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LIPN-IIMAS at SemEval-2017 Task 1: Subword Embeddings, Attention Recurrent Neural Networks and Cross Word Alignment for Semantic Textual Similarity

机译:LIPN-IIMAS在SemEval-2017上的任务1:子词嵌入,注意力循环神经网络和语义语义相似度的交叉词对齐

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In this paper we report our attempt to use, on the one hand, state-of-the-art neural approaches that are proposed to measure Semantic Textual Similarity (STS). On the other hand, we propose an unsupervised cross-word alignment approach, which is linguistically motivated. The neural approaches proposed herein are divided into two main stages. The first stage deals with constructing neural word embeddings, the components of sentence embeddings. The second stage deals with constructing a semantic similarity function relating pairs of sentence embeddings. Unfortunately our competition results were poor in all tracks, therefore we concentrated our research to improve them for Track 5 (EN-EN).
机译:在本文中,我们向一方面报告我们的尝试使用,即建议衡量语义文本相似性(STS)的最先进的神经方法。另一方面,我们提出了一种无监督的跨文字对准方法,这是语言上的动机。本文提出的神经方法分为两个主要阶段。第一阶段涉及构建神经词嵌入,句子嵌入的组件。第二阶段涉及构建与句子嵌入对对的语义相似性函数。不幸的是,我们的竞争结果在所有轨道上都很差,因此我们专注于我们的研究,以改善他们的赛道5(en-en)。

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