While there is a large amount of research in the field of Lexical Semantic Change Detection, only few approaches go beyond a standard benchmark evaluation of existing models. In this paper, we propose a shift of focus from change detection to change discovery, i.e., discovering novel word senses over time from the full corpus vocabulary. By heavily fine-tuning a type-based and a token-based approach on recently published German data, we demonstrate that both models can successfully be applied to discover new words undergoing meaning change. Furthermore, we provide an almost fully automated framework for both evaluation and discovery.
翻译:虽然在词汇语义变化探测领域有大量研究,但只有少数方法超越对现有模型的标准基准评估。 在本文中,我们建议把重点从检测变化转向发现变化,即从整个词汇中逐渐发现新词感知。通过对最近公布的德国数据基于类型和象征性的方法进行大量微调,我们证明这两种模型都能够成功地用于发现正在改变的含义的新词。此外,我们提供了几乎完全自动化的评价和发现框架。