LTRC @ Causal News Corpus 2022:使用适配器提取和识别因果元素

H. Adibhatla, Manish Shrivastava
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引用次数: 1

摘要

因果关系检测和识别的核心是识别句子中的语义和认知联系。在本文中,我们描述了LTRC团队在第五届“从文本中自动提取社会政治事件的挑战和应用”研讨会(CASE 2022)上为因果新闻语料库-事件因果关系共享任务2022所做的努力。共享任务包括两个子任务:1)识别一个句子是否包含因果关系,2)识别与因果关系和信号相对应的文本范围。我们对基于转换器的模型和两个子任务的适配器进行了微调。我们表现最好的模型在子任务1的搁置数据上获得了0.853的二进制F1分数,在子任务2的搁置数据上获得了0.032的宏观F1分数。我们的方法在子任务1中排名第三,在子任务2中排名第四。本文详细介绍了我们的实验、解决方案和分析。
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LTRC @ Causal News Corpus 2022: Extracting and Identifying Causal Elements using Adapters
Causality detection and identification is centered on identifying semantic and cognitive connections in a sentence. In this paper, we describe the effort of team LTRC for Causal News Corpus - Event Causality Shared Task 2022 at the 5th Workshop on Challenges and Applications of Automated Extraction of Socio-political Events from Text (CASE 2022). The shared task consisted of two subtasks: 1) identifying if a sentence contains a causality relation, and 2) identifying spans of text that correspond to cause, effect and signals. We fine-tuned transformer-based models with adapters for both subtasks. Our best-performing models obtained a binary F1 score of 0.853 on held-out data for subtask 1 and a macro F1 score of 0.032 on held-out data for subtask 2. Our approach is ranked third in subtask 1 and fourth in subtask 2. The paper describes our experiments, solutions, and analysis in detail.
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