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Product Related Information Sentiment-Content Analysis Based on Convolutional Neural Networks for the Chinese Micro-Blog

机译:基于卷积神经网络的中国微博产品相关信息情感内容分析

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Sentiment analysis is a hot topic in natural language processing. People usually concern the sentiments in a specific domain. By focusing on specific domain such as micro-blogs of a specific product, we can discover the sentiment distribution of customs about this product. Unlike traditional sentiment analysis which divides the sentiments into positiveegative and neutral categories, we divided the product related information into three types: positiveegative about the product and product advertisements. The reason for this kind division is that ordinary positive category in sentiment analysis may contains product advertisements which do not reflect custom's opinions. This phenomenon is very common in micro-blog where there are lots of product promotions and propagandas. In this paper, we propose a sentiment analysis method based on Convolutional Neural Network (CNN). The proposed CNN model combines Chinese word-level embedding and Chinese character-level embedding as input features of the sentiment analysis. In the experiment, Chinese micro-blog datasets of weight loss products and mobile phones are used to show that our sentiment analysis method has better performance than the lexicon based method.
机译:情感分析是自然语言处理中的热门话题。人们通常会关注特定领域的情绪。通过关注特定领域(例如特定产品的微博客),我们可以发现有关此产品的习俗的情绪分布。与传统的情感分析不同,传统的情感分析将情感分为积极/消极和中立类别,我们将与产品相关的信息分为三种类型:关于产品和产品广告的积极/消极。这种划分的原因是,情绪分析中的普通肯定类别可能包含不反映客户意见的产品广告。这种现象在微博中非常普遍,那里有很多产品促销和宣传。本文提出了一种基于卷积神经网络的情感分析方法。提出的CNN模型结合了汉字级嵌入和汉字级嵌入作为情感分析的输入特征。在实验中,使用中国减肥产品和手机的微博数据集显示,我们的情感分析方法比基于词典的方法具有更好的性能。

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