Semantic Scholar Open Access 2019 592 sitasi

InterpretML: A Unified Framework for Machine Learning Interpretability

H. Nori Samuel Jenkins Paul Koch R. Caruana

Abstrak

InterpretML is an open-source Python package which exposes machine learning interpretability algorithms to practitioners and researchers. InterpretML exposes two types of interpretability - glassbox models, which are machine learning models designed for interpretability (ex: linear models, rule lists, generalized additive models), and blackbox explainability techniques for explaining existing systems (ex: Partial Dependence, LIME). The package enables practitioners to easily compare interpretability algorithms by exposing multiple methods under a unified API, and by having a built-in, extensible visualization platform. InterpretML also includes the first implementation of the Explainable Boosting Machine, a powerful, interpretable, glassbox model that can be as accurate as many blackbox models. The MIT licensed source code can be downloaded from github.com/microsoft/interpret.

Penulis (4)

H

H. Nori

S

Samuel Jenkins

P

Paul Koch

R

R. Caruana

Format Sitasi

Nori, H., Jenkins, S., Koch, P., Caruana, R. (2019). InterpretML: A Unified Framework for Machine Learning Interpretability. https://www.semanticscholar.org/paper/60baa46784e8e9a30a57e1875907d008fbdc817b

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Tahun Terbit
2019
Bahasa
en
Total Sitasi
592×
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Semantic Scholar
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Open Access ✓