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Active Feature Selection Based on a Very Limited Number of Entities

机译:基于非常有限数量的实体的活动功能选择

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In data analysis, the necessary data are not always prepared in a database in advance. If the precision of extracted classification knowledge is not sufficient, gathering additional data is sometimes necessary. Practically, if some critical attributes for the classification are missing from the database, it is very important to identify such missing attributes effectively in order to improve the precision. In this paper, we propose a new method to identify the attributes that will improve the precision of Support Vector Classifiers (SVC) based solely on values of candidate attributes of a very limited number of entities. In experiments, we show the incremental addition of attributes by the proposed method effectively improves the precision of SVC using only a very small number of entities.
机译:在数据分析中,在数据库中并不总是预先在数据库中准备必要的数据。如果提取的分类知识的精度不足,则有时需要收集额外数据。实际上,如果数据库中缺少分类的某些关键属性,则非常重要的是要有效地识别此类丢失的属性以提高精度。在本文中,我们提出了一种新方法来识别完全基于支持载体分类器(SVC)精度的属性,所述属性仅基于非常有限数量的实体的候选属性的值。在实验中,我们通过仅使用非常少量的实体,有效地提高了SVC的精度来展示增量添加属性。

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