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CATENA: CAusal and TEmporal relation extraction from NAtural language texts

机译:CATENA:从自然语言文本中提取因果关系和时态关系

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We present CATENA, a sieve-based system to perform temporal and causal relation extraction and classification from English texts, exploiting the interaction between the temporal and the causal model. We evaluate the performance of each sieve, showing that the rule-based, the machine-leamed and the reasoning components all contribute to achieving state-of-the-art performance on TempEval-3 and TimeBank-Dense data. Although causal relations are much sparser than temporal ones, the architecture and the selected features are mostly suitable to serve both tasks. The effects of the interaction between the temporal and the causal components, although limited, yield promising results and confirm the tight connection between the temporal and the causal dimension of texts.
机译:我们介绍了CATENA,这是一个基于筛子的系统,可以利用时态和因果模型之间的相互作用,从英文文本中进行时态和因果关系的提取和分类。我们评估每个筛子的性能,表明基于规则,机器学习和推理的组件都有助于实现TempEval-3和TimeBank-Dense数据的最新性能。尽管因果关系比时间关系稀疏,但体系结构和选定的特征最适合同时满足这两个任务。时态和因果成分之间的相互作用的影响虽然有限,但却产生了可喜的结果,并证实了文本的时态和因果维度之间的紧密联系。

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