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A deep neural architecture for sentence semantic matching

机译:句子语义匹配的深度神经结构

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摘要

Sentence semantic matching (SSM) is a fundamental research task in natural language processing. Most existing SSM methods take the advantage of sentence representation learning to generate a single or multi-granularity semantic representation for sentence matching. However, sentence interactions and loss function which are the two key factors for SSM still have not been fully considered. Accordingly, we propose a deep neural network architecture for SSM task with a sentence interactive matching layer and an optimised loss function. Given two input sentences, our model first encodes them to embeddings with an ordinary long short-term memory (LSTM) encoder. Then, the encoded embeddings are handled by an attention layer to find the key and important words in the sentences. Next, sentence interactions are captured with a matching layer to output a matching vector. Finally, based on the matching vector, a fully connected multi-layer perceptron outputs the similarity score. The model also distinguishes the equivocation training instances with an improved optimised loss function. We also systematically evaluate our model on a public Chinese semantic matching corpus, BQ corpus. The results demonstrate that our model outperforms the state-of-the-art methods, i.e., BiMPM, DIIN.
机译:句子语义匹配(SSM)是自然语言处理中的基本研究任务。大多数现有的SSM方法采用句子表示学习的优势,以生成句子匹配的单个或多粒度语义表示。但是,句子交互和损失函数仍未得到完全考虑SSM的两个关键因素。因此,我们提出了一种具有句子交互式匹配层的SSM任务的深度神经网络架构和优化的损失函数。给定两个输入句子,我们的模型首先用普通的长短期内存(LSTM)编码器嵌入它们。然后,编码的嵌入式由注意层处理,以找到句子中的关键和重要词汇。接下来,使用匹配层捕获句子交互以输出匹配的向量。最后,基于匹配向量,完全连接的多层Perceptron输出相似度分数。该模型还将同样的培训实例区分开了改进的优化损耗功能。我们还系统地评估了我们在公共汉语语义匹配语料库中的模型,BQ语料库。结果表明,我们的模型优于最先进的方法,即Bimpm,Diin。

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