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Novelty Detection, Insect Olfaction, Mismatch Negativity, and the Representation of Probability in the Brain

Authors
Terry Stewart
National Research Council of Canada
Dr. Michael Furlong
Centre for Theoretical Neuroscience, University of Waterloo, Canada ~ System Design Engineering
Kathryn Simone
University of Waterloo ~ Department of Mathematics
Dr. Madeleine Bartlett
University of Waterloo, Canada
Prof. Jeff Orchard
University of Waterloo, Canada ~ Cheriton School of Computer Science
Abstract

We present a unified model of how groups of neurons can represent and learn probability distributions using a biologically plausible online learning rule. We first present this in the context of insect olfaction, where we map our model onto a well-known biological circuit where a single output neuron represents whether the current stimulus is novel or not. We show that the model approximates a Bayesian inference process, providing an explanation as to why the current flowing into the output neuron is proportional to the expected probability of that stimulus. Finally, we extend this model to show that the same circuit can detect temporal patterns such as those violations of expectations that produce the EEG mismatch negativity signal.

Tags

Keywords

novelty detection. insect olfaction
mismatch negativity
neural representation
hyperdimensional computing
fractional binding
spatial semantic pointers
Bayesian inference
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Cite this as:

Stewart, T., Furlong, P., Simone, K., Bartlett, M., & Orchard, J. (2023, July). Novelty Detection, Insect Olfaction, Mismatch Negativity, and the Representation of Probability in the Brain. Abstract published at MathPsych/ICCM/EMPG 2023. Via mathpsych.org/presentation/1177.