论文标题
语表示方法的研究
A Study of Slang Representation Methods
论文作者
论文摘要
考虑到在一分钟之前在线创建的大量内容,迫切需要lang langaine自动工具来促进社会善良,并协助决策者和主持人限制进攻性语言,虐待和仇恨言论的传播。尽管大型语言模型的成功和语词典的自发出现,但目前尚不清楚他们的组合在对下游社会良好任务的s语理解方面有多远。在本文中,我们提供了一个框架,以研究代表性学习模型和知识资源的不同组合,以依靠lang语理解的各种下游任务。我们的实验表明,在社交媒体数据上已预先培训的模型的优势,而字典的影响仅对静态单词嵌入是积极的。我们的错误分析确定了语表示学习的核心挑战,包括播出的单词,多义,差异和注释分歧,可以追溯到语的特征作为一种快速发展且高度主观的语言。
Considering the large amount of content created online by the minute, slang-aware automatic tools are critically needed to promote social good, and assist policymakers and moderators in restricting the spread of offensive language, abuse, and hate speech. Despite the success of large language models and the spontaneous emergence of slang dictionaries, it is unclear how far their combination goes in terms of slang understanding for downstream social good tasks. In this paper, we provide a framework to study different combinations of representation learning models and knowledge resources for a variety of downstream tasks that rely on slang understanding. Our experiments show the superiority of models that have been pre-trained on social media data, while the impact of dictionaries is positive only for static word embeddings. Our error analysis identifies core challenges for slang representation learning, including out-of-vocabulary words, polysemy, variance, and annotation disagreements, which can be traced to characteristics of slang as a quickly evolving and highly subjective language.