A Semi-parametric Model for Decision Making in High-Dimensional Sensory Discrimination Tasks

Authors

  • Stephen Keeley Department of Natural Sciences, Fordham University, USA Meta
  • Benjamin Letham Meta
  • Craig Sanders Meta
  • Chase Tymms Meta
  • Michael Shvartsman Meta

DOI:

https://doi.org/10.1609/aaai.v37i1.25074

Keywords:

CMS: Bayesian Learning, CMS: Brain Modeling, CMS: Other Foundations of Cognitive Modeling & Systems, HAI: Human Computation, ML: Bayesian Learning, ML: Probabilistic Methods

Abstract

Psychometric functions typically characterize binary sensory decisions along a single stimulus dimension. However, real-life sensory tasks vary along a greater variety of dimensions (e.g. color, contrast and luminance for visual stimuli). Approaches to characterizing high-dimensional sensory spaces either require strong parametric assumptions about these additional contextual dimensions, or fail to leverage known properties of classical psychometric curves. We overcome both limitations by introducing a semi-parametric model of sensory discrimination that applies traditional psychophysical models along a stimulus intensity dimension, but puts Gaussian process (GP) priors on the parameters of these models with respect to the remaining dimensions. By combining the flexibility of the GP with the deep literature on parametric psychophysics, our semi-parametric models achieve good performance with much less data than baselines on both synthetic and real-world, high-dimensional psychophysics datasets. We additionally show strong performance in a Bayesian active learning setting, and present a novel active learning paradigm for the semi-parametric model.

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Published

2023-06-26

How to Cite

Keeley, S., Letham, B., Sanders, C., Tymms, C., & Shvartsman, M. (2023). A Semi-parametric Model for Decision Making in High-Dimensional Sensory Discrimination Tasks. Proceedings of the AAAI Conference on Artificial Intelligence, 37(1), 40-47. https://doi.org/10.1609/aaai.v37i1.25074

Issue

Section

AAAI Technical Track on Cognitive Modeling & Cognitive Systems