2021
DOI: 10.48550/arxiv.2108.13581
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DoGR: Disaggregated Gaussian Regression for Reproducible Analysis of Heterogeneous Data

Nazanin Alipourfard,
Keith Burghardt,
Kristina Lerman

Abstract: Quantitative analysis of large-scale data is often complicated by the presence of diverse subgroups, which reduce the accuracy of inferences they make on held-out data. To address the challenge of heterogeneous data analysis, we introduce DoGR, a method that discovers latent confounders by simultaneously partitioning the data into overlapping clusters (disaggregation) and modeling the behavior within them (regression). When applied to real-world data, our method discovers meaningful clusters and their characte… Show more

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