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arxiv: 1701.02002 · v3 · pith:KWGCERPQnew · submitted 2017-01-08 · 📊 stat.ME · stat.CO

Smoothing with Couplings of Conditional Particle Filters

classification 📊 stat.ME stat.CO
keywords smoothingestimatorsexperimentsmarkovmodelsnumericalprocessunbiased
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In state space models, smoothing refers to the task of estimating a latent stochastic process given noisy measurements related to the process. We propose an unbiased estimator of smoothing expectations. The lack-of-bias property has methodological benefits: independent estimators can be generated in parallel, and confidence intervals can be constructed from the central limit theorem to quantify the approximation error. To design unbiased estimators, we combine a generic debiasing technique for Markov chains with a Markov chain Monte Carlo algorithm for smoothing. The resulting procedure is widely applicable and we show in numerical experiments that the removal of the bias comes at a manageable increase in variance. We establish the validity of the proposed estimators under mild assumptions. Numerical experiments are provided on toy models, including a setting of highly-informative observations, and a realistic Lotka-Volterra model with an intractable transition density.

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