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A Joint Model for Sentence Semantic Similarity Learning

机译:句子语义相似度学习的联合模型

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Sentence similarity is a fundamental task to measure the degree of the likelihood between two sentences. It plays an important role in both NLP and IR communities. The current sentence semantic similarity measurements can be divided into two categories: the model based on feature engineering and the model based on deep learning. These two categories all have their own advantages and disadvantages. The feature captured based on deep learning may not get the deep meaning of the sentence. And the feature exacted based on feature engineering may not be comprehensive. The algorithm proposed recently usually use one of these two models. In this paper, we proposed a new model that combine the deep learning model and the feature engineering model together. Our model enables two methods to complement each other, making the feature extraction more comprehensive: not only take the global semantic information into account, but also further refine the semantic information at the word level. The experiment shows that our model performs better than models only use one category.
机译:句子相似度是衡量两个句子之间的似然程度的一项基本任务。它在NLP和IR社区中都扮演着重要角色。当前句子的语义相似度度量可以分为两类:基于特征工程的模型和基于深度学习的模型。这两类都有各自的优点和缺点。基于深度学习捕获的特征可能无法获得句子的深层含义。而且,基于要素工程精确化的要素可能并不全面。最近提出的算法通常使用这两个模型之一。在本文中,我们提出了一种将深度学习模型和特征工程模型结合在一起的新模型。我们的模型使两种方法可以相互补充,从而使特征提取更加全面:不仅考虑了全局语义信息,而且还在单词级别进一步完善了语义信息。实验表明,与仅使用一个类别的模型相比,我们的模型性能更好。

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