Biostatistics Weekly Seminar


Interpretable Classification of Categorical Time Series Using the Spectral Envelope and Optimal Scalings

Scott Bruce, PhD
Assistant Professor
Department of Statistics
Texas A&M University

This talk introduces a novel approach to the classification of categorical time series under the supervised learning paradigm. To construct meaningful features for categorical time series classification, we consider two relevant quantities: the spectral envelope and its corresponding set of optimal scalings. These quantities characterize oscillatory patterns in a categorical time series as the largest possible power at each frequency, or spectral envelope, obtained by assigning numerical values, or scalings, to categories that optimally emphasize oscillations at each frequency. Our procedure combines these two quantities to produce an interpretable and parsimonious feature-based classifier that can be used to accurately determine group membership for categorical time series. Classification consistency of the proposed method is investigated, and simulation studies are used to demonstrate accuracy in classifying categorical time series with various underlying group structures. Finally, we use the proposed method to explore key differences in oscillatory patterns of sleep stage time series for patients with different sleep disorders and accurately classify patients accordingly. The code for implementing the proposed method is available at https://github.com/zedali16/envsca.


Virtual: Zoom Link to Follow
15 November 2023
1:30pm


Speaker Itinerary

Topic revision: r4 - 09 Nov 2023, CierraStreeter
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