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Twitter Sentiment Analysis using Deep Neural Network

机译:使用深度神经网络的Twitter情绪分析

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People usually try as certainly online opinions about products travel plans or movies. Thus, opinions and sentiment analysis become a daily process. Therefore, the need for text sentiment analysis automation has arisen. It is helpful to access views and sentimental views about specific subject effectively, rather than surfing reviews. In this paper, two main approaches of sentiment analysis are applied, machine learning approaches support vector machine, naive Bayes, decision tree, and K-nearest neighbor and the second approach is the deep neural network, a recurrent neural network using Long Short-Term Memory (LSTM). Also, we used three twitter datasets which are IMDB, Amazon, and Airline to apply two approaches. Also, we illustrate a comparison between different algorithms and the experiment results are shown the recurrent neural network using LSTM that is scored the highest accuracy of 88%, 87%, and 93%.
机译:人们通常会在网上就产品旅行计划或电影发表意见。因此,意见和情感分析成为日常工作。因此,出现了对文本情感分析自动化的需求。有效访问有关特定主题的观点和感性观点而不是浏览评论会有所帮助。在本文中,应用了两种主要的情感分析方法,即机器学习方法,支持向量机,朴素贝叶斯,决策树和K近邻。第二种方法是深度神经网络,这是一种使用长短时递归的递归神经网络。内存(LSTM)。此外,我们使用了三个Twitter数据集(即IMDB,Amazon和Airline)来应用两种方法。此外,我们说明了不同算法之间的比较,实验结果显示了使用LSTM的递归神经网络,其得分最高,准确度为88 \%,87 \%和93 \%。

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