Social media platforms provide a goldmine for mining public opinion on issues of wide societal interest. Opinion mining is a problem that can be operationalised by capturing and aggregating the stance of individual social media posts as supporting, opposing or being neutral towards the issue at hand. While most prior work in stance detection has investigated datasets with limited time coverage, interest in investigating longitudinal datasets has recently increased. Evolving dynamics in linguistic and behavioural patterns observed in new data require in turn adapting stance detection systems to deal with the changes. In this survey paper, we investigate the intersection between computational linguistics and the temporal evolution of human communication in digital media. We perform a critical review in emerging research considering dynamics, exploring different semantic and pragmatic factors that impact linguistic data in general, and stance particularly. We further discuss current directions in capturing stance dynamics in social media. We organise the challenges of dealing with stance dynamics, identify open challenges and discuss future directions in three key dimensions: utterance, context and influence.
翻译:社会媒体平台提供了一个金矿,供公众就广泛的社会利益问题发表看法。 意见采矿是一个问题,可以通过捕捉和综合个别社会媒体职位的立场来运作,即支持、反对或中性对待手头问题。虽然以前大多数立场探测工作都调查了时间有限的数据集,但最近对调查纵向数据集的兴趣有所增加。在新数据中观察到的语言和行为模式的动态变化要求反过来调整立场探测系统,以应对变化。在本调查文件中,我们调查计算语言与数字媒体中人类通信的时间演变之间的交叉点。我们严格审查新出现的研究,考虑动态,探讨影响一般语言数据、特别是立场的不同语义和务实因素。我们进一步讨论当前在社会媒体中捕捉立场动态的趋势。我们组织应对立场动态的挑战,确定公开的挑战,并讨论三个关键方面的未来方向:言论、背景和影响。