English

Hidden Markov Models on Variable Blocks with a Modal Clustering Algorithm and Applications

Methodology 2016-06-30 v1

Abstract

Motivated by high-throughput single-cell cytometry data with applications to vaccine development and immunological research, we consider statistical clustering in large-scale data that contain multiple rare clusters. We propose a new hierarchical mixture model, namely Hidden Markov Model on Variable Blocks (HMM-VB), and a new mode search algorithm called Modal Baum-Welch (MBW) for efficient clustering. Exploiting the widely accepted chain-like dependence among groups of variables in the cytometry data, we propose to treat the hierarchy of variable groups as a figurative time line and employ a HMM-type model, namely HMM-VB. We also propose to use mode-based clustering, aka modal clustering, and overcome the exponential computational complexity by MBW. In a series of experiments on simulated data HMM-VB and MBW have better performance than existing methods. We also apply our method to identify rare cell subsets in cytometry data and examine its strengths and limitations.

Keywords

Cite

@article{arxiv.1606.08903,
  title  = {Hidden Markov Models on Variable Blocks with a Modal Clustering Algorithm and Applications},
  author = {Lin Lin and Jia Li},
  journal= {arXiv preprint arXiv:1606.08903},
  year   = {2016}
}
R2 v1 2026-06-22T14:37:38.723Z