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Whittle Networks: A Deep Likelihood Model for Time Series
2021
International Conference on Machine Learning
While probabilistic circuits have been extensively explored for tabular data, less attention has been paid to time series. Here, the goal is to estimate joint densities among the entire time series and, in turn, determining, for instance, conditional independence relations between them. To this end, we propose the first probabilistic circuits (PCs) approach for modeling the joint distribution of multivariate time series, called Whittle sum-product networks (WSPNs). WSPNs leverage the Whittle
dblp:conf/icml/0001VK21
fatcat:n6zzu36wdncfneywamocifgmx4