge influences recall 6 , 52 , consistent with the behaviour of generative models 32 . Neural representations in the entorhinal cortex (EC) such as grid cells 53 are thought to encode latent structures underlying experiences 31 , 54 , and other regions of the association cortex, such as the medial prefrontal cortex (mPFC), may compress stimuli to a minimal representation 55 .…”
Section: Mainsupporting
confidence: 60%
“…Post-consolidation episodic memories are more prone to schema-based distortions in which semantic or contextual knowledge influences recall 6 , 52 , consistent with the behaviour of generative models 32 .…”
Section: Mainsupporting
confidence: 60%
“…Based on our findings, two opposing factors in how drugs impact memories from an event may influence metamemory, the amount of memory content and memory stability (Figure 12). When one has an abundance of memories from an event, they could become more confusable with each other, especially after the passage of time in which more interfering information is encoded and memories undergo postencoding transformations such as compression (Figure 12a; D’Argembeau et al, 2022; Nagy et al, 2020). Thus, impairing certain memories or memory features could better differentiate those memories from an event that survive the amnestic manipulation, resulting in a relative enhancement of what one knows about an event (Figure 12b).…”
Section: Discussionmentioning
confidence: 99%
“…We also include the latent representation from a β-Variational Autoencoder (β-VAE) [15] as a more sophisticated baseline. Deep autoencoder models have been explored as tools to learn better image and video compression algorithms for technological applications [16,17], as well as to model human visual memory [18][19][20]. In addition to baseline models, we consider networks trained on the ILSVRC ImageNet classification challenge (both the 1,000-way and 22,000-way versions) and networks trained on the Contrastive Language-Image Pre-training (CLIP) objective [21].…”
Section: Continuous Report With Natural Imagesmentioning
confidence: 99%