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A genetic-fuzzy mining approach for items with multiple minimum supports

机译:具有多个最小支持量的物品的遗传模糊挖掘方法

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摘要

Data mining is the process of extracting desirable knowledge or interesting patterns from existing databases for specific purposes. Mining association rules from transaction data is most commonly seen among the mining techniques. Most of the previous mining approaches set a single minimum support threshold for all the items and identify the relationships among transactions using binary values. In the past, we proposed a genetic-fuzzy data-mining algorithm for extracting both association rules and membership functions from quantitative transactions under a single minimum support. In real applications, different items may have different criteria to judge their importance. In this paper, we thus propose an algorithm which combines clustering, fuzzy and genetic concepts for extracting reasonable multiple minimum support values, membership functions and fuzzy association rules from quantitative transactions. It first uses the k-means clustering approach to gather similar items into groups. All items in the same cluster are considered to have similar characteristics and are assigned similar values for initializing a better population. Each chromosome is then evaluated by the criteria of requirement satisfaction and suitability of membership functions to estimate its fitness value. Experimental results also show the effectiveness and the efficiency of the proposed approach.
机译:数据挖掘是为特定目的从现有数据库中提取所需知识或有趣模式的过程。从交易数据中挖掘关联规则在挖掘技术中最为常见。大多数以前的挖掘方法都为所有项目设置单个最小支持阈值,并使用二进制值识别交易之间的关系。过去,我们提出了一种遗传模糊数据挖掘算法,用于在单个最小支持下从定量交易中提取关联规则和隶属函数。在实际应用中,不同的项目可能具有不同的标准来判断其重要性。因此,本文提出了一种结合聚类,模糊和遗传概念的算法,用于从定量交易中提取合理的多个最小支持值,隶属函数和模糊关联规则。它首先使用k-means聚类方法将相似的项目收集到组中。同一集群中的所有项目都被认为具有相似的特征,并被赋予相似的值以初始化更好的总体。然后通过需求满足和隶属函数适用性的标准来评估每个染色体,以估计其适合度值。实验结果还表明了该方法的有效性和效率。

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