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2019-12-03Online Publication Date
2019-12-03Print Publication Date
2019-01Permanent link to this record
http://hdl.handle.net/10754/660989.1
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In this article we consider the smoothing problem for hidden Markov models. Given a hidden Markov chain { Xn} n≥ 0 and observations { Yn} n≥ 0, our objective is to compute E[varphi (X0, . ,Xk)| y0, . , yn] for some real-valued, integrable functional varphi and k fixed, k ll n and for some realization (y0, . , yn) of (Y0, . , Yn). We introduce a novel application of the multilevel Monte Carlo method with a coupling based on the Knothe-Rosenblatt rearrangement. We prove that this method can approximate the aforementioned quantity with a mean square error (MSE) of scrO (∈-2) for arbitrary ∈ > 0 with a cost of scrO (∈-2). This is in contrast to the same direct Monte Carlo method, which requires a cost of scrO (n∈-2) for the same MSE. The approach we suggest is, in general, not possible to implement, so the optimal transport methodology of [A. Spantini, D. Bigoni, and Y. Marzouk, J. Mach. Learn. Res., 19 (2018), pp. 2639-2709; M. Parno, T. Moselhy, and Y. Marzouk, SIAM/ASA J. Uncertain. Quantif., 4 (2016), pp. 1160-1190] is used, which directly approximates our strategy. We show that our theoretical improvements are achieved, even under approximation, in several numerical examples.Citation
Houssineau, J., Jasra, A., & Singh, S. S. (2019). On Large Lag Smoothing for Hidden Markov Models. SIAM Journal on Numerical Analysis, 57(6), 2812–2828. doi:10.1137/18m1198004arXiv
1804.07117ae974a485f413a2113503eed53cd6c53
10.1137/18M1198004