BERT BiLSTM-Attention Similarity Model

Ahmed Aboutaleb, Ahmed D. Fayed, Dina Ismail, Nada A. GabAllah, Ahmed Rafea, Nourhan Sakr
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引用次数: 3

Abstract

Semantic similarity models are a core part of many of the applications of natural language processing (NLP) that we may be encountering daily, which makes them an important research topic. In particular, Question Answering Systems are one of the important applications that utilize semantic similarity models. This paper aims to propose a new architecture that improves the accuracy of calculating the similarity between questions. We are proposing the BERT BiLSTM-Attention Similarity Model. The model uses BERT as an embedding layer to convert the questions to their respective embeddings, and uses BiLSTM-Attention for feature extraction, giving more weight to important parts in the embeddings. The function of one over the exponential function of the Manhattan distance is used to calculate the semantic similarity score. The model achieves an accuracy of 84.45% in determining whether two questions from the Quora duplicate dataset are similar or not.
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BERT bilstm -注意相似模型
语义相似模型是我们日常可能遇到的许多自然语言处理(NLP)应用的核心部分,这使其成为一个重要的研究课题。特别是,问答系统是利用语义相似模型的重要应用之一。本文旨在提出一种新的结构来提高问题间相似度的计算精度。我们提出BERT bilstm -注意相似性模型。该模型使用BERT作为嵌入层将问题转换为相应的嵌入,并使用BiLSTM-Attention进行特征提取,对嵌入中的重要部分给予更多的权重。用1除以曼哈顿距离的指数函数来计算语义相似度得分。该模型在确定Quora重复数据集中的两个问题是否相似方面达到了84.45%的准确率。
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