Bayesian Detection of Infrequent Differences in Sets of Time Series with Shared Structure
Listgarten, Jennifer, Neal, Radford M., Roweis, Sam T., Puckrin, Rachel, Cutler, Sean
–Neural Information Processing Systems
We present a hierarchical Bayesian model for sets of related, but different, classes of time series data. Our model performs alignment simultaneously across all classes, while detecting and characterizing class-specific differences. During inference the model produces, for each class, a distribution over a canonical representation of the class. These class-specific canonical representations are automatically aligned to one another -- preserving common substructures, and highlighting differences.
Neural Information Processing Systems
Dec-31-2007