某医院病人投诉信息服务体验的主题建模与情感分析

Yao Zhang, Chenxi Xia
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引用次数: 0

摘要

目的通过主题建模和情感分析,探讨患者医疗服务投诉文本中有价值的主题信息和情感分布,探讨影响患者服务体验和满意度的主要驱动因素。方法对华南某三级医院2013-2017年线下患者投诉文本集进行主题挖掘。从1000个样本文本中提取的种子词集用于指导文本的半监督潜在狄利克雷分配训练。提取相关的受试者类别,并对受试者特征进行情感评分。结果最终,从8000条投诉文本中提取了30个受试者类别,受试者特征的情感得分与实际数据集的情感倾向一致。但对“厕所”、“病房”、“卫生”等科目的满意度相对较低,主要投诉科目包括“态度”、“检查”、“病区”等。结论基于主题分布,结合情绪分析结果和具体临床环境,对情绪负分较大的医疗服务部门加强管理,可以指导医院的管理实践和服务改进过程,有助于改善患者的感知体验和情绪体验。关键词:医疗服务体验;满意度;否定文本;主题建模
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Topic modeling and sentiment analysis of service experience in patient complaint information of a hospital
Objective To explore the valuable thematic information and sentiment distribution in patients′ medical service complaint texts based on topic modeling and sentiment analysis, and investigate the main driving factors affecting patients′ service experience and satisfaction. Methods Topic mining was carried out on the offline patient complaint text set of a tertiary hospital in South China from 2013 to 2017. The seed word set extracted from 1 000 sampled texts was used to guide semi-supervised Latent Dirichlet Allocation training of texts. Relevant subject categories were extracted and subject characteristics were graded emotionally. Results in the end, 30 subject categories were extracted from the 8 000 complaint texts, and the sentiment score of the subject characteristics was consistent with the sentiment tendency of the actual data set. However, the satisfaction was relatively low in " toilet" , " ward" , " hygiene" and other subjects, and the main complaint subjects included " attitude" , " examination" , " ward" among others. Conclusions Based on the theme distribution, combined with the results of emotional analysis and the specific clinical environment, strengthening management in the medical service sector with a large negative emotional score can guide the hospital management practice and service improvement process, and help to improve the patients′ perception experience and emotional experience. Key words: Medical service experience; Satisfaction; Negative text; Topic modeling
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