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Full-fledged temporal processing: bridging the gap between deep linguistic processing and temporal extraction

机译:完善的时间处理:弥合深度语言处理和时间提取之间的差距

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The full-fledged processing of temporal information presents specific challenges. These difficulties largely stem from the fact that the temporal meaning conveyed by grammatical means interacts with many extra-linguistic factors (world knowledge, causality, calendar systems, reasoning). This article proposes a novel approach to this problem, based on a hybrid strategy that explores the complementarity of the symbolic and probabilistic methods. A specialized temporal extraction system is combined with a deep linguistic processing grammar. The temporal extraction system extracts eventualities, times and dates mentioned in text, and also temporal relations between them, in line with the tasks of the recent TempEval challenges; and uses machine learning techniques to draw from different sources of information (grammatical and extra-grammatical) even if it is not explicitly known how these combine to produce the final temporal meaning being expressed. In turn, the deep computational grammar delivers richer truth-conditional meaning representations of input sentences, which include a principled representation of temporal information, on which higher level tasks, including reasoning, can be based. These deep semantic representations are extended and improved according to the output of the aforementioned temporal extraction module. The prototype implemented shows performance results that increase the quality of the temporal meaning representations and are better than the performance of each of the two components in isolation.
机译:对时间信息的全面处理提出了特定的挑战。这些困难主要源于以下事实,即通过语法手段传达的时间意义与许多额外的语言因素(世界知识,因果关系,日历系统,推理)相互作用。本文提出了一种新的方法来解决此问题,它基于一种混合策略,探讨了符号方法和概率方法的互补性。专门的时间提取系统与深层的语言处理语法相结合。时间提取系统根据最近的TempEval挑战的任务提取文本中提到的事件,时间和日期,以及它们之间的时间关系;并且使用机器学习技术从不同的信息来源(语法的和语法外的)中汲取信息,即使尚不清楚这些信息是如何结合起来以产生最终的时间含义的。反过来,深度计算语法则提供了更丰富的输入语句的真值条件表示,其中包括时间信息的原则性表示,包括推理在内的更高级别的任务可基于该表示。这些深层语义表示根据前述时间提取模块的输出得到扩展和改进。所实现的原型显示的性能结果提高了时间含义表示的质量,并且优于孤立地两个组件中每个组件的性能。

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