A model of semantic completion in generative episodic memory
Zahra Fayyaz, Aya Altamimi, Sen Cheng, Laurenz Wiskott

TL;DR
This paper introduces a computational model of generative episodic memory that uses semantic completion to fill in missing details, enabling plausible recall and generalization from incomplete memory traces.
Contribution
It presents a novel model combining VQ-VAE and PixelCNN to simulate how episodic memory reconstructs and generalizes, emphasizing semantic completion's role.
Findings
Model can plausibly complete missing memory parts.
Achieves strong generalization to unseen images.
Replicates key experimental findings on memory recall.
Abstract
Many different studies have suggested that episodic memory is a generative process, but most computational models adopt a storage view. In this work, we propose a computational model for generative episodic memory. It is based on the central hypothesis that the hippocampus stores and retrieves selected aspects of an episode as a memory trace, which is necessarily incomplete. At recall, the neocortex reasonably fills in the missing information based on general semantic information in a process we call semantic completion. As episodes we use images of digits (MNIST) augmented by different backgrounds representing context. Our model is based on a VQ-VAE which generates a compressed latent representation in form of an index matrix, which still has some spatial resolution. We assume that attention selects some part of the index matrix while others are discarded, this then represents the…
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Taxonomy
TopicsMemory and Neural Mechanisms · Ferroelectric and Negative Capacitance Devices · Memory Processes and Influences
MethodsVQ-VAE · PixelCNN
