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Poster
Mind the Gap: A Generative Approach to Interpretable Feature Selection and Extraction
Been Kim · Julie A Shah · Finale Doshi-Velez
We present the Mind the Gap Model (MGM), an approach for interpretable feature extraction and selection. By placing interpretability criteria directly into the model, we allow for the model to both optimize parameters related to interpretability and to directly report a global set of distinguishable dimensions to assist with further data exploration and hypothesis generation. MGM extracts distinguishing features on real-world datasets of animal features, recipes ingredients, and disease co-occurrence. It also maintains or improves performance when compared to related approaches. We perform a user study with domain experts to show the MGM's ability to help with dataset exploration.
Author Information
Been Kim (Allen Institute of Artificial Intelligence)
Julie A Shah (MIT)
Finale Doshi-Velez (Harvard)
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