Understanding attitudes expressed in texts, also known as stance detection, plays an important role in systems for detecting false information online, be it misinformation (unintentionally false) or disinformation (intentionally false information). Stance detection has been framed in different ways, including (a) as a component of fact-checking, rumour detection, and detecting previously fact-checked claims, or (b) as a task in its own right. While there have been prior efforts to contrast stance detection with other related tasks such as argumentation mining and sentiment analysis, there is no existing survey on examining the relationship between stance detection and mis- and disinformation detection. Here, we aim to bridge this gap by reviewing and analysing existing work in this area, with mis- and disinformation in focus, and discussing lessons learnt and future challenges.
翻译:理解文本中表达的态度,又称 " 姿态探测 ",在网上发现虚假信息的系统中发挥着重要作用,无论是错误信息(无意虚假)还是虚假信息(有意虚假信息),发现方式不同,包括(a) 作为事实检查、谣言检测和发现先前经事实核实的主张的一个组成部分,或(b) 本身是一项任务,虽然以前曾努力将立场检测与辩论采矿和情绪分析等其他相关任务加以对比,但目前没有关于检查姿态检测与错误和虚假信息检测之间关系的调查,我们在这方面的目标是通过审查和分析该领域的现有工作来弥补这一差距,重点突出错误和错误信息,讨论经验教训和未来挑战。