Cultural Algorithm Toolkit for Multi-objective Rule Mining
Sujatha Srinivasan, Sivakumar Ramakrishnan

TL;DR
This paper introduces a Cultural Algorithm Toolkit for Multi-objective Rule Mining that allows flexible experimentation with parameters to improve classification rule discovery in data mining.
Contribution
It proposes a versatile toolkit integrating cultural algorithms for rule mining, enabling parameter control for evolutionary, rule, and agent aspects.
Findings
Effect of different metrics on algorithm performance
Performance evaluation on benchmark datasets
Insights into parameter influence on rule quality
Abstract
Cultural algorithm is a kind of evolutionary algorithm inspired from societal evolution and is composed of a belief space, a population space and a protocol that enables exchange of knowledge between these sources. Knowledge created in the population space is accepted into the belief space while this collective knowledge from these sources is combined to influence the decisions of the individual agents in solving problems. Classification rules comes under descriptive knowledge discovery in data mining and are the most sought out by users since they represent highly comprehensible form of knowledge. The rules have certain properties which make them useful forms of actionable knowledge to users. The rules are evaluated using these properties namely the rule metrics. In the current study a Cultural Algorithm Toolkit for Classification Rule Mining (CAT-CRM) is proposed which allows the user…
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