Walking the Weight Manifold: a Topological Approach to Conditioning Inspired by Neuromodulation
Ari S. Benjamin, Kyle Daruwalla, Christian Pehle, Abdul-Malik Zekri, Anthony M. Zador

TL;DR
This paper introduces a topological approach to neural network conditioning by learning smooth weight manifolds inspired by neuromodulation, improving generalization and out-of-distribution performance.
Contribution
It proposes a novel method to optimize weight manifolds with predefined topology, offering a new way to condition neural networks based on task context.
Findings
Manifolds with various topologies outperform traditional conditioning methods.
Learning weight manifolds enhances generalization to out-of-distribution samples.
Topology serves as an inductive bias for task relationships.
Abstract
One frequently wishes to learn a range of similar tasks as efficiently as possible, re-using knowledge across tasks. In artificial neural networks, this is typically accomplished by conditioning a network upon task context by injecting context as input. Brains have a different strategy: the parameters themselves are modulated as a function of various neuromodulators such as serotonin. Here, we take inspiration from neuromodulation and propose to learn weights which are smoothly parameterized functions of task context variables. Rather than optimize a weight vector, i.e. a single point in weight space, we optimize a smooth manifold in weight space with a predefined topology. To accomplish this, we derive a formal treatment of optimization of manifolds as the minimization of a loss functional subject to a constraint on volumetric movement, analogous to gradient descent. During inference,…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Functional Brain Connectivity Studies · Face Recognition and Perception
