Sequentially spherical data modeling with hidden Markov models and its application to fMRI data analysis

作者:

Highlights:

摘要

Due to the reason that spherical data (i.e. L2 normalized vectors) are often involved with various real-life applications (such as anomaly detection, gesture recognition, intrusion detection in networks, gene expression data analysis, etc.), spherical data modeling has recently become an important research topic. In this work, we address the problem of modeling sequentially spherical data through continuous hidden Markov models (HMMs). Instead of adopting Gaussian mixture models (GMMs) as the emission distributions as in common continuous HMMs, we propose a continuous HMM by considering the mixture of von Mises–Fisher (VMF) distributions as its emission densities. Then, we systematically propose an effective method based on variational Bayes (VB) to learn the VMF-based HMM. The developed learning method has the following merits: (1) It is convergence-guaranteed; (2) It can be optimized with closed-form solutions. The proposed VMF–HMM with VB learning is validated by conducting experiments on both simulated sequential spherical data and a real application about fMRI data analysis.

论文关键词:Spherical data,Hidden Markov models,Von Mises–Fisher,Mixture models,Variational Bayes,fMRI data analysis

论文评审过程:Received 2 May 2020, Revised 16 July 2020, Accepted 28 July 2020, Available online 3 August 2020, Version of Record 4 August 2020.

论文官网地址:https://doi.org/10.1016/j.knosys.2020.106341