首页> 外文会议>International Workshop on Semantic Evaluation >SemEval-2020 Task 2: Predicting Multilingual and Cross-Lingual (Graded) Lexical Entailment
【24h】

SemEval-2020 Task 2: Predicting Multilingual and Cross-Lingual (Graded) Lexical Entailment

机译:Semeval-2020任务2:预测多语言和交叉语言(评分)词汇意外

获取原文

摘要

Lexical entailment (LE) is a fundamental asymmetric lexico-semantic relation, supporting the hierarchies in lexical resources (e.g., WordNet. ConceptNet) and applications like natural language inference and taxonomy induction. Multilingual and cross-lingual NLP applications warrant models for LE detection that go beyond language boundaries. As part of SemEval 2020, we carried out a shared task (Task 2) on multilingual and cross-lingual LE. The shared task spans three dimensions: (1) monolingual LE in multiple languages versus cross-lingual LE, (2) binary versus graded LE, and (3) a set of 6 diverse languages (and 15 corresponding language pairs). We offered two different evaluation tracks: (a) distributional (Dist): for unsupervised, fully distributional models that capture LE solely on the basis of unannotated corpora, and (b) Any: for externally informed models, allowed to leverage any resources, including lexico-semantic networks (e.g., WordNet or BabelNet). In the Any track, we received system runs that push state-of-the-art across all languages and language pairs, for both binary LE detection and graded LE prediction.
机译:词汇意外(LE)是一个基本的不对称词汇语义关系,支持词汇资源中的层次结构(例如,Wordnet)和自然语言推断和分类诱导等应用。多语言和交叉语言NLP应用程序的效果用于超出语言边界的LE检测。作为Semeval 2020的一部分,我们在多语言和跨语言LE上进行了共享任务(任务2)。共享任务跨越三维:(1)多种语言的单晶LE与跨语言LE,(2)二进制与等级LE,以及(3)一套6种不同语言(和15个相应的语言对)。我们提供了两种不同的评估轨道:(a)分配(dist):对于无监督,完全分配模型,即仅在未解除的基础上捕获le,(b)任何:对于外部通知的模型,允许利用任何资源,包括词典语义网络(例如,Wordnet或Babelnet)。在任何轨道中,我们收到的系统运行在所有语言和语言对中推动最先进的,用于二进制LE检测和评分LE预测。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号