Associative Memories via Predictive Coding
Tommaso Salvatori, Yuhang Song, Yujian Hong, Simon Frieder, Lei Sha,, Zhenghua Xu, Rafal Bogacz, Thomas Lukasiewicz

TL;DR
This paper introduces a novel neural model for associative memories based on hierarchical generative networks trained with predictive coding, demonstrating superior retrieval accuracy and robustness on natural image datasets and multi-modal data.
Contribution
The paper presents a new predictive coding-based neural model for associative memories that outperforms existing models in accuracy, robustness, and handling multi-modal data.
Findings
Outperforms autoencoders and Hopfield networks in retrieval accuracy
Achieves high accuracy in completing partial images from minimal pixel data
Effectively retrieves images from descriptions and vice versa
Abstract
Associative memories in the brain receive and store patterns of activity registered by the sensory neurons, and are able to retrieve them when necessary. Due to their importance in human intelligence, computational models of associative memories have been developed for several decades now. They include autoassociative memories, which allow for storing data points and retrieving a stored data point when provided with a noisy or partial variant of , and heteroassociative memories, able to store and recall multi-modal data. In this paper, we present a novel neural model for realizing associative memories, based on a hierarchical generative network that receives external stimuli via sensory neurons. This model is trained using predictive coding, an error-based learning algorithm inspired by information processing in the cortex. To test the capabilities of this model, we perform…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Memory and Neural Mechanisms
MethodsTest
