Efficient model-based clustering with coalescents: Application to multiple outcomes using medical records data
Abstract
We present a sequential Monte Carlo sampler for coalescent based Bayesian hierarchical clustering. The model is appropriate for multivariate non- data and our approach offers a substantial reduction in computational cost when compared to the original sampler. We also propose a quadratic complexity approximation that in practice shows almost no loss in performance compared to its counterpart. Our formulation leads to a greedy algorithm that exhibits performance improvement over other greedy algorithms, particularly in small data sets. We incorporate the Coalescent into a hierarchical regression model that allows joint modeling of multiple correlated outcomes. The approach does not require a priori knowledge of either the degree or structure of the correlation and, as a byproduct, generates additional models for a subset of the composite outcomes. We demonstrate the utility of the approach by predicting multiple different types of outcomes using medical records data from a cohort of diabetic patients.
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