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A new method for parameter estimation in probabilistic models: Minimum probability flow

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arxiv 2007.09240 v1 pith:G4KKGPYH submitted 2020-07-17 cs.LG stat.ML

A new method for parameter estimation in probabilistic models: Minimum probability flow

classification cs.LG stat.ML
keywords parameterestimationfittingflowmethodminimummodelmodels
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Fitting probabilistic models to data is often difficult, due to the general intractability of the partition function. We propose a new parameter fitting method, Minimum Probability Flow (MPF), which is applicable to any parametric model. We demonstrate parameter estimation using MPF in two cases: a continuous state space model, and an Ising spin glass. In the latter case it outperforms current techniques by at least an order of magnitude in convergence time with lower error in the recovered coupling parameters.

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