Tweets are the most concise form of communication in online social media, wherein a single tweet has the potential to make or break the discourse of the conversation. Online hate speech is more accessible than ever, and stifling its propagation is of utmost importance for social media companies and users for congenial communication. Most of the research barring a recent few has focused on classifying an individual tweet regardless of the tweet thread/context leading up to that point. One of the classical approaches to curb hate speech is to adopt a reactive strategy after the hate speech postage. The ex-post facto strategy results in neglecting subtle posts that do not show the potential to instigate hate speech on their own but may portend in the subsequent discussion ensuing in the post's replies. In this paper, we propose DRAGNET++, which aims to predict the intensity of hatred that a tweet can bring in through its reply chain in the future. It uses the semantic and propagating structure of the tweet threads to maximize the contextual information leading up to and the fall of hate intensity at each subsequent tweet. We explore three publicly available Twitter datasets -- Anti-Racism contains the reply tweets of a collection of social media discourse on racist remarks during US political and Covid-19 background; Anti-Social presents a dataset of 40 million tweets amidst the COVID-19 pandemic on anti-social behaviours; and Anti-Asian presents Twitter datasets collated based on anti-Asian behaviours during COVID-19 pandemic. All the curated datasets consist of structural graph information of the Tweet threads. We show that DRAGNET++ outperforms all the state-of-the-art baselines significantly. It beats the best baseline by an 11% margin on the Person correlation coefficient and a decrease of 25% on RMSE for the Anti-Racism dataset with a similar performance on the other two datasets.
翻译:Tweets是在线社交媒体中最简洁的沟通形式, 单次推文有可能做出或打破谈话的谈话。 在线仇恨言论比以往任何时候更容易获得, 并且扼杀其传播对于社交媒体公司和用户的同质沟通至关重要。 大部分最近的研究不包括最近一些研究, 重点是将个人推特分类, 而不考虑导致这一点的推文线/ 文本。 典型的遏制仇恨言论的方法之一是在仇恨言论文章发表后采取被动反应战略。 事后战略的结果是忽略了不显示自己煽动仇恨言论的可能性的微妙文章。 在线仇恨言论比以往任何时候更容易被访问, 并且可能会在随后的该文章的答复中引发。 在本文中,我们提议DRAGNET++, 目的是预测一个推特能够在未来通过回复链带来的仇恨强度。 它使用推特线条的语调和流传结构, 最大限度地利用导致反向上和随后每次推文强度下降的背景信息。 我们探索了三个公开的Twitter数据设置 E- N- DR- 网络在40个亚经的基关系中, 一个政治数据流流数据记录中显示一个基于C- 25个亚内部数据流数据流数据流数据记录的数据。