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Cluster-Based Evaluation in Fuzzy-Genetic Data Mining

机译:模糊遗传数据挖掘中基于聚类的评估

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摘要

Data mining is commonly used in attempts to induce association rules from transaction data. Most previous studies focused on binary-valued transaction data. Transactions in real-world applications, however, usually consist of quantitative values. In the past, we proposed a fuzzy-genetic data-mining algorithm for extracting both association rules and membership functions from quantitative transactions. It used a combination of large 1-itemsets and membership-function suitability to evaluate the fitness values of chromosomes. The calculation for large 1-itemsets could take a lot of time, especially when the database to be scanned could not totally fed into main memory. In this paper, an enhanced approach, called the cluster-based fuzzy-genetic mining algorithm, is thus proposed to speed up the evaluation process and keep nearly the same quality of solutions as the previous one. It divides the chromosomes in a population into $k$ clusters by the $k$-means clustering approach and evaluates each individual according to both cluster and their own information. Experimental results also show the effectiveness and efficiency of the proposed approach.
机译:数据挖掘通常用于尝试从交易数据中得出关联规则。以前的大多数研究都集中在二值交易数据上。但是,实际应用中的交易通常由定量值组成。过去,我们提出了一种模糊遗传数据挖掘算法,用于从定量交易中提取关联规则和隶属函数。它结合了大型1个项集和隶属函数适用性来评估染色体的适应度值。大型1个项目集的计算可能会花费大量时间,尤其是当要扫描的数据库无法完全馈入主内存时。因此,本文提出了一种增强的方法,称为基于聚类的模糊遗传挖掘算法,以加快评估过程并保持与前一种方法几乎相同的解决方案质量。它通过$ k $ -means聚类方法将种群中的染色体分为$ k $聚类,并根据聚类和自身信息评估每个个体。实验结果还表明了该方法的有效性和效率。

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