Target-specific stance detection on social media, which aims at classifying a textual data instance such as a post or a comment into a stance class of a target issue, has become an emerging opinion mining paradigm of importance. An example application would be to overcome vaccine hesitancy in combating the coronavirus pandemic. However, existing stance detection strategies rely merely on the individual instances which cannot always capture the expressed stance of a given target. In response, we address a new task called conversational stance detection which is to infer the stance towards a given target (e.g., COVID-19 vaccination) when given a data instance and its corresponding conversation thread. To tackle the task, we first propose a benchmarking conversational stance detection (CSD) dataset with annotations of stances and the structures of conversation threads among the instances based on six major social media platforms in Hong Kong. To infer the desired stances from both data instances and conversation threads, we propose a model called Branch-BERT that incorporates contextual information in conversation threads. Extensive experiments on our CSD dataset show that our proposed model outperforms all the baseline models that do not make use of contextual information. Specifically, it improves the F1 score by 10.3% compared with the state-of-the-art method in the SemEval-2016 Task 6 competition. This shows the potential of incorporating rich contextual information on detecting target-specific stances on social media platforms and implies a more practical way to construct future stance detection tasks.
翻译:在社交媒体上检测特定目标的定位,目的是将诸如职位或评论等文本数据实例归类为目标议题的姿态,这已成为一种新出现的重要观点采矿模式。举例而言,应用的目的是克服疫苗在防治冠状病毒大流行病方面的犹豫不决;然而,现有的定位检测战略仅依赖于无法始终反映特定目标的明示立场的个别案例。作为回应,我们处理的是一项新任务,即所谓的对话姿态检测,目的是在提供数据实例和相应的谈话线索时,推断对特定目标(如COVID-19疫苗)的立场(如COVID-19接种)的立场。为了完成这项任务,我们首先建议采用基准对口态检测(CSD)数据进行基准检测(CSD)数据,其中包含基于香港六个主要社会媒体平台的姿态说明和谈话线索结构。为了从数据实例和谈话线索中推导出理想立场,我们建议采用一个模式,即处-BERT,在对话线索中包含背景信息。我们在CSD16上进行的广泛实验表明,我们提议的模型超越了所有基线模型,而没有使用CREM1的定位方法,具体地将这一背景信息与CRE-road 方法进行对比。