AINCFeb 22, 2022

Neural Network based Successor Representations of Space and Language

arXiv:2202.11190v121 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of building cognitive maps for structured knowledge, potentially advancing artificial general intelligence by bridging neuroscience and deep learning.

The authors developed a neural network approach to learn multi-scale successor representations, applying it to spatial exploration, spatial navigation, and linguistic inference tasks, where it successfully approximated underlying structures and produced neural firing patterns resembling biological place and grid cells.

How does the mind organize thoughts? The hippocampal-entorhinal complex is thought to support domain-general representation and processing of structural knowledge of arbitrary state, feature and concept spaces. In particular, it enables the formation of cognitive maps, and navigation on these maps, thereby broadly contributing to cognition. It has been proposed that the concept of multi-scale successor representations provides an explanation of the underlying computations performed by place and grid cells. Here, we present a neural network based approach to learn such representations, and its application to different scenarios: a spatial exploration task based on supervised learning, a spatial navigation task based on reinforcement learning, and a non-spatial task where linguistic constructions have to be inferred by observing sample sentences. In all scenarios, the neural network correctly learns and approximates the underlying structure by building successor representations. Furthermore, the resulting neural firing patterns are strikingly similar to experimentally observed place and grid cell firing patterns. We conclude that cognitive maps and neural network-based successor representations of structured knowledge provide a promising way to overcome some of the short comings of deep learning towards artificial general intelligence.

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