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NODE-GAM: Neural Generalized Additive Model for Interpretable Deep Learning

About

Deployment of machine learning models in real high-risk settings (e.g. healthcare) often depends not only on the model's accuracy but also on its fairness, robustness, and interpretability. Generalized Additive Models (GAMs) are a class of interpretable models with a long history of use in these high-risk domains, but they lack desirable features of deep learning such as differentiability and scalability. In this work, we propose a neural GAM (NODE-GAM) and neural GA$^2$M (NODE-GA$^2$M) that scale well and perform better than other GAMs on large datasets, while remaining interpretable compared to other ensemble and deep learning models. We demonstrate that our models find interesting patterns in the data. Lastly, we show that we improve model accuracy via self-supervised pre-training, an improvement that is not possible for non-differentiable GAMs.

Chun-Hao Chang, Rich Caruana, Anna Goldenberg• 2021

Related benchmarks

TaskDatasetResultRank
ClassificationCredit
ROCAUC98.6
50
RegressionHousing
RMSE0.476
26
RegressionYear
MSE79.57
25
Binary ClassificationMIMIC 2
AUC0.846
25
ClassificationBank
Accuracy90.3
25
ClassificationHELOC
Mean Accuracy71.5
20
Binary ClassificationIncome
AUC0.927
19
ClassificationCOMPAS
Accuracy66.7
15
RegressionBike Sharing 5-fold CV
RMSE54.47
14
ClassificationMIMIC-III
AUC82.2
14
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