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A prediction method of fuzzy association rules

机译:模糊关联规则的预测方法

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摘要

Quantitative attributes are partitioned into several fuzzy sets by c-means algorithm, and search technology of Apriori algorithm is improved to discover interesting fuzzy association rules. The first prediction method of fuzzy association rules is presented, and shortcoming of this prediction method is analyzed. Then, the second prediction method of fuzzy association rules with the variable threshold is presented. In the second prediction method, a little error between prediction value and actual value is allowed. When the error is less than a given threshold, prediction value is regarded as acceptable or rational. The second prediction method can obtain the different prediction precision corresponding to the different error threshold chosen by the users, so it is more flexible and effective that the first prediction method.
机译:通过c-means算法将数量属性划分为多个模糊集,并对Apriori算法的搜索技术进行了改进,以发现有趣的模糊关联规则。提出了模糊关联规则的第一种预测方法,并分析了该预测方法的不足。然后,提出了具有可变阈值的模糊关联规则的第二种预测方法。在第二种预测方法中,允许预测值和实际值之间的误差很小。当误差小于给定阈值时,预测值被认为是可接受的或合理的。第二预测方法可以获得与用户选择的不同错误阈值相对应的不同预测精度,因此比第一预测方法更加灵活有效。

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