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A support vector machine mixed with statistical reasoning approach to predict movie success by analyzing public sentiments

机译:一种支持向量机与统计推理方法混合,通过分析公众情绪来预测电影成功

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Wisdom of Crowds is often considered a very powerful tool for predicting anything. In this paper we explore the power of public sentiments on predicting the success of movies. In short, we differentiated between positive and negative comments using Support Vector Machine and then use Statistical Reasoning to predict movie success. We used non linear RBF kernel for our sentiment classifier which achieved better accuracy than the classifiers that use linear kernels in the famous IMDB Movie Review Dataset (89.51% accuracy) and also in the Pang and Lee Movie Review Dataset (86.86% accuracy). Using our system we can predict whether a movie will be successful or not with an accuracy of 90.3%. We also compared our approach with other authors in the literature.
机译:人群的智慧往往被认为是一种非常强大的工具,用于预测任何东西。在本文中,我们探讨了公众情绪的力量,就预测电影成功。简而言之,我们使用支持向量机的正负评论区分开来,然后使用统计推理来预测电影成功。我们为我们的情绪分类器使用了非线性RBF内核,这取得了比在着名的IMDB电影评论数据集(89.51 %精度)中使用线性内核的分类器更好的准确性,并且在庞和李电影评论数据集(86.86 %的准确性) 。使用我们的系统,我们可以预测电影是否成功或没有准确性为90.3 %。我们还将我们的方法与文献中的其他作者进行了比较。

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