TL;DR
CyHMMs is a novel cyclic hidden Markov model that accurately detects and models cycles in multidimensional, heterogeneous time series data, handling missing data and revealing individual and group cycle characteristics.
Contribution
Introduces CyHMMs, a robust method for modeling cycles in complex real-world data, capable of handling multivariate, missing data, and sharing information across individuals.
Findings
CyHMMs infer cycle lengths with 58-63% lower error than existing methods.
They can model feature progression and identify variable features during cycles.
Application reveals distinct cycle groups and medically relevant patterns.
Abstract
Cycles are fundamental to human health and behavior. However, modeling cycles in time series data is challenging because in most cases the cycles are not labeled or directly observed and need to be inferred from multidimensional measurements taken over time. Here, we present CyHMMs, a cyclic hidden Markov model method for detecting and modeling cycles in a collection of multidimensional heterogeneous time series data. In contrast to previous cycle modeling methods, CyHMMs deal with a number of challenges encountered in modeling real-world cycles: they can model multivariate data with discrete and continuous dimensions; they explicitly model and are robust to missing data; and they can share information across individuals to model variation both within and between individual time series. Experiments on synthetic and real-world health-tracking data demonstrate that CyHMMs infer cycle…
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