State Duration and Interval Modeling in Hidden Semi-Markov Model for Sequential Data Analysis
Hiromi Narimatsu, Hiroyuki Kasai

TL;DR
This paper introduces two novel extensions of the hidden semi-Markov model (HSMM) that incorporate state interval modeling, enhancing the representation of sequential data with superior performance demonstrated through simulations.
Contribution
The paper proposes the first extensions of HSMM to explicitly model state intervals, adding interval state nodes and probabilistic interval length parameters.
Findings
Proposed models outperform standard HSMM in simulations.
Models effectively represent state durations and intervals.
First to incorporate interval modeling into HSMM.
Abstract
Sequential data modeling and analysis have become indispensable tools for analyzing sequential data, such as time-series data, because larger amounts of sensed event data have become available. These methods capture the sequential structure of data of interest, such as input-output relations and correlation among datasets. However, because most studies in this area are specialized or limited to their respective applications, rigorous requirement analysis of such models has not been undertaken from a general perspective. Therefore, we particularly examine the structure of sequential data, and extract the necessity of `state duration' and `state interval' of events for efficient and rich representation of sequential data. Specifically addressing the hidden semi-Markov model (HSMM) that represents such state duration inside a model, we attempt to add representational capability of a state…
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