Learning Sparse Graphs for Prediction and Filtering of Multivariate Data Processes
Abstract
We address the problem of prediction of multivariate data process using an underlying graph model. We develop a method that learns a sparse partial correlation graph in a tuning-free and computationally efficient manner. Specifically, the graph structure is learned recursively without the need for cross-validation or parameter tuning by building upon a hyperparameter-free framework. Our approach does not require the graph to be undirected and also accommodates varying noise levels across different nodes.Experiments using real-world datasets show that the proposed method offers significant performance gains in prediction, in comparison with the graphs frequently associated with these datasets.
- Publication:
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arXiv e-prints
- Pub Date:
- December 2017
- DOI:
- arXiv:
- arXiv:1712.04542
- Bibcode:
- 2017arXiv171204542V
- Keywords:
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- Statistics - Machine Learning;
- Statistics - Computation