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FA3L at SemEval-2017 Task 3: A ThRee Embeddings Recurrent Neural Network for Question Answering

机译:FA3L在SemEval-2017上的任务3:用于回答问题的ThRee嵌入循环神经网络

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In this paper we present ThReeNN, a model for Community Question Answering, Task 3, of SemEval-2017. The proposed model exploits both syntactic and semantic information to build a single and meaningful embedding space. Using a dependency parser in combination with word embeddings, the model creates sequences of inputs for a Recurrent Neural Network, which are then used for the ranking purposes of the Task. The score obtained on the official test data shows promising results.
机译:在本文中,我们在Semeval-2017的社区问题回答的型号上呈现ThreeNN,这是一个社区问题的典范。该建议的模型利用了句法和语义信息来构建一个单一和有意义的嵌入空间。使用依赖性解析器与Word Embeddings结合使用,该模型会为经常性神经网络创建输入的序列,然后将其用于任务的排名目的。在官方测试数据上获得的分数显示了有希望的结果。

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