数据挖掘中基于结构化排序方法的特征选择

H. K. Bhuyan, Biswajit Brahma, S. Nyamathulla, S. Mohapatra
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引用次数: 3

摘要

特征选择是处理大量数据的一种有效方法。这些方法中的大多数都偏向于高级特征,以获得正确的分类特征。本文提出了一种针对大容量数据的结构化特征排序(SFR)方法来解决这一挑战。提出了一种基于子空间特征的聚类方法,根据类标签找出基于特征的聚类。基于SFC提供的子空间权值,采用SFR方法对不同的特征簇进行独立排序,然后采用结构化的特征加权方法,将高阶特征作为类标签,对特征进行排序。证监会的方法已经在各种功能上进行了测试。在大容量数据集上,将该方法与六种特征选择方法进行了比较。结果表明,SFR方法优于其他方法。
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Structured Ranking Method-based Feature Selection in Data Mining
Feature selection has been emphasized on an operative approach for dealing with large volume data. The majority of these approaches are skewed into high-ranking features to get well right features towards classification. This paper proposes a structured feature ranking (SFR) approach for large volume data to address this challenge. We present a subspace feature-based clustering approach to find out feature-based cluster as per class labels. The various feature clusters are created ranked for features independently using the SFR approach, based on the subspace weight provided by SFC. Then, for ranking the features, we offer a structured feature weighting method in which the high-rank characteristics are utilized for class labels. SFC's approach has been tested in a variety of features. On a collection of large volume datasets, the proposed SFR approach is compared to six feature selection methods. The results demonstrate that SFR method outperformed than methods.
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