Interpretability is a pressing issue for decision systems. Many post hoc methods have been proposed to explain the predictions of a single machine learning model. However, business processes and decision systems are rarely centered around a unique model. These systems combine multiple models that produce key predictions, and then apply decision rules to generate the final decision. To explain such decisions, we propose the Semi-Model-Agnostic Contextual Explainer (SMACE), a new interpretability method that combines a geometric approach for decision rules with existing interpretability methods for machine learning models to generate an intuitive feature ranking tailored to the end user. We show that established model-agnostic approaches produce poor results on tabular data in this setting, in particular giving the same importance to several features, whereas SMACE can rank them in a meaningful way.
SMACE: A New Method for the Interpretability of Composite Decision Systems
SMACE is a new interpretability method that combines geometric approaches for decision rules with existing model-agnostic methods to provide meaningful feature rankings for complex decision systems using multiple models.
- Year
- 2021
- Venue
- arXiv 2021
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2111.08749ARXIV-DEFAULT
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