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首页> 外文期刊>Indian Journal of Science and Technology >Sentiment Mining from Online Patient Experience using Latent Dirichlet Allocation Method
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Sentiment Mining from Online Patient Experience using Latent Dirichlet Allocation Method

机译:使用潜在狄利克雷分配方法从在线患者体验中挖掘情感

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Background/Objectives: The paper is focusing on the problem of mining sentiments in the health care text. The attempt here is to apply sentiment analysis technique to extract the feelings of patients with various emotion labels like happiness, sadness and surprise about the healthcare. Methods/Statistical Analysis: In this paper the connectivity between social emotions and affective terms are predicted from the patient experience automatically using a joint emotion-topic model by augmenting Latent Dirichlet Allocation (LDA) along with a layer for emotion modeling. The following six modules like Preprocessing, Topic Generation, Polarity Classification, Sentiment Classification, Sentiment Analysis and Aspect Ranking are identified in our system. The set of latent topics is generated from emotions initially. From each of the latent topic affective terms are generated. Finally K-means clustering is applied to detect the emotion. Using aspect ranking technique the weightage of the document is calculated. Findings: An intricate description about sentiments reflected in the reviews of patient experience is not provided by many of the sentiment prediction approaches. Experimental results proved that the meaningful latent topics for each emotion are successfully identified by the proposed model. The identified emotions are useful to categorize the document and assist the online users to select required healthcare based on their emotional preferences. Application/Improvements: The machine learning process is able to make a careful determination of patient opinion about the various administration aspects of a hospital based on the prediction accuracy that have been achieved. Various machine learning predictions are correlated with results of more conventional surveys. It will be interesting to generate more efficient algorithms based on topic models in several other opinion mining systems and for large-scale data sets.
机译:背景/目的:本文重点关注卫生保健文本中的挖掘情感问题。这里的尝试是应用情感分析技术来提取具有各种情感标签(例如幸福,悲伤和对医疗保健的惊讶)的患者的感受。方法/统计分析:在本文中,社交情感和情感术语之间的联系是通过使用联合情感主题模型通过增加潜在狄利克雷分配(LDA)以及情感建模层自动从患者体验中预测的。在我们的系统中,识别出以下六个模块,如预处理,主题生成,极性分类,情感分类,情感分析和方面排名。该组潜在主题最初是从情感中产生的。从每个潜在主题中产生情感术语。最后,将K均值聚类用于检测情绪。使用纵横比排序技术计算文档的权重。调查结果:许多情绪预测方法并未提供对患者经历的评论中反映的有关情绪的复杂描述。实验结果证明,该模型成功识别了每种情感的有意义的潜在话题。识别出的情绪有助于对文档进行分类,并帮助在线用户根据其情绪偏好选择所需的医疗保健。应用/改进:机器学习过程能够基于已经达到的预测准确性,仔细确定患者对医院各个管理方面的意见。各种机器学习预测与更常规调查的结果相关。有趣的是,在其他几种观点挖掘系统中以及针对大规模数据集,基于主题模型生成更高效的算法。

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