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Accuracy Improvement of Automatic Text Classification Based on Feature Transformation and Multi-classifier Combination

机译:基于特征转换和多分类组合的自动文本分类的准确性改进

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In this paper, we describe a comparative study on techniques of feature transformation and classification to improve the accuracy of automatic text classification. The normalization to the relative word frequency, the principal component analysis (K-L transformation) and the power transformation were applied to the feature vectors, which were classified by the Euclidean distance, the linear discriminant function, the projection distance, the modified projection distance and the SVM. In order to improve the classification accuracy, the multi-classifier combination by majority vote was employed.
机译:在本文中,我们描述了特征转换和分类技术的比较研究,以提高自动文本分类的准确性。 对相对字频率的归一化,主成分分析(KL变换)和功率变换应用于特征向量,该特征向量被欧几里德距离,线性判别函数,投影距离,改进的投影距离和所述 SVM。 为了提高分类准确性,采用多数票的多分类器组合。

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