The Time-Rescaling Theorem and Its Application to Neural Spike Train Data Analysis (2001)
| Venue: | NEURAL COMPUTATION |
| Citations: | 43 - 7 self |
BibTeX
@MISC{Brown01thetime-rescaling,
author = {Emery N. Brown and Riccardo Barbieri and Valerie Ventura and Robert E. Kass and Loren M. Frank},
title = { The Time-Rescaling Theorem and Its Application to Neural Spike Train Data Analysis},
year = {2001}
}
Years of Citing Articles
OpenURL
Abstract
Measuring agreement between a statistical model and a spike train data series, that is, evaluating goodness of fit, is crucial for establishing the model’s validity prior to using it to make inferences about a particular neural system. Assessing goodness-of-fit is a challenging problem for point process neural spike train models, especially for histogram-based models such as perstimulus time histograms (PSTH) and rate functions estimated by spike train smoothing. The time-rescaling theorem is a wellknown result in probability theory, which states that any point process with an integrable conditional intensity function may be transformed into a Poisson process with unit rate. We describe how the theorem may be used to develop goodness-of-fit tests for both parametric and histogram-based point process models of neural spike trains. We apply these tests in two examples: a comparison of PSTH, inhomogeneous Poisson, and inhomogeneous Markov interval models of neural spike trains from the sup-







