Estimation of general time-varying single particle tracking linear models using local likelihood

Published: May 1, 2020
Abstract
In this work, we study a general approach to the estimation of single particle tracking models with time-varying parameters. The main idea is to use local Maximum Likelihood (ML), applying a sliding window over the data and estimating the model parameters in each window. We combine local ML with Expectation Maximization to iteratively find the ML estimate in each window, an approach that is amenable to generalization to nonlinear models. Results...
Paper Details
Title
Estimation of general time-varying single particle tracking linear models using local likelihood
Published Date
May 1, 2020
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