Javascript must be enabled to continue!
Ensembles of Random SHAPs
View through CrossRef
The ensemble-based modifications of the well-known SHapley Additive exPlanations (SHAP) method for the local explanation of a black-box model are proposed. The modifications aim to simplify the SHAP which is computationally expensive when there is a large number of features. The main idea behind the proposed modifications is to approximate the SHAP by an ensemble of SHAPs with a smaller number of features. According to the first modification, called the ER-SHAP, several features are randomly selected many times from the feature set, and the Shapley values for the features are computed by means of “small” SHAPs. The explanation results are averaged to obtain the final Shapley values. According to the second modification, called the ERW-SHAP, several points are generated around the explained instance for diversity purposes, and the results of their explanation are combined with weights depending on the distances between the points and the explained instance. The third modification, called the ER-SHAP-RF, uses the random forest for a preliminary explanation of the instances and determines a feature probability distribution which is applied to the selection of the features in the ensemble-based procedure of the ER-SHAP. Many numerical experiments illustrating the proposed modifications demonstrate their efficiency and properties for a local explanation.
Title: Ensembles of Random SHAPs
Description:
The ensemble-based modifications of the well-known SHapley Additive exPlanations (SHAP) method for the local explanation of a black-box model are proposed.
The modifications aim to simplify the SHAP which is computationally expensive when there is a large number of features.
The main idea behind the proposed modifications is to approximate the SHAP by an ensemble of SHAPs with a smaller number of features.
According to the first modification, called the ER-SHAP, several features are randomly selected many times from the feature set, and the Shapley values for the features are computed by means of “small” SHAPs.
The explanation results are averaged to obtain the final Shapley values.
According to the second modification, called the ERW-SHAP, several points are generated around the explained instance for diversity purposes, and the results of their explanation are combined with weights depending on the distances between the points and the explained instance.
The third modification, called the ER-SHAP-RF, uses the random forest for a preliminary explanation of the instances and determines a feature probability distribution which is applied to the selection of the features in the ensemble-based procedure of the ER-SHAP.
Many numerical experiments illustrating the proposed modifications demonstrate their efficiency and properties for a local explanation.
Related Results
The Use of Artificial-Intelligence-Based Ensembles for Intrusion Detection: A Review
The Use of Artificial-Intelligence-Based Ensembles for Intrusion Detection: A Review
In supervised learning-based classification, ensembles have been successfully employed to different application domains. In the literature, many researchers have proposed different...
Integrative conformational ensembles of Sic1 using different initial pools and optimization methods
Integrative conformational ensembles of Sic1 using different initial pools and optimization methods
ABSTRACTIntrinsically disordered proteins play key roles in regulatory protein interactions, but their detailed structural characterization remains challenging. Here we calculate a...
Microscopic Foundations of Thermodynamics and Generalized Statistical Ensembles
Microscopic Foundations of Thermodynamics and Generalized Statistical Ensembles
This dissertation aims at addressing two important theoretical questions which are still debated in the statistical mechanical community. The first question has to do with the outs...
Bringing ensembles to the heart of Met Office operations
Bringing ensembles to the heart of Met Office operations
<p>&#8220;2022 marks the 30<sup>th</sup> anniversary of the first operational ensemble forecasts at ECMWF and NCEP (USA), and also...
Using large ensembles to investigate the impacts of climate extremes
Using large ensembles to investigate the impacts of climate extremes
<p>Large ensembles are key to investigate climate and weather extremes and their impacts, as they, by definition, rarely occur. One field that relies heavily on them ...
Rank Histograms of Stratified Monte Carlo Ensembles
Rank Histograms of Stratified Monte Carlo Ensembles
AbstractThe application of forecast ensembles to probabilistic weather prediction has spurred considerable interest in their evaluation. Such ensembles are commonly interpreted as ...
CORRELATION FUNCTIONS AND QUASI-DETERMINISTIC SIGNALS
CORRELATION FUNCTIONS AND QUASI-DETERMINISTIC SIGNALS
When processing data on random functions, they are most often limited to constructing an empirical correlation function. In this regard, the problem arises of constructing a random...
Climate change attribution with large ensembles
Climate change attribution with large ensembles
<p>The large sample sizes from single-model large ensembles are beneficial for a robust attribution of climate changes to anthropogenic forcing. This presentation wil...

