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Association rule mining using swarm intelligence and domain ontology

机译:使用群体智能和领域本体的关联规则挖掘

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Association rule mining associates one or more attributes in a dataset to discover hidden and significant relationships between the attributes. The quality of the association rules are strongly limited by the interestingness measures and the number of the rules obtained. This paper intends to propose a technique to reduce the quantity of the rules without compromising the usefulness factor and thereby improves the computational efficiency of rule mining. The proposed framework reduces the number of rules by combining mining and post-mining techniques. Particle swarm optimization is used in the mining process to compute an optimal support and confidence parameters. The collection of strong rules is then obtained using these computed parameters. In the post-mining process, domain ontology is designed to map the database. Domain ontology helps in providing a formal, explicit specification of a shared conceptualization. Based on the user knowledge and the domain ontology, most interesting rules are discovered. A GUI based framework is also designed to assist the users in discovering the rules. Promising results were obtained when experiments were conducted with the Adult dataset of UCI machine learning repository.
机译:关联规则挖掘将数据集中的一个或多个属性关联起来,以发现这些属性之间隐藏的重要关系。关联规则的质量在很大程度上受到兴趣度和获得的规则数量的限制。本文旨在提出一种在不影响有用性的前提下减少规则数量的技术,从而提高规则挖掘的计算效率。所提出的框架通过结合挖掘和后期挖掘技术来减少规则的数量。挖掘过程中使用粒子群优化来计算最佳支持度和置信度参数。然后使用这些计算出的参数获得强规则的集合。在挖掘后的过程中,领域本体被设计为映射数据库。领域本体有助于提供对共享概念化的正式,明确的规范。基于用户知识和领域本体,发现了最有趣的规则。基于GUI的框架还旨在帮助用户发现规则。当使用UCI机器学习存储库的Adult数据集进行实验时,获得了可喜的结果。

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