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Semantic Frame Labeling with Target-based Neural Model

机译:基于目标的神经模型的语义框架标记

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This paper explores the automatic learning of distributed representations of the target's context for semantic frame labeling with target-based neural model. We constrain the whole sentence as the model's input without feature extraction from the sentence. This is different from many previous works in which local feature extraction of the targets is widely used. This constraint makes the task harder, especially with long sentences, but also makes our model easily applicable to a range of resources and other similar tasks. We evaluate our model on several resources and get the state-of-the-art result on subtask 2 of SemEval 2015 task 15. Finally, we extend the task to word-sense disambiguation task and we also achieve a strong result in comparison to state-of-the-art work.
机译:本文探讨了基于目标的神经模型对语义框架标记的目标上下文的分布式表示的自动学习。我们将整个句子限制为模型的输入,而无需从句子中提取特征。这与许多先前的工作不同,在先前的工作中,广泛使用目标的局部特征提取。这种约束使任务更加困难,尤其是句子较长的情况下,但同时也使我们的模型可以轻松地应用于一系列资源和其他类似任务。我们在几种资源上评估我们的模型,并在SemEval 2015任务15的子任务2中获得了最新的结果。最后,我们将该任务扩展到单词义消歧任务,并且与state相比,我们也取得了不错的成绩最先进的工作。

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