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Latent Semantic Analysis using a Dennis Coefficient for English Sentiment Classification in a Parallel System

机译:并行系统中使用丹尼斯系数进行英语情感分类的潜在语义分析

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We have already survey many significant approaches for many years because there are many crucial contributions of the sentiment classification which can be applied in everyday life, such as in political activities, commodity production, and commercial activities. We have proposed a novel model using a Latent Semantic Analysis (LSA) and a Dennis Coefficient (DNC) for big data sentiment classification in English. Many LSA vectors (LSAV) have successfully been reformed by using the DNC. We use the DNC and the LSAVs to classify 11,000,000 documents of our testing data set to 5,000,000 documents of our training data set in English. This novel model uses many sentiment lexicons of our basis English sentiment dictionary (bESD). We have tested the proposed model in both a sequential environment and a distributed network system. The results of the sequential system are not as good as that of the parallel environment. We have achieved 88.76% accuracy of the testing data set, and this is better than the accuracies of many previous models of the semantic analysis. Besides, we have also compared the novel model with the previous models, and the experiments and the results of our proposed model are better than that of the previous model. Many different fields can widely use the results of the novel model in many commercial applications and surveys of the sentiment classification.
机译:多年来,我们已经调查了许多重要的方法,因为情感分类有许多重要的贡献,可以应用于日常生活中,例如政治活动,商品生产和商业活动。我们提出了一种使用潜在语义分析(LSA)和丹尼斯系数(DNC)的新颖模型,用于英语大数据情感分类。使用DNC已成功地对许多LSA向量(LSAV)进行了重组。我们使用DNC和LSAV用英语将我们的测试数据集中的11,000,000个文档分类为我们的培训数据集中的5,000,000个文档。这个新颖的模型使用了我们基础英语情感词典(bESD)的许多情感词典。我们已经在顺序环境和分布式网络系统中测试了建议的模型。顺序系统的结果不如并行环境的结果好。我们已经达到了测试数据集的88.76%的准确度,这比许多以前的语义分析模型的准确性要好。此外,我们还将新颖模型与以前的模型进行了比较,我们提出的模型的实验和结果都比以前的模型要好。许多不同领域可以在许多商业应用和情感分类调查中广泛使用新模型的结果。

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