Adaption of Akaike information criterion under least squares frameworks for comparison of stochastic models

QUARTERLY OF APPLIED MATHEMATICS(2019)

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摘要
In this paper, we examine the feasibility of extending the Akaike information criterion (AIC) for deterministic systems as a potential model selection criteria for stochastic models. We discuss the implementation method for three different classes of stochastic models: continuous time Markov chains (CTMC), stochastic differential equations (SDE), and random differential equations (RDE). The effectiveness and limitations of implementing the AIC for comparison of stochastic models is demonstrated using simulated data from the three types of models and then applied to experimental longitudinal growth data for algae.
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关键词
Continuous time Markov chain models,CTMC,stochastic differential equations,SDE,random differential equations,RDE,inverse problems,model comparison techniques,Akaike information criterion,AIC
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