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A Method for Network Topic Attention Forecast Based on Feature Words

机译:基于特征词的网络话题注意力预测方法

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The number of people who obtain information and express ideas via the Internet is increasing rapidly. Research on identifying how much attention paid to a given online topic plays an important role in the field of public opinion management. We propose a method to predict the netizens' attention on a specific online topic in this paper. Firstly, we acquire the historical topics' attention-degrees by analyzing news, reviews and forum posts, then built up the Feature Words Set (FWS) and estimate the popularity of each feature word. After that, we extract the feature words from a new topic and evaluate their contribution to it. Finally, the new attention-degree is computed by comparing the new topic's feature words with those in FWS. We compare our method with the Support Vector Regression model on a data set of manually selected topics. Experimental results show that our approach is acceptable for predicting the attention-degree of online topics.
机译:通过互联网获取信息和表达想法的人数正在迅速增加。识别对给定在线主题的关注程度的研究在舆论管理领域中起着重要作用。本文提出了一种预测网民对特定在线话题关注度的方法。首先,我们通过分析新闻,评论和论坛帖子来获取历史主题的关注度,然后建立特征词集(FWS)并估算每个特征词的受欢迎程度。之后,我们从一个新主题中提取特征词并评估其对特征词的贡献。最后,通过将新主题的特征词与FWS中的特征词进行比较来计算新的关注度。我们在手动选择的主题的数据集上将我们的方法与支持向量回归模型进行了比较。实验结果表明,我们的方法可以预测在线话题的关注度。

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