Learning Credible Models

November 08, 2017 ยท Declared Dead ยท ๐Ÿ› Knowledge Discovery and Data Mining

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Authors Jiaxuan Wang, Jeeheh Oh, Haozhu Wang, Jenna Wiens arXiv ID 1711.03190 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 30 Venue Knowledge Discovery and Data Mining Last Checked 4 months ago
Abstract
In many settings, it is important that a model be capable of providing reasons for its predictions (i.e., the model must be interpretable). However, the model's reasoning may not conform with well-established knowledge. In such cases, while interpretable, the model lacks \textit{credibility}. In this work, we formally define credibility in the linear setting and focus on techniques for learning models that are both accurate and credible. In particular, we propose a regularization penalty, expert yielded estimates (EYE), that incorporates expert knowledge about well-known relationships among covariates and the outcome of interest. We give both theoretical and empirical results comparing our proposed method to several other regularization techniques. Across a range of settings, experiments on both synthetic and real data show that models learned using the EYE penalty are significantly more credible than those learned using other penalties. Applied to a large-scale patient risk stratification task, our proposed technique results in a model whose top features overlap significantly with known clinical risk factors, while still achieving good predictive performance.
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