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BiLSTM_DPCNN模型在电力客服工单数据分类中的应用
引用本文:李灿,田秀霞,赵波. BiLSTM_DPCNN模型在电力客服工单数据分类中的应用[J]. 计算机系统应用, 2021, 30(2): 243-249. DOI: 10.15888/j.cnki.csa.007557
作者姓名:李灿  田秀霞  赵波
作者单位:上海电力大学计算机科学与技术学院,上海200090;上海电力大学计算机科学与技术学院,上海200090;上海电力大学计算机科学与技术学院,上海200090
基金项目:国家自然科学基金面上项目(61772327); 国家自然科学基金重点项目(61532021)
摘    要:电力客服工单数据以文本形式记录电力用户的需求信息,合理的工单分类方法有利于准确定位用户需求,提升电力系统的运行效率.针对工单数据特征稀疏、依赖性强等问题,本文对基于字符级嵌入的长短时记忆网络(Bidirectional Long Short-Term Memory network,BiLSTM)和卷积神经网络(Conv...

关 键 词:电力客服工单  文本分类  BiLSTM  CNN  Word2Vec
收稿时间:2020-01-07
修稿时间:2020-01-22

Application of BiLSTM_DPCNN Model in Work Order Data Classification for Power Customer Service
LI Can,TIAN Xiu-Xi,ZHAO Bo. Application of BiLSTM_DPCNN Model in Work Order Data Classification for Power Customer Service[J]. Computer Systems& Applications, 2021, 30(2): 243-249. DOI: 10.15888/j.cnki.csa.007557
Authors:LI Can  TIAN Xiu-Xi  ZHAO Bo
Affiliation:College of Computer Science and Technology, Shanghai University of Electric Power, Shanghai 200090, China
Abstract:The power customer service order data records the demand of power users in text. A reasonable work order classification method is helpful to accurately identify the demand of users and improve the operating efficiency of the power system. To solve the problems of sparse feature data and strong dependency of work order data, this study optimizes the structural model that combines character-level embedded Bidirectional Long-Short-Term Memory network (BiLSTM) and Convolution Neural Network (CNN). Firstly, this model obtains the feature representation of text by noise reduction on the term vectors trained by the Word2Vec model. Secondly, it uses the BiLSTM network to recursively learn the time sequence information of the text to extract the feature information of sentences. Finally, those obtained are input into the double-channel pooled CNN for the extraction of local features. The test experiments on the real work order data set of power customer service demonstrate that the model has good accuracy and robustness in the task of classifying work orders of power customer service.
Keywords:work order of power customer service  text categorization  BiLSTM  CNN  Word2Vec
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