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Merging versus Ensembling in Multi-Study Prediction: Theoretical Insight from Random Effects

Authors :
Guan, Zoe
Parmigiani, Giovanni
Patil, Prasad
Publication Year :
2019

Abstract

A critical decision point when training predictors using multiple studies is whether these studies should be combined or treated separately. We compare two multi-study learning approaches in the presence of potential heterogeneity in predictor-outcome relationships across datasets. We consider 1) merging all of the datasets and training a single learner, and 2) multi-study ensembling, which involves training a separate learner on each dataset and combining the predictions resulting from each learner. In a linear regression setting, we show analytically and confirm via simulation that merging yields lower prediction error than ensembling when the predictor-outcome relationships are relatively homogeneous across studies. However, as cross-study heterogeneity increases, there exists a transition point beyond which ensembling outperforms merging. We provide analytic expressions for the transition point in various scenarios, study asymptotic properties, and illustrate how transition point theory can be used for deciding when studies should be combined with an application from metabolomics.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1905.07382
Document Type :
Working Paper