Fast and More Powerful Selective Inference for Sparse High-order Interaction Model
Das, Diptesh, Duy, Vo Nguyen Le, Hanada, Hiroyuki, Tsuda, Koji, Takeuchi, Ichiro
Automated high-stake decision-making such as medical diagnosis requires models with high interpretability and reliability. As one of the interpretable and reliable models with good prediction ability, we consider Sparse High-order Interaction Model (SHIM) in this study. However, finding statistically significant high-order interactions is challenging due to the intrinsic high dimensionality of the combinatorial effects. Another problem in data-driven modeling is the effect of "cherry-picking" a.k.a. selection bias. Our main contribution is to extend the recently developed parametric programming approach for selective inference to high-order interaction models. Exhaustive search over the cherry tree (all possible interactions) can be daunting and impractical even for a small-sized problem. We introduced an efficient pruning strategy and demonstrated the computational efficiency and statistical power of the proposed method using both synthetic and real data.
Jun-9-2021
- Country:
- North America > United States (0.46)
- Genre:
- Research Report
- Experimental Study (0.69)
- New Finding (0.48)
- Research Report
- Industry:
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