一种在线流媒体特征选择的选举策略

Amin Hashemi, Mohammad-Reza Pajoohan, M. B. Dowlatshahi
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引用次数: 0

摘要

特征选择是数据预处理中最有效的方法之一。在许多现实世界的应用程序中,例如社交网络,获得所有功能甚至等待它们都是不可能的。因此,通常的特征选择方法不适用于此类数据。因此,提供在线流特征选择方法来处理从一开始就无法获得整个特征空间的此类数据。另一方面,集成方法最近表明它们可以有效地提高特征选择方法的性能。本文提出了一种基于多过滤器排序器集成的新方法,以提高在线流媒体空间中特征选择方法的性能。该集成过程被建模为一个选举过程,并使用加权Borda计数(WBC)方法对选票进行聚合。该方法的分类性能优于其他实验方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An election strategy for online streaming feature selection
Feature selection (FS) is one of the most effective methods in data preprocessing. In many real-world applications, such as social networks, getting all the features or even waiting for them is impossible. Hence, common feature selection methods are not applicable to such data. Thus, online streaming feature selection methods are provided to deal with such data where the entire feature space is not available from the beginning. On the other hand, ensemble methods have recently shown that they can effectively improve the performance of feature selection methods. In this paper, a new method is proposed based on the ensemble of multiple filter rankers to enhance the performance of feature selection methods in an online streaming space. This ensemble process is modeled as an election process, and the Weighted Borda Count (WBC) method is utilized to aggregate the votes. The proposed method showed better classification performance than the experiments' other methods.
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