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A Text Sentimental Analysis Method Based on Dimension Reduction of CHI Multi-gram Features Mixture

机译:基于CHI多克特征混合物尺寸减少的文本感伤分析方法

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摘要

To address the problem of increasing computation caused by high-dimensional features, we propose a method for text sentimental analysis based on dimension reduction of Chi-square statistic (CHI) multi-grams mixture in this paper. It can not only effectively improve the effect of feature extraction, but also precisely determine the feature dimensions, which is different from the traditional methods using experience value. Experimental results show that the proposed method outperforms the exiting methods and the highest accuracy rate reached 94.85%. Moreover, it is proved that our method is universal for the subjective and objective classification as well as the different length of text classification reviews.
机译:为了解决高维特征引起的计算问题,我们提出了一种基于本文基方统计(CHI)多克混合物的尺寸减少的文本感伤分析方法。它不仅可以有效地提高特征提取的效果,而且精确地确定了特征尺寸,这与使用经验值的传统方法不同。实验结果表明,该方法优于退出方法,最高精度率达到94.85%。此外,证明我们的方法是主观和客观分类的普遍,以及不同的文本分类审查。

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