Bayesian Multi-View Clustering given complex inter-view structure
Benjamin D. Shapiro, Alexis Battle, Max Moldovan, Sara Mostafavi

TL;DR
This paper introduces a Bayesian method for clustering multi-view datasets with complex relationships, improving cluster quality and biological insights.
Contribution
A novel Bayesian multi-view clustering approach that handles complex inter-view relationships and estimates inter-view dependencies.
Findings
BMVC accurately estimates inter-view dependence in simulated data with non-one-to-one relationships.
BMVC improves biological homogeneity in breast cancer patient data compared to standard methods.
BMVC captures interpretable inter-view structure in a public health survey dataset.
Abstract
Multi-view datasets are becoming increasingly prevalent. These datasets consist of different modalities that provide complementary characterizations of the same underlying system. They can include heterogeneous types of information with complex relationships, varying degrees of missingness, and assorted sample sizes, as is often the case in multi-omic biological studies. Clustering multi-view data allows us to leverage different modalities to infer underlying systematic structure, but most existing approaches are limited to contexts in which entities are the same across views or have clear one-to-one relationships across data types with a common sample size. Many methods also make strong assumptions about the similarities of clusterings across views. We propose a Bayesian multi-view clustering approach (BMVC) which can handle the realities of multi-view datasets that often have complex…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Gene expression and cancer classification · Bayesian Methods and Mixture Models
