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Gain-ratio-Based Selective classifiers for incomplete data

机译:基于增益比的不完整数据的选择性分类器

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By deleting irrelevant or redundant attributes of a data set, selective classifiers can effectively improve the accuracy and efficiency of classification. Though many selective classifiers have been proposed, most of them deal with complete data. Yet actual data sets are often incomplete and have many redundant or irrelevant attributes. So constructing selective classifiers for incomplete data is important. With former work and information gain ratio, a hybrid selective classifier for incomplete data, denoted as GBSD, is presented. Experiment results on twelve benchmark incomplete data sets show that GBSD can effectively improve the accuracy and efficiency of classification while enormously reducing the number of attributes.
机译:通过删除数据集的无关或冗余属性,选择性分类器可以有效提高分类的准确性和效率。虽然已经提出了许多选择性分类器,但其中大多数都处理完整的数据。然而,实际数据集通常不完整,并且具有许多冗余或无关的属性。因此,为不完整数据构建选择性分类是重要的。呈现了以前的工作和信息增益比,提出了一个混合选择性分类器,用于不完整的数据,表示为GBSD。在十二个基准中的实验结果不完整数据集表明,GBSD可以有效地提高分类的准确性和效率,同时极大地减少属性的数量。

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