Interpretable Set Functions
Cotter, Andrew, Gupta, Maya, Jiang, Heinrich, Muller, James, Narayan, Taman, Wang, Serena, Zhu, Tao
We propose learning flexible but interpretable functions that aggregate a variable-length set of permutation-invariant feature vectors to predict a label. We use a deep lattice network model so we can architect the model structure to enhance interpretability, and add monotonicity constraints between inputs-and-outputs. We then use the proposed set function to automate the engineering of dense, interpretable features from sparse categorical features, which we call semantic feature engine. Experiments on real-world data show the achieved accuracy is similar to deep sets or deep neural networks, and is easier to debug and understand.
May-31-2018
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