规则归纳的混合蚁群优化与模拟退火

R. Saian, K. Ku-Mahamud
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引用次数: 13

摘要

本文提出了一种蚁群优化与模拟退火相结合的规则归纳法。混合算法是顺序覆盖算法的一部分,顺序覆盖算法是直接从数据中提取分类规则的常用算法。混合算法将最小化蚁群中蚁群发现的低质量规则问题,即蚁群发现的规则不是最优质量规则。模拟退火将用于为每个蚂蚁生成规则。然后将选择一个群体的最佳规则,然后将殖民地中的最佳规则包含在规则集中。有序规则集按照生成的降序排列。使用UCI存储库中的离散和连续数据组成的13个数据集来评估该算法的性能。与Ant-Miner算法相比,在准确性、规则数量和规则中的术语数量方面取得了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Ant Colony Optimization and Simulated Annealing for Rule Induction
This paper proposes a hybrid of ant colony optimization and simulated annealing for rule induction. The hybrid algorithm is part of the sequential covering algorithm which is the commonly used algorithm to extract classification rules directly from data. The hybrid algorithm will minimize the problem of low quality discovered rule by an ant in a colony, where the rule discovered by an ant is not the best quality rule. Simulated Annealing will be used to produce a rule for each ant. The best rule for a colony will then be chosen and later the best rule among the colonies will be included in the rule set. The ordered rule set is arranged in decreasing order of generation. Thirteen data sets which consist of discrete and continuous data from UCI repository were used to evaluate the performance of the proposed algorithm. Promising results were obtained when compared to the Ant-Miner algorithm in terms of accuracy, number of rules and number of terms in the rules.
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