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Sentiment Analysis of YouTube Video Comments Using Deep Neural Networks

机译:深神经网络的YouTube视频评论的情感分析

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Over the years, social networks have become an important vehicle for communication. Many users on YouTube use comments to express opinions or critique a subject. The amount of comments, for famous videos and channels, is huge, which poses the challenge of analysing user opinions efficiently. This article proposes a sentiment analysis model of YouTube video comments, using a deep neural network. We employed an embedding layer to represent input text as a tensor, then we used a pair of convolutional layers to extract features and a fully connected layer to make the classification. The output of the neural network is the sentiment classification among negative, positive or neutral. Two videos were chosen and their comments were classified by our model, by an alternative statistical model and by humans. The human classification was considered to be 100% accurate. The results showed that our model achieves better accuracy than the statistical model, and the classification accuracy is in the range 60%-84%.
机译:多年来,社交网络已成为沟通的重要载体。 YouTube上的许多用户使用评论来表达意见或批评一个主题。着名视频和渠道的评论金额是巨大的,这为有效地分析了用户意见的挑战。本文使用深神经网络提出了YouTube视频评论的情感分析模型。我们使用嵌入层来表示输入文本作为张量,然后我们使用了一对卷积层来提取特征和完全连接的层以进行分类。神经网络的输出是负,正或中性的情绪分类。选择了两个视频,他们的评论由我们的模型分类,通过替代统计模型和人类归类。人类分类被认为是100%准确。结果表明,我们的模型比统计模型实现了更好的准确性,分类精度在60%-84%的范围内。

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