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Mining generalized positive and negative inter-cross fuzzy multiple-level coherent rules

机译:采矿广泛的正面和负面交叉模糊多级连贯规则

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摘要

Machine-learning and data-mining techniques have been developed to turn data into useful task-oriented knowledge. The algorithms for mining association rules identify relationships among transactions using binary values and find rules at a single-concept level or multiple levels. Mining associations among itemsets only by using support and confidence thresholds at different levels of hierarchical data would not give interesting rules both for binary or quantitative data. This paper proposes a two phase algorithm that mines rare generalized fuzzy coherent rules at inter-cross level hierarchies. During phase-I both positive and negative fuzzy coherent rules are mined and in Phase-II, rare generalized fuzzy coherent rules are extracted from the resultant rules obtained from Phase-I. The algorithm framework works on top down methodology in generating positive and negative fuzzy coherent rules and mining rare generalized rules from it. Experiments conducted using synthetic dataset show the performance of the proposed algorithm in terms of the number of rare generalized rules generated, compared to fuzzy multiple-level association rule mining algorithm.
机译:已经开发了机器学习和数据挖掘技术以将数据转化为有用的任务导向知识。用于挖掘关联规则的算法识别使用二进制值的事务之间的关系,并在单个概念级别或多个级别查找规则。仅通过在不同层次数据的支持和置信阈值下使用ITEMETER之间的挖掘关联将不会为二进制或定量数据提供有趣的规则。本文提出了一种两相算法,在交叉间层次结构中挖掘罕见的广义模糊相干规则。在相位期间,既有正面和负模糊相干规则都会开采,在阶段-I中,从相1获得的所得规则中提取罕见的广泛性模糊相干规则。算法框架在基于顶部和负面模糊连贯规则和挖掘罕见的概率规则的基础上有效。与模糊多级关联规则挖掘算法相比,使用合成数据集进行的实验显示了所提出的算法的性能。

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