Learning Sample-Specific Models with Low-Rank Personalized Regression
Lengerich, Ben, Aragam, Bryon, Xing, Eric P.
–Neural Information Processing Systems
Modern applications of machine learning (ML) deal with increasingly heterogeneous datasets comprised of data collected from overlapping latent subpopulations. As a result, traditional models trained over large datasets may fail to recognize highly predictive localized effects in favour of weakly predictive global patterns. This is a problem because localized effects are critical to developing individualized policies and treatment plans in applications ranging from precision medicine to advertising. To address this challenge, we propose to estimate sample-specific models that tailor inference and prediction at the individual level. In contrast to classical ML models that estimate a single, complex model (or only a few complex models), our approach produces a model personalized to each sample.
Neural Information Processing Systems
Mar-18-2020, 21:48:51 GMT
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