Learning to Explain: An Information-Theoretic Perspective on Model Interpretation
About
We introduce instancewise feature selection as a methodology for model interpretation. Our method is based on learning a function to extract a subset of features that are most informative for each given example. This feature selector is trained to maximize the mutual information between selected features and the response variable, where the conditional distribution of the response variable given the input is the model to be explained. We develop an efficient variational approximation to the mutual information, and show the effectiveness of our method on a variety of synthetic and real data sets using both quantitative metrics and human evaluation.
Jianbo Chen, Le Song, Martin J. Wainwright, Michael I. Jordan• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Subset Selection | BeerAdvocate AROMA (test) | Test MSE5.75 | 15 | |
| Learning to Explain | BeerAdvocate AROMA (test) | Test MSE5.75 | 12 | |
| Learning to Explain | BeerAdvocate Appearance (test) | Test MSE10.7 | 3 | |
| Learning to Explain | BeerAdvocate Palate (test) | Test MSE6.7 | 3 | |
| Learning to Explain | BeerAdvocate Taste (test) | Test MSE6.92 | 3 |
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