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Classifying Semantic Clause Types: Modeling Context and Genre Characteristics with Recurrent Neural Networks and Attention

机译:分类语义条款类型:用经常性神经网络和注意力建模上下文和类型特征

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Detecting aspectual properties of clauses in the form of situation entity types has been shown to depend on a combination of syntactic-semantic and contextual features. We explore this task in a deep-learning framework, where tuned word representations capture lexical, syntactic and semantic features. We introduce an attention mechanism that pinpoints relevant context not only for the current instance, but also for the larger context. Apart from implicitly capturing task relevant features, the advantage of our neural model is that it avoids the need to reproduce linguistic features for other languages and is thus more easily transferable. We present experiments for English and German that achieve competitive performance. We present a novel take on modeling and exploiting genre information and showcase the adaptation of our system from one language to another.
机译:已经显示了以情况实体类型的形式检测条款的方面属性依赖于语法 - 语义和上下文特征的组合。我们在深度学习框架中探索此任务,其中调谐字表示捕获词汇,句法和语义功能。我们介绍了一个注意机制,不仅针对当前实例查明相关的上下文,还可以针对更大的上下文。除了隐式捕获任务相关特征外,我们的神经模型的优势在于它避免了再现其他语言的语言特征,因此更容易转换。我们提出了竞争性能的英语和德语的实验。我们提出了一种关于建模和利用类型信息的新颖,并展示从一种语言到另一语言的系统的调整。

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