Heterogeneous Relational Kernel Learning [article]

Andre T. Nguyen, Edward Raff
2019 arXiv   pre-print
Recent work has developed Bayesian methods for the automatic statistical analysis and description of single time series as well as of homogeneous sets of time series data. We extend prior work to create an interpretable kernel embedding for heterogeneous time series. Our method adds practically no computational cost compared to prior results by leveraging previously discarded intermediate results. We show the practical utility of our method by leveraging the learned embeddings for clustering,
more » ... ttern discovery, and anomaly detection. These applications are beyond the ability of prior relational kernel learning approaches.
arXiv:1908.09219v1 fatcat:n5mpga6iybbitga54wvt5k6jhy