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Weakly Supervised Joint Entity-Sentiment-Issue Model for Political Opinion Mining

机译:政治意见采矿的弱监督联合实体 - 情绪问题模型

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Microblogging has become an important source of opinion-rich data that can be used for understanding public opinion. In this paper, we propose a novel weakly supervised probabilistic topic model, Joint Entity-Sentiment-Issue (JESI), for political opinion mining from Twitter. The model automatically identifies the target entity of the expressed sentiment, the issues discussed and the sentiment towards the issues and entity simultaneously. Unlike other machine learning approaches to opinion mining which require labelled data for training classifiers, JESI requires only a small number of seed words for each entity and issue, and a sentiment lexicon. The model is evaluated on a dataset of tweets collected during the 2016 Australian Federal Election. Experimental results demonstrate that JESI outperforms baselines for sentiment, entity and issue classification, especially achieving higher recall and F1.
机译:微博已成为可用于理解公众意见的重要数据的重要性。在本文中,我们提出了一种新的弱势监督概率主题模型,联合实体情绪问题(JESI),用于从Twitter挖掘的政治意见。该模型自动识别表达情绪的目标实体,同时讨论的问题和对问题和实体的情绪。与其他机器学习方法不同,这些方法需要标记为培训分类器的标记数据,JESI只需要每个实体和问题的少数种子词,以及一个情绪词典。该模型在2016年澳大利亚联邦选举中收集的推文的数据集进行了评估。实验结果表明,JESI优于情绪,实体和发布分类,特别是实现更高的召回和F1的基线。

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