2010
DOI: 10.48550/arxiv.1011.4188
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Rescaling, thinning or complementing? On goodness-of-fit procedures for point process models and Generalized Linear Models

Abstract: Generalized Linear Models (GLMs) are an increasingly popular framework for modeling neural spike trains. They have been linked to the theory of stochastic point processes and researchers have used this relation to assess goodness-of-fit using methods from point-process theory, e.g. the time-rescaling theorem. However, high neural firing rates or coarse discretization lead to a breakdown of the assumptions necessary for this connection. Here, we show how goodness-of-fit tests from point-process theory can still… Show more

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