Autoregressive Asymmetric Linear Gaussian Hidden Markov Models

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Authors Carlos Puerto-Santana, Pedro Larraรฑaga, Concha Bielza arXiv ID 2010.15604 Category cs.LG: Machine Learning Cross-listed stat.AP, stat.ME, stat.ML Citations 15 Venue IEEE Transactions on Pattern Analysis and Machine Intelligence Last Checked 4 months ago
Abstract
In a real life process evolving over time, the relationship between its relevant variables may change. Therefore, it is advantageous to have different inference models for each state of the process. Asymmetric hidden Markov models fulfil this dynamical requirement and provide a framework where the trend of the process can be expressed as a latent variable. In this paper, we modify these recent asymmetric hidden Markov models to have an asymmetric autoregressive component, allowing the model to choose the order of autoregression that maximizes its penalized likelihood for a given training set. Additionally, we show how inference, hidden states decoding and parameter learning must be adapted to fit the proposed model. Finally, we run experiments with synthetic and real data to show the capabilities of this new model.
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