Twitter Stance Detection — A Subjectivity and Sentiment Polarity Inspired Two-Phase Approach

K. Dey, Ritvik Shrivastava, Saroj Kaushik
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引用次数: 29

Abstract

The problem of stance detection from Twitter tweets, has recently gained significant research attention. This paper addresses the problem of detecting the stance of given tweets, with respect to given topics, from user-generated text (tweets). We use the SemEval 2016 stance detection task dataset. The labels comprise of positive, negative and neutral stances, with respect to given topics. We develop a two-phase feature-driven model. First, the tweets are classified as neutral vs. non-neutral. Next, non-neutral tweets are classified as positive vs. negative. The first phase of our work draws inspiration from the subjectivity classification and the second phase from the sentiment classification literature. We propose the use of two novel features, which along with our streamlined approach, plays a key role deriving the strong results that we obtain. We use traditional support vector machine (SVM) based machine learning. Our system (F-score: 74.44 for SemEval 2016 Task A and 61.57 for Task B) significantly outperforms the state of the art (F-score: 68.98 for Task A and 56.28 for Task B). While the performance of the system on Task A shows the effectiveness of our model for targets on which the model was trained upon, the performance of the system on Task B shows the generalization that our model achieves. The stance detection problem in Twitter is applicable for user opinion mining related applications and other social influence and information flow modeling applications, in real life.
推特姿态检测——主观性和情感极性启发的两阶段方法
从Twitter推文中检测姿态的问题最近得到了重要的研究关注。本文解决了从用户生成文本(tweet)中检测给定tweet相对于给定主题的立场的问题。我们使用SemEval 2016姿态检测任务数据集。标签包括积极,消极和中立的立场,相对于给定的主题。我们开发了一个两阶段的特征驱动模型。首先,推文被分为中立和非中立两类。接下来,非中立的推文被分为积极和消极两类。第一阶段的工作灵感来源于主观性分类,第二阶段的工作灵感来源于情感分类文献。我们建议使用两个新的特征,它们与我们的简化方法一起,在得出我们获得的强有力的结果中起着关键作用。我们使用传统的基于支持向量机(SVM)的机器学习。我们的系统(SemEval 2016 Task A的f分为74.44分,Task B的f分为61.57分)明显优于目前的技术水平(Task A的f分为68.98分,Task B的f分为56.28分)。虽然系统在Task A上的表现显示了我们的模型对模型所训练的目标的有效性,但系统在Task B上的表现显示了我们的模型所实现的泛化。Twitter中的姿态检测问题适用于现实生活中的用户意见挖掘相关应用以及其他社会影响和信息流建模应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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