CEREX@FIRE-2020:因果关系抽取共享任务概述

Manjira Sinha, Tirthankar Dasgupta, Lipika Dey
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引用次数: 2

摘要

从文本中提取因果关系是自然语言处理(NLP)中的一个重要问题。提取的关系在几个下游分析和预测任务中发挥重要作用,如识别可操作项、回答问题和隔离预测系统的预测变量。从文本文档中整理因果关系也有助于自动构建因果网络,这对推理任务也很有用。提出的CEREX轨道旨在寻找一个合适的模型来自动检测因果句,并从文本提及中提取准确的因果关系和因果连接词。
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CEREX@FIRE-2020: Overview of the Shared Task on Cause-effect Relation Extraction
Extraction of causal relations from text is an important problem in Natural Language Processing (NLP). The extracted relations play important roles in several downstream analytical and predictive tasks like identification of actionable items, question-answering and isolation of predictor variables for a predictive system. Curating causal relations from text documents can also help in automatically building causal networks which are also useful for reasoning tasks. The proposed CEREX track aims to find a suitable model for automatic detection of causal sentences and extraction of the exact cause, effect and the causal connectives from textual mentions.
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