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Investigating the Challenges of Temporal Relation Extraction from Clinical Text

机译:调查临床文本时间关系提取的挑战

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Temporal reasoning remains as an unsolved task for Natural Language Processing (NLP), particularly demonstrated in the clinical domain. The complexity of temporal representation in language is evident as results of the 2016 Clinical TempEval challenge indicate: the current state-of-the-art systems perform well in solving mention-identification tasks of event and time expressions but poorly in temporal relation extraction, showing a gap of around 0.25 point below human performance. We explore to adapt the tree-based LSTM-RNN model proposed by Miwa and Bansal (2016) to temporal relation extraction from clinical text, obtaining a five point improvement over the best 2016 Clinical TempEval system and two points over the state-of-the-art. We deliver a deep analysis of the results and discuss the next step towards human-like temporal reasoning.
机译:时间推理仍然是自然语言处理(NLP)的未解决任务,特别是在临床结构域中的证明。作为2016年临床临床临床挑战的结果表明:目前最先进的系统在解决事件和时间表达式的情况下表现良好,但在时间关系提取中表现不佳,表现出良好的临床节目挑战差距约为0.25点以下人类性能。我们探讨了MIWA和Bansal(2016)提出的基于树的LSTM-RNN模型,从临床文本中提取了临床文本的时间关系,从而获得了最佳2016年临床临床节目系统的五点改进,以及两个方面的两点-艺术。我们对结果进行了深入的分析,并讨论了人类般的时间推理的下一步。

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