Deep Variation Autoencoder with Topic Information for Text Similarity

Zheng Gong, Yujiao Fu, Xiangdong Su, Heng Xu
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Abstract

Representation learning is an essential process in the text similarity task. The methods based on neural variational inference first learn the semantic representation of the texts, then measure the similarity of these texts by calculating the cosine similarity of their representations. However, it is not generally desirable that using the neural network simply to learn semantic representation as it cannot capture the rich semantic information completely. Considering that the similarity of context information reflects the similarity of text pairs in most cases, we integrate the topic information into a stacked variational autoencoder in process of text representation learning. The improved text representations are used in text similarity calculation. Experiment result shows that our approach obtains the state-of-art performance.
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具有主题信息的文本相似度深度变化自动编码器
表征学习是文本相似任务中的一个重要过程。基于神经变分推理的方法首先学习文本的语义表示,然后通过计算文本表示的余弦相似度来度量文本的相似度。然而,由于神经网络不能完全捕获丰富的语义信息,因此通常不希望简单地使用神经网络来学习语义表示。考虑到上下文信息的相似度在大多数情况下反映了文本对的相似度,在文本表示学习过程中,我们将主题信息集成到一个堆叠变分自编码器中。将改进后的文本表示用于文本相似度计算。实验结果表明,该方法获得了最先进的性能。
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