Derivative-based Shapley value for global sensitivity analysis and machine learning explainability

03/24/2023
by   Hui Duan, et al.
0

We introduce a new Shapley value approach for global sensitivity analysis and machine learning explainability. The method is based on the first-order partial derivatives of the underlying function. The computational complexity of the method is linear in dimension (number of features), as opposed to the exponential complexity of other Shapley value approaches in the literature. Examples from global sensitivity analysis and machine learning are used to compare the method numerically with activity scores, SHAP, and KernelSHAP.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/21/2022

Statistical Aspects of SHAP: Functional ANOVA for Model Interpretation

SHAP is a popular method for measuring variable importance in machine le...
research
02/04/2018

Valuation of Crypto-Currency Mining Operations

Traditionally, the Net Present Value method is used to compare diverging...
research
05/23/2023

Balancing Explainability-Accuracy of Complex Models

Explainability of AI models is an important topic that can have a signif...
research
03/15/2012

Three new sensitivity analysis methods for influence diagrams

Performing sensitivity analysis for influence diagrams using the decisio...
research
05/01/2023

Efficient Sensitivity Analysis for Parametric Robust Markov Chains

We provide a novel method for sensitivity analysis of parametric robust ...
research
05/27/2022

Standalone Neural ODEs with Sensitivity Analysis

This paper presents the Standalone Neural ODE (sNODE), a continuous-dept...
research
11/03/2021

AlphaD3M: Machine Learning Pipeline Synthesis

We introduce AlphaD3M, an automatic machine learning (AutoML) system bas...

Please sign up or login with your details

Forgot password? Click here to reset