Resonator Networks, 2: Factorization Performance and Capacity Compared to Optimization-Based Methods

Author:

Kent Spencer J.1,Frady E. Paxon2,Sommer Friedrich T.2,Olshausen Bruno A.3

Affiliation:

1. Redwood Center for Theoretical Neuroscience and Electrical Engineering and Computer Sciences, University of California, Berkeley, Berkeley, CA 94720, U.S.A.

2. Redwood Center for Theoretical Neuroscience and Helen Wills Neuroscience Institute, University of California, Berkeley, Berkeley, CA 94720, U.S.A., and Intel Laboratories, Neuromorphic Computing Lab, San Francisco, CA 94111, U.S.A.

3. Redwood Center for Theoretical Neuroscience, Helen Wills Neuroscience Institute, and School of Optometry, University of California, Berkeley, Berkeley, CA 94720, U.S.A.

Abstract

We develop theoretical foundations of resonator networks, a new type of recurrent neural network introduced in Frady, Kent, Olshausen, and Sommer ( 2020 ), a companion article in this issue, to solve a high-dimensional vector factorization problem arising in Vector Symbolic Architectures. Given a composite vector formed by the Hadamard product between a discrete set of high-dimensional vectors, a resonator network can efficiently decompose the composite into these factors. We compare the performance of resonator networks against optimization-based methods, including Alternating Least Squares and several gradient-based algorithms, showing that resonator networks are superior in several important ways. This advantage is achieved by leveraging a combination of nonlinear dynamics and searching in superposition, by which estimates of the correct solution are formed from a weighted superposition of all possible solutions. While the alternative methods also search in superposition, the dynamics of resonator networks allow them to strike a more effective balance between exploring the solution space and exploiting local information to drive the network toward probable solutions. Resonator networks are not guaranteed to converge, but within a particular regime they almost always do. In exchange for relaxing the guarantee of global convergence, resonator networks are dramatically more effective at finding factorizations than all alternative approaches considered.

Publisher

MIT Press - Journals

Subject

Cognitive Neuroscience,Arts and Humanities (miscellaneous)

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