论文标题
Damo-NLP在NLPCC-2022任务2:知识增强了语音实体链接的强大NER
DAMO-NLP at NLPCC-2022 Task 2: Knowledge Enhanced Robust NER for Speech Entity Linking
论文作者
论文摘要
链接的语音实体旨在识别和消除语言中命名的实体。常规方法严重遭受了不受限制的语音样式和ASR系统产生的嘈杂笔录。在本文中,我们提出了一种名为“知识增强命名实体识别(KENER)”的新颖方法,该方法的重点是通过在实体识别阶段无痛地纳入适当的知识,从而改善鲁棒性,从而改善实体链接的整体性能。肯纳(Kener)首先检索未提及的句子的候选实体,然后利用实体描述作为额外的信息来帮助识别提及。当输入短或嘈杂时,由密集检索模块检索的候选实体特别有用。此外,我们研究了各种数据采样策略和设计有效的损失功能,以提高识别和歧义阶段中检索实体的质量。最后,将与过滤模块的链接作为最终保障措施应用,从而可以过滤出错误认可的提及。我们的系统在NLPCC-2022共享任务2的轨道1中获得第一名和第2位。
Speech Entity Linking aims to recognize and disambiguate named entities in spoken languages. Conventional methods suffer gravely from the unfettered speech styles and the noisy transcripts generated by ASR systems. In this paper, we propose a novel approach called Knowledge Enhanced Named Entity Recognition (KENER), which focuses on improving robustness through painlessly incorporating proper knowledge in the entity recognition stage and thus improving the overall performance of entity linking. KENER first retrieves candidate entities for a sentence without mentions, and then utilizes the entity descriptions as extra information to help recognize mentions. The candidate entities retrieved by a dense retrieval module are especially useful when the input is short or noisy. Moreover, we investigate various data sampling strategies and design effective loss functions, in order to improve the quality of retrieved entities in both recognition and disambiguation stages. Lastly, a linking with filtering module is applied as the final safeguard, making it possible to filter out wrongly-recognized mentions. Our system achieves 1st place in Track 1 and 2nd place in Track 2 of NLPCC-2022 Shared Task 2.