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arxiv: 1702.06221 · v2 · pith:2EI7K7YSnew · submitted 2017-02-21 · 📊 stat.ME · cs.LG· physics.data-an· q-bio.QM

Determination of hysteresis in finite-state random walks using Bayesian cross validation

classification 📊 stat.ME cs.LGphysics.data-anq-bio.QM
keywords hysteresisdatamodelbayesianbiasedcrossfavorfinite-state
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Consider the problem of modeling hysteresis for finite-state random walks using higher-order Markov chains. This Letter introduces a Bayesian framework to determine, from data, the number of prior states of recent history upon which a trajectory is statistically dependent. The general recommendation is to use leave-one-out cross validation, using an easily-computable formula that is provided in closed form. Importantly, Bayes factors using flat model priors are biased in favor of too-complex a model (more hysteresis) when a large amount of data is present and the Akaike information criterion (AIC) is biased in favor of too-sparse a model (less hysteresis) when few data are present.

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