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Sequential data naturally arises from user engagement on digital platforms like social media, music streaming services, and web navigation, encapsulating evolving user preferences and behaviors through continuous information streams. A notable unresolved task in stochastic processes is learning mixtures of continuous-time Markov chains (CTMCs). While there is progress in learning mixtures of discrete-time Markov chains with recovery guarantees GKV16,ST23,KTT2023, the continuous scenario uncovers unique unexplored challenges. The intrigue in CTMC mixtures stems from their ability to model intricate continuous-time stochastic processes prevalent in various fields including social media, finance, and biology.
Spaeh et al. (Wed,) studied this question.
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