2024
DOI: 10.1162/neco_a_01638
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Vector Symbolic Finite State Machines in Attractor Neural Networks

Madison Cotteret,
Hugh Greatorex,
Martin Ziegler
et al.

Abstract: Hopfield attractor networks are robust distributed models of human memory, but they lack a general mechanism for effecting state-dependent attractor transitions in response to input. We propose construction rules such that an attractor network may implement an arbitrary finite state machine (FSM), where states and stimuli are represented by high-dimensional random vectors and all state transitions are enacted by the attractor network’s dynamics. Numerical simulations show the capacity of the model, in terms of… Show more

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