基于元胞自动机的并行模糊频繁项集挖掘

T. T. Tran, T. T. Nguyen, Giang Nguyen, Chau N. Truong
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引用次数: 0

摘要

在数据挖掘的背景下,在可操作的定量数据库中发现频繁的模糊项集是模糊关联规则挖掘的一个重大挑战。如果频繁的模糊项集被检测出来,企业的决策过程和制定战略将更加精确。因为这些数据模型的特点是大量的事务和无限高速的生产。这导致在计算对包含模糊属性的项集的支持时受到限制。因此,使用并行处理技术进行挖掘已成为解决可用性缓慢问题的潜在解决方案。提出了一种基于元胞学习自动机(CLA)的频繁模糊集挖掘技术。结果表明,与iMFFP和NPSFF方法相比,该方法可以在更短的运行时间内完成频繁集挖掘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PARALLEL FUZZY FREQUENT ITEMSET MINING USING CELLULAR AUTOMATA
Finding frequent fuzzy itemsets in operational quantitative databases is a significant challenge for fuzzy association rule mining in the context of data mining. If frequent fuzzy itemsets are detected, the decision-making process and formulating strategies in businesses will be made more precise. Because the characteristic of these data models is a large number of transactions and unlimited and high-speed productions. This leads to limitations in calculating the support for itemsets containing fuzzy attributes. As a result, mining using parallel processing techniques has emerged as a potential solution to the issue of slow availability. This study presents a reinforced technique for mining frequent fuzzy sets based on cellular learning automata (CLA). The results demonstrate that frequent set mining can be accomplished with less running time when the proposed method is compared to iMFFP and NPSFF methods.
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