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首页> 外文期刊>International journal of machine learning and cybernetics >A recursive feature retention method for semi-supervised feature selection
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A recursive feature retention method for semi-supervised feature selection

机译:半监督特征选择的递归特征保留方法

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摘要

To deal with semi-supervised feature selection tasks, this paper presents a recursive feature retention (RFR) method based on a neighborhood discriminant index (NDI) method (a supervised feature selection method) and a forward iterative Laplacian score (FILS) method (an unsupervised method), where FILS is designed specially for RFR. The goal of RFR is to determine an optimal feature subset that has not only a high discriminant ability but also a strong ability to maintain the local structure of data. The discriminant ability of a feature is measured by NDI, and the ability of a feature to maintain the local structure of data is described by FILS. RFR compromises these two scores to give a balanced score for a feature. RFR iteratively selects a feature with the smallest balanced score and moves it into the current optimal feature subset. This paper also shows theoretical analysis to speed up iterations. Extensive experiments are conducted on toy and real-world data sets. Experimental results confirm that RFR can achieve a better performance compared with the state-of-the-art semi-supervised methods.
机译:要处理半监控特征选择任务,本文提出了一种基于邻域判别指数(NDI)方法(监督特征选择方法)和前向迭代拉普拉斯分数(FILS)方法的递归特征保留(RFR)方法(一个未经监督的方法),其中FILS专为RFR而设计。 RFR的目标是确定不仅具有高判别能力的最佳特征子集,而且具有维护局部数据结构的强大能力。通过NDI测量特征的判别能力,并且FILS描述了要维持数据的局部结构的特征的能力。 RFR妥协了这两个分数,以给出一个特征的平衡分数。 RFR迭代地选择具有最小平衡分数的功能,并将其移动到当前的最佳特征子集中。本文还展示了加快迭代的理论分析。广泛的实验是在玩具和现实世界数据集上进行的。实验结果证实,与最先进的半监督方法相比,RFR可以实现更好的性能。

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