SHARQ: Explainability Framework for Association Rules on Relational Data
Abstract
Association rules are an important technique for gaining insights over large relational datasets consisting of tuples of elements (i.e. attribute-value pairs). However, it is difficult to explain the relative importance of data elements with respect to the rules in which they appear. This paper develops a measure of an element's contribution to a set of association rules based on Shapley values, denoted SHARQ (ShApley Rules Quantification). As is the case with many Shapely-based computations, the cost of a naive calculation of the score is exponential in the number of elements. To that end, we present an efficient framework for computing the exact SharQ value of a single element whose running time is practically linear in the number of rules. Going one step further, we develop an efficient multi-element SHARQ algorithm which amortizes the cost of the single element SHARQ calculation over a set of elements. Based on the definition of SHARQ for elements we describe two additional use cases for association rules explainability: rule importance and attribute importance. Extensive experiments over a novel benchmark dataset containing 45 instances of mined rule sets show the effectiveness of our approach.
Cite
@article{arxiv.2412.18522,
title = {SHARQ: Explainability Framework for Association Rules on Relational Data},
author = {Hadar Ben-Efraim and Susan B. Davidson and Amit Somech},
journal= {arXiv preprint arXiv:2412.18522},
year = {2024}
}
Comments
Accepted to SIGMOD, 2025