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Combining instance selection methods based on data characterization: An approach to increase their effectiveness

机译:结合基于数据表征的实例选择方法:一种提高其有效性的方法

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摘要

Although there are several proposals in the instance selection field, none of them consistently outperforms the others over a wide range of domains. In recent years many authors have come to the conclusion that data must be characterized in order to apply the most suitable selection criterion in each case. In light of this hypothesis, herein we propose a set of measures to characterize databases. These measures were used in decision rules which, given their values for a database, select from some pre-selected methods, the method, or combination of methods, that is expected to produce the best results. The rules were extracted based on an empirical analysis of the behaviors of several methods on several data sets, then integrated into an algorithm which was experimentally evaluated over 20 databases and with six different learning paradigms. The results were compared with those of five well-known state-of-the-art methods.
机译:尽管在实例选择字段中有一些建议,但在广泛的领域中,没有一个总是比其他建议更好。近年来,许多作者得出的结论是,必须对数据进行特征化,以便在每种情况下应用最合适的选择标准。根据这一假设,本文提出了一套表征数据库的措施。这些度量用于决策规则,这些规则根据数据库的值从某些预选方法,方法或方法组合中选择,这些方法有望产生最佳结果。基于对几种方法在几个数据集上的行为的经验分析,提取规则,然后将其集成到一个算法中,该算法在20个数据库中进行了实验评估,并具有六个不同的学习范例。将结果与五种著名的最新方法进行了比较。

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