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基于词向量的多维度正则化SVM社交网络抑郁倾向检测方法
引用本文:王垚,贾宝龙,杜依宁,张晗,陈响.基于词向量的多维度正则化SVM社交网络抑郁倾向检测方法[J].计算机应用与软件,2022,39(3):116-120.
作者姓名:王垚  贾宝龙  杜依宁  张晗  陈响
作者单位:北京世相科技文化有限公司 北京 100102
摘    要:针对目前抑郁症的诊断方式单一、诊断率低等问题,提出一种基于词向量的多维度正则化SVM社交网络抑郁倾向检测方法.通过人工标注获得训练数据,并请心理学硕士对数据进行验证,确保数据的可用性.在预处理阶段,统计得到常用的抑郁词,使用腾讯词向量进行文本向量化及用户向量化,在构建向量的过程中加入TF-IDF和抑郁词权重因子;在训练...

关 键 词:抑郁倾向  微博  支持向量机  词向量

DEPRESSION DETECTION OF MULTI-DIMENSIONAL REGULARIZED SVM SOCIAL NETWORK BASED ON WORD VECTOR
Wang Yao,Jia Baolong,Du Yining,Zhang Han,Chen Xiang.DEPRESSION DETECTION OF MULTI-DIMENSIONAL REGULARIZED SVM SOCIAL NETWORK BASED ON WORD VECTOR[J].Computer Applications and Software,2022,39(3):116-120.
Authors:Wang Yao  Jia Baolong  Du Yining  Zhang Han  Chen Xiang
Affiliation:(Beijing Shixiang Technology Culture Co.,Ltd.,Beijing 100102,China)
Abstract:Aiming at the single diagnosis method and low diagnosis rate of current depression diagnosis,we proposes a multi-dimensional regularized SVM based on word vectors to detect depression tendency.It manually labelled the training data and asked the experts to verify the data.In the pretreatment stage,we got the dictionary of the commonly used depression words,constructed the text vectors and user vectors by Tencent word vectors,added TF-IDF and depression word weighting factor to the vectors.In the training phase,we added emotion,gender and frequency to the objective function of traditional SVM to construct a multi-dimensional regularized SVM.The experimental results show that the proposed model can predict the depression tendency of bloggers effectively.
Keywords:Depression tendency  Sina Weibo  Support vector machine  Word vector
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