Publication
Title
MoMAC : multi-objective optimization to combine multiple association rules into an interpretable classification
Author
Abstract
A crucial characteristic of machine learning models in various domains (such as medical diagnosis, financial analysis, or real-time process monitoring) is the interpretability. The interpretation supports humans in understanding the meaning behind every single prediction made by the machine, and enables the user to assess trustworthiness before acting on the predictions. This article presents our work in building an interpretable classification model based on association rule mining and multi-objective optimization. The classification model itself is a rule list, making a single prediction based on multiple rules. The rule list consists of If ... THEN statements that are understandable to humans. We choose these rules from a large set of pre-mined rules according to an interestingness measure which is formulated as a function of basic probabilities related to the rules. We learned the interestingness measure through multi-objective optimization, concentrating on two objectives: the classifier’s size in terms of number of rules and prediction accuracy. The model is called MoMAC, “Multi-Objective optimization to combine Multiple Association rules into an interpretable Classification”. The experimental results on benchmark datasets demonstrate that MoMAC outperforms other existing rule-based classification methods in terms of classification accuracy.
Language
English
Source (journal)
Applied intelligence. - Boston, Mass., 1991, currens
Publication
Boston, Mass. : Kluwer , 2022
ISSN
0924-669X [print]
1573-7497 [online]
DOI
10.1007/S10489-021-02595-W
Volume/pages
52 :3 (2022) , p. 3090-3102
ISI
000668024000003
Full text (Publisher's DOI)
Full text (open access)
Full text (publisher's version - intranet only)
UAntwerpen
Faculty/Department
Research group
Project info
Efficient mining for unexpected patterns in complex biological data.
Publication type
Subject
Affiliation
Publications with a UAntwerp address
External links
Web of Science
Record
Identifier
Creation 12.07.2021
Last edited 17.12.2024
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