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Bibliographic Details
Main Authors: Doran, Kevin, Seifert, Marvin, Yovanovich, Carola A. M., Baden, Tom
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2312.01966
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author Doran, Kevin
Seifert, Marvin
Yovanovich, Carola A. M.
Baden, Tom
author_facet Doran, Kevin
Seifert, Marvin
Yovanovich, Carola A. M.
Baden, Tom
contents Approaches to predicting neuronal spike responses commonly use a Poisson learning objective. This objective quantizes responses into spike counts within a fixed summation interval, typically on the order of 10 to 100 milliseconds in duration; however, neuronal responses are often time accurate down to a few milliseconds, and Poisson models struggle to precisely model them at these timescales. We propose the concept of a spike distance function that maps points in time to the temporal distance to the nearest spike. We show that neural networks can be trained to approximate spike distance functions, and we present an efficient algorithm for inferring spike trains from the outputs of these models. Using recordings of chicken and frog retinal ganglion cells responding to visual stimuli, we compare the performance of our approach to that of Poisson models trained with various summation intervals. We show that our approach outperforms the use of Poisson models at spike train inference.
format Preprint
id arxiv_https___arxiv_org_abs_2312_01966
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Spike distance function as a learning objective for spike prediction
Doran, Kevin
Seifert, Marvin
Yovanovich, Carola A. M.
Baden, Tom
Neurons and Cognition
Approaches to predicting neuronal spike responses commonly use a Poisson learning objective. This objective quantizes responses into spike counts within a fixed summation interval, typically on the order of 10 to 100 milliseconds in duration; however, neuronal responses are often time accurate down to a few milliseconds, and Poisson models struggle to precisely model them at these timescales. We propose the concept of a spike distance function that maps points in time to the temporal distance to the nearest spike. We show that neural networks can be trained to approximate spike distance functions, and we present an efficient algorithm for inferring spike trains from the outputs of these models. Using recordings of chicken and frog retinal ganglion cells responding to visual stimuli, we compare the performance of our approach to that of Poisson models trained with various summation intervals. We show that our approach outperforms the use of Poisson models at spike train inference.
title Spike distance function as a learning objective for spike prediction
topic Neurons and Cognition
url https://arxiv.org/abs/2312.01966