Time-Series Analysis via Low-Rank Matrix Factorization Applied to Infant-Sleep Data

9 Apr 2019Sheng LiuMark ChengHayley BrooksWayne MackeyDavid J. HeegerEsteban G. TabakCarlos Fernandez-Granda

We propose a nonparametric model for time series with missing data based on low-rank matrix factorization. The model expresses each instance in a set of time series as a linear combination of a small number of shared basis functions... (read more)

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