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arxiv: 1802.08242 · v1 · pith:4BH5EZJ2new · submitted 2018-02-22 · 📊 stat.ME · cs.NA· cs.SY· eess.SY· math.NA· stat.ML

Structured low-rank matrix completion for forecasting in time series analysis

classification 📊 stat.ME cs.NAcs.SYeess.SYmath.NAstat.ML
keywords matrixcompletionproblemlow-rankanalysisconsiderforecastingresults
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In this paper we consider the low-rank matrix completion problem with specific application to forecasting in time series analysis. Briefly, the low-rank matrix completion problem is the problem of imputing missing values of a matrix under a rank constraint. We consider a matrix completion problem for Hankel matrices and a convex relaxation based on the nuclear norm. Based on new theoretical results and a number of numerical and real examples, we investigate the cases when the proposed approach can work. Our results highlight the importance of choosing a proper weighting scheme for the known observations.

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