Electronics, Vol. 14, Pages 1579: A Modification Method for Domain Shift in the Hidden Semi-Markov Model and Its Application
Electronics doi: 10.3390/electronics14081579
Authors:
Yunosuke Shimada
Takashi Kusaka
Takayuki Mukaeda
Yui Endo
Mitsunori Tada
Natsuki Miyata
Takayuki Tanaka
In human behavior recognition using machine learning, model performance degrades when the training data and operational data follow different distributions which is a phenomenon known as domain shift. This study proposes a method for domain adaptation in the hidden semi-Markov model (HSMM) by modifying only the emission probability distributions. Assuming that the state transition probabilities remain unchanged, the method updates the emission probabilities based on the posterior distribution of the target domain. This approach enables domain adaptation with minimal computational cost without requiring model retraining. The effectiveness of the proposed method was evaluated on synthetic time-series data from different domains and actual care work data, achieving recognition performance comparable to that of models retrained for each domain. These findings suggest that the proposed method applies to various time-series data analysis tasks requiring domain adaptation.
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Yunosuke Shimada www.mdpi.com