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Investigating the Optimal Number of Attributes to Manage Knowledge Performances

机译:研究管理知识绩效的最佳属性数量

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Rules are the most important element in knowledge extraction. The performance or strength of rules will determine how good a model is. Higher accuracy implies that a model is good and vise versa. However, the strength of rules depends on the attributes. The number of attributes in a rule can influence the percentage of accuracy in a model. Most machine learning techniques produce a large number of rules. The consequence is with large number of rules generated, processing time is much longer. This study investigated the performances of rules with different lengths of attribute and identified the optimal number of rule for a good model. The research performed experiments using several data mining techniques. Data of 50 hardware dataset companies which, contains 31 attributes and 400 records was used. Results showed that in terms of number of rules, Genetic Algorithm (GA) produced the highest number of rules followed by Johnson’s Algorithm and Holte’s 1R. The best classifier for extracting rules in this study is VOT (Voting of Object Tracking). In terms of performance of rules, best results comes from rules with 30 attributes, followed by rules with 1 intersection attribute and lastly rules with 3 intersection attributes. Among the three sets of attributes, the set with 3 attributes are considered as the best and three (3) has been identified as the optimal number of attributes.
机译:规则是知识提取中最重要的元素。规则的性能或强度将决定模型的质量。更高的准确性意味着模型是好的,反之亦然。但是,规则的强度取决于属性。规则中的属性数量会影响模型的准确性百分比。大多数机器学习技术都会产生大量规则。结果是生成大量规则,处理时间更长。这项研究调查了具有不同属性长度的规则的性能,并确定了一个好的模型的最佳规则数量。该研究使用多种数据挖掘技术进行了实验。使用了包含31个属性和400条记录的50个硬件数据集公司的数据。结果显示,就规则数量而言,遗传算法(GA)产生的规则数量最多,其次是Johnson算法和Holte 1R。在这项研究中,提取规则的最佳分类器是VOT(对象跟踪的投票)。就规则的性能而言,最好的结果来自具有30个属性的规则,其次是具有1个交集属性的规则,最后是具有3个交集属性的规则。在这三组属性中,具有3个属性的组被认为是最佳,而三(3)个已被识别为最佳属性数。

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