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Web mining for the mayoral election prediction in Taiwan

机译:网络挖掘在台湾市长选举中的预测

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Purpose - The prediction of pre-election polls is an issue of concern for both politicians and voters. The Taiwan nine-in-one election held in 2014 ended with jaw-dropping results; apparently, traditional polls did not work well. As a remedy to this problem, the purpose of this paper is to utilize the comments posted on social media to analyze civilians' views on the two candidates for mayor of Taichung City, Chih-chiang Hu, and Chia-Lung Lin. Design/methodology/approach - After conducting word segmentation and part-of-speech tagging for the collected reviews, this study constructs the opinion phrase extraction rules for identifying the opinion words associated with the attribute words. Next, this study classifies the attribute words into six municipal governance-related topics and calculates the opinion scores for each candidate. Finally, this study uses correspondence analysis to transform opinion information on the candidates into a graphical display to facilitate the interpretation of voters' views. Findings - The results show that the topics of candidates' backgrounds and transport infrastructure were the two most critical factors for the election prediction. Based on the predication, Lin outscores Hu by 17.74 percent which is close to the real election results. Research limitations/implications - This study proposes new rules for the extraction of Chinese opinion words associated with attribute words. Practical implications - This study applies Chinese semantic analysis to assist in predicting election results and investigating the topics of concern to voters. Originality/value - The proposed opinion phrase extraction rules for Chinese social media, as well as the election forecast process, can provide valuable references for political parties and candidates to plan better nomination and election strategies.
机译:目的-选举前民意测验的预测是政客和选民都关心的问题。 2014年举行的台湾9合1选举以惊人的成绩结束;显然,传统民意调查效果不佳。为了解决这个问题,本文的目的是利用在社交媒体上发布的评论来分析平民对台中市长胡志强和林嘉龙两个候选人的看法。设计/方法/方法-对收集到的评论进行词分割和词性标记后,本研究构建了观点短语提取规则,用于识别与属性词相关的观点词。接下来,本研究将属性词分为六个与市政管理相关的主题,并计算每个候选人的意见分数。最后,本研究使用对应分析将候选人的意见信息转换为图形显示,以方便解释选民的观点。调查结果-结果显示,候选人背景和交通基础设施的主题是选举预测的两个最关键因素。根据预测,林书豪的得分比胡锦涛高17.74%,接近实际选举结果。研究的局限性/意义-本研究提出了提取与属性词相关联的中文意见词的新规则。实际意义-这项研究运用中文语义分析来协助预测选举结果和调查选民关注的话题。原创性/价值-建议的针对中国社交媒体的观点短语提取规则以及选举预测过程,可以为政党和候选人规划更好的提名和选举策略提供有价值的参考。

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