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Study on Category Classification of Conversation Document in Psychological Counseling with Machine Learning

机译:机器学习心理咨询中会话文档的类别分类研究

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The beginner counselors have difficulty doing to turns interests for the cognitive characteristic and the internal problems by the client, and are using frequency closed-ended question to confirm the interpretation created in ones mind for the client. Therefore, there is the opportunity for education and training which called the supervision to improve the counseling skill of beginner counselor by expert counselors. However, these documents of the verbatim record in the counseling used in the supervision are large-scale and complex, the expert counselors are very difficult to extract the characteristics and situation of the conversation. As appropriate method to visualize each reaction of the client for each question by beginner counselor, we have developed a system for visualizing the flow of conversation in counseling. However, the expert counselor as the system user requires to correct the initial classification result manually, and the work burden is large, because the accuracy of the category classification of conversation document is very low in the current system. To improve this problem, we have implemented on the category classification method for text data of conversation document with SVM (Support Vector Machine) as machine learning technique. In addition, we have compared and evaluated with the result of the initial classification in the current system. As these results, we have shown that the accuracy rate of the classification method with SVM become higher than the result in the current system.
机译:初学者会遇到困难,难以引起客户对认知特征和内部问题的兴趣,并且正在使用频率封闭式问题来确认为客户产生的解释。因此,有机会进行所谓的监督的教育和培训,以提高专家级辅导员的初学者辅导员的辅导技能。但是,这些用于监督的辅导中的逐字记录文件规模庞大且复杂,专家辅导员很难提取谈话的特点和情况。作为可视化的方法,通过初学者辅导员可视化客户对每个问题的反应,我们开发了一种可视化辅导过程中对话流程的系统。但是,作为系统用户的专家顾问由于在当前系统中会话文档的类别分类的准确性非常低,因此需要人工校正初始分类结果,并且工作量大。为了解决这个问题,我们采用SVM(支持向量机)作为机器学习技术,对会话文档的文本数据进行了分类。此外,我们还对当前系统中初始分类的结果进行了比较和评估。作为这些结果,我们证明了使用SVM进行分类的方法的准确率要高于当前系统中的结果。

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