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基于Tri-BiLSTM-CNN的钻井安全问答系统
引用本文:王兵,郑亚梅,陈茂柯,高凌云.基于Tri-BiLSTM-CNN的钻井安全问答系统[J].西南石油大学学报(自然科学版),2020,42(6):157-164.
作者姓名:王兵  郑亚梅  陈茂柯  高凌云
作者单位:1. 西南石油大学计算机科学学院, 四川 成都 610500;2. 中国石油集团测井有限公司西南分公司, 重庆 渝北 401120
基金项目:国家科技重大专项(2016ZX05020-006)
摘    要:特定领域的FAQ问答系统通常存在以下3个问题:(1)如何有效地对句子进行语义表示;(2)如何有效地进行句子间的语义匹配;(3)领域词汇的分词问题。为解决上述3个问题,提出一种基于Tri-BiLSTM-CNN的深度学习模型。首先,将双向长短期记忆网络和卷积神经网络结合构建网络模型,综合利用了BiLSTM处理序列化数据的优势和CNN捕获局部特征的优势。然后,采用Triplet并列式排列结构进行句子之间的匹配。最后,使用字向量替代词向量,避免了分词错误对模型的影响。在钻井安全领域的真实数据集上进行实验验证,结果表明,Tri-BiLSTM-CNN模型能更好地对句子语义进行向量化表征,显著提升句子相似度计算的准确率,而且效果明显优于CNN和LSTM两种网络结构。将该模型用于钻井安全领域的FAQ问答系统中,有效减少了人工成本,对改善钻井工作的效率和质量具有重要意义和应用价值。

关 键 词:钻井安全  问答系统  双向长短期记忆网络  卷积神经网络  句子相似度计算  
收稿时间:2020-05-12

Question Answering System for Drilling Safety Based on Tri-BiLSTM-CNN
WANG Bing,ZHENG Yamei,CHEN Maoke,GAO Lingyun.Question Answering System for Drilling Safety Based on Tri-BiLSTM-CNN[J].Journal of Southwest Petroleum University(Seience & Technology Edition),2020,42(6):157-164.
Authors:WANG Bing  ZHENG Yamei  CHEN Maoke  GAO Lingyun
Institution:1. School of Computer Science, Southwest Petroleum University, Chengdu, Sichuan 610500, China;2. Southwest Branch of China Petroleum Logging Co. Ltd., Yubei, Chongqing 401120, China
Abstract:The FAQ question answering system in a specific field usually has the following three problems:(1) how to effectively represent sentences semantically; (2) how to effectively match sentences semantically; (3) how to segment domain words. To solve the above three problems, a deep learning model based on Triplet BiLSTM-CNN is proposed. Firstly, the bidirectional long-term memory network and convolutional neural network are combined to construct the network model, which makes full use of the advantages of BiSLTM in processing the serialized data and the advantages of CNN in capturing local features. Then, the Triplet parallel structure is used to match sentences. Finally, character vector is used instead of word vector to avoid the influence of segmentation error on the model. The experimental results on real data sets in the field of drilling safety show that Triplet BiLSTM-CNN model can better vectorize sentence semantics and significantly improve the accuracy of sentence similarity calculation, and the effect is significantly better than that of CNN and LSTM. The model is applied to the FAQ question answering system in the field of drilling safety, which can effectively reduce the labor cost, and is of great significance and application value to improve the efficiency and quality of drilling work.
Keywords:drilling safety  question answering system  bidirectional long short term memory  convolution neural network  question similarity computation  
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