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HCTI at SemEval-2017 Task 1: Use convolutional neural network to evaluate Semantic Textual Similarity

机译:HCTI在SemEval-2017上的任务1:使用卷积神经网络评估语义文本相似度

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This paper describes our convolutional neural network (CNN) system for the Semantic Textual Similarity (STS) task. We calculated semantic similarity score between two sentences by comparing their semantic vectors. We generated a semantic vector by max pooling over every dimension of all word vectors in a sentence. There are two key design tricks used by our system. One is that we trained a CNN to transfer GloVe word vectors to a more proper form for the STS task before pooling. Another is that we trained a fully-connected neural network (FCNN) to transfer the difference of two semantic vectors to the probability distribution over similarity scores. All hyperparame-ters were empirically tuned. In spite of the simplicity of our neural network system, we achieved a good accuracy and ranked 3rd on primary track of SemEval 2017.
机译:本文介绍了用于语义文本相似度(STS)任务的卷积神经网络(CNN)系统。通过比较两个句子的语义向量,我们计算了两个句子之间的语义相似性评分。我们通过最大程度地合并句子中所有单词向量的每个维度来生成语义向量。我们的系统使用了两个关键的设计技巧。一种是我们训练了CNN,以便在合并之前将GloVe字向量转换为STS任务的更合适形式。另一个是我们训练了一个全连接神经网络(FCNN),将两个语义向量的差异转移到相似性分数上的概率分布。所有的超参数都根据经验进行了调整。尽管我们的神经网络系统简单易行,但我们仍取得了良好的准确性,并在SemEval 2017的主要赛道上排名第三。

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