Scalable Interpretability via Polynomials

05/27/2022
by   Abhimanyu Dubey, et al.
0

Generalized Additive Models (GAMs) have quickly become the leading choice for fully-interpretable machine learning. However, unlike uninterpretable methods such as DNNs, they lack expressive power and easy scalability, and are hence not a feasible alternative for real-world tasks. We present a new class of GAMs that use tensor rank decompositions of polynomials to learn powerful, fully-interpretable models. Our approach, titled Scalable Polynomial Additive Models (SPAM) is effortlessly scalable and models all higher-order feature interactions without a combinatorial parameter explosion. SPAM outperforms all current interpretable approaches, and matches DNN/XGBoost performance on a series of real-world benchmarks with up to hundreds of thousands of features. We demonstrate by human subject evaluations that SPAMs are demonstrably more interpretable in practice, and are hence an effortless replacement for DNNs for creating interpretable and high-performance systems suitable for large-scale machine learning.

READ FULL TEXT

page 22

page 23

page 24

page 25

research
09/30/2022

Higher-order Neural Additive Models: An Interpretable Machine Learning Model with Feature Interactions

Black-box models, such as deep neural networks, exhibit superior predict...
research
06/03/2021

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

Deployment of machine learning models in real high-risk settings (e.g. h...
research
05/27/2022

Neural Basis Models for Interpretability

Due to the widespread use of complex machine learning models in real-wor...
research
05/28/2022

Additive Higher-Order Factorization Machines

In the age of big data and interpretable machine learning, approaches ne...
research
02/18/2023

Structural Neural Additive Models: Enhanced Interpretable Machine Learning

Deep neural networks (DNNs) have shown exceptional performances in a wid...
research
05/06/2020

Interpretable Learning-to-Rank with Generalized Additive Models

Interpretability of learning-to-rank models is a crucial yet relatively ...
research
11/11/2022

Rethinking Log Odds: Linear Probability Modelling and Expert Advice in Interpretable Machine Learning

We introduce a family of interpretable machine learning models, with two...

Please sign up or login with your details

Forgot password? Click here to reset