Sentiment analysis based on Support Vector Machine and Big Data

Lukas Povoda, Radim Burget, M. Dutta
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引用次数: 23

Abstract

This paper deals with sentiment analysis in text documents, especially text valence detection. The proposed solution is based on Support Vector Machines classifier. This classifier was trained with huge amount of data and complex word combinations were analysed. For this purpose distributed learning on 112 processors was used. Datasets used for training and testing were automatically obtained from real user feedback on products from different web pages (and different product segments). The proposed solution has been evaluated with different languages - English, German, Czech and Spanish. This paper improves accuracy achieved with the Big Data approach about 11%. The best accuracy achieved in this work was 95.31% for recognition of positive and negative text valence. The described learning is fully automatic, can be applied to any language and no complicated preprocessing is needed.
基于支持向量机和大数据的情感分析
本文研究了文本文档中的情感分析,特别是文本价检测。提出了基于支持向量机分类器的解决方案。该分类器训练了大量的数据,并分析了复杂的词组合。为此,在112个处理器上使用分布式学习。用于训练和测试的数据集是自动从来自不同网页(和不同产品细分)的产品的真实用户反馈中获得的。已用英语、德语、捷克语和西班牙语等不同语言对拟议的解决方案进行了评估。本文将大数据方法的准确性提高了约11%。本研究对正负文本效价的识别准确率达到95.31%。所描述的学习是全自动的,可以应用于任何语言,不需要复杂的预处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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