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- Title
An Instance- and Label-Based Feature Selection Method in Classification Tasks.
- Authors
Fan, Qingcheng; Liu, Sicong; Zhao, Chunjiang; Li, Shuqin
- Abstract
Feature selection is crucial in classification tasks as it helps to extract relevant information while reducing redundancy. This paper presents a novel method that considers both instance and label correlation. By employing the least squares method, we calculate the linear relationship between each feature and the target variable, resulting in correlation coefficients. Features with high correlation coefficients are selected. Compared to traditional methods, our approach offers two advantages. Firstly, it effectively selects features highly correlated with the target variable from a large feature set, reducing data dimensionality and improving analysis and modeling efficiency. Secondly, our method considers label correlation between features, enhancing the accuracy of selected features and subsequent model performance. Experimental results on three datasets demonstrate the effectiveness of our method in selecting features with high correlation coefficients, leading to superior model performance. Notably, our approach achieves a minimum accuracy improvement of 3.2% for the advanced classifier, lightGBM, surpassing other feature selection methods. In summary, our proposed method, based on instance and label correlation, presents a suitable solution for classification problems.
- Subjects
FEATURE selection; LEAST squares; STATISTICAL correlation
- Publication
Information (2078-2489), 2023, Vol 14, Issue 10, p532
- ISSN
2078-2489
- Publication type
Article
- DOI
10.3390/info14100532