PDD-SHAP: Fast Approximations for Shapley Values using Functional Decomposition

08/26/2022
by   Arne Gevaert, et al.
4

Because of their strong theoretical properties, Shapley values have become very popular as a way to explain predictions made by black box models. Unfortuately, most existing techniques to compute Shapley values are computationally very expensive. We propose PDD-SHAP, an algorithm that uses an ANOVA-based functional decomposition model to approximate the black-box model being explained. This allows us to calculate Shapley values orders of magnitude faster than existing methods for large datasets, significantly reducing the amortized cost of computing Shapley values when many predictions need to be explained.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/16/2021

mSHAP: SHAP Values for Two-Part Models

Two-part models are important to and used throughout insurance and actua...
research
07/15/2021

FastSHAP: Real-Time Shapley Value Estimation

Shapley values are widely used to explain black-box models, but they are...
research
03/10/2023

Statistical optimization of expensive multi-response black-box functions

Assume that a set of P process parameters p_i, i=1,…,P, determines the o...
research
08/26/2019

Shapley Decomposition of R-Squared in Machine Learning Models

In this paper we introduce a metric aimed at helping machine learning pr...
research
09/05/2023

Computing SHAP Efficiently Using Model Structure Information

SHAP (SHapley Additive exPlanations) has become a popular method to attr...
research
05/31/2022

Variable importance without impossible data

The most popular methods for measuring importance of the variables in a ...
research
06/06/2020

Combinatorial Black-Box Optimization with Expert Advice

We consider the problem of black-box function optimization over the bool...

Please sign up or login with your details

Forgot password? Click here to reset