NLP-Based Subject with Emotions Joint Analytics for Epidemic Articles

Woo Hyun Park, Isma Farah Siddiqui, Dong Ryeol Shin, Nawab Muhammad Faseeh Qureshi
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引用次数: 1

Abstract

For the last couple years, governments and health authorities worldwide have been focused on addressing the Covid-19 pandemic;for example, governments have implemented countermeasures, such as quarantining, pushing vaccine shots to minimize local spread, investigating and analyzing the virus??? characteristics, and conducting epidemiological investigations through patient management and tracers. Therefore, researchers worldwide require funding to achieve these goals. Furthermore, there is a need for documentation to investigate and trace disease characteristics. However, it is time consuming and resource intensive to work with documents comprising many types of unstructured data. Therefore, in this study, natural language processing technology is used to automatically classify these documents. Currently used statistical methods include data cleansing, query modification, sentiment analysis, and clustering. However, owing to limitations with respect to the data, it is necessary to understand how to perform data analysis suitable for medical documents. To solve this problem, this study proposes a robust in-depth mixed with subject and emotion model comprising three modules. The first is a subject and non-linear emotional module, which extracts topics from the data and supplements them with emotional figures. The second is a subject with singular value decomposition in the emotion model, which is a dimensional decomposition module that uses subject analysis and an emotion model. The third involves embedding with singular value decomposition using an emotion module, which is a dimensional decomposition method that uses emotion learning. The accuracy and other model measurements, such as the F1, area under the curve, and recall are evaluated based on an article on Middle East respiratory syndrome. A high F1 score of approximately 91% is achieved. The proposed joint analysis method is expected to provide a better synergistic effect in the dataset.
基于nlp的主题与情感的流行病文章联合分析
在过去几年中,世界各国政府和卫生当局一直专注于应对Covid-19大流行;例如,各国政府已经实施了对策,例如隔离,推动疫苗接种以尽量减少当地传播,调查和分析病毒?特征,并通过患者管理和示踪剂进行流行病学调查。因此,全世界的研究人员都需要资金来实现这些目标。此外,还需要文献资料来调查和追踪疾病特征。然而,处理包含多种非结构化数据类型的文档既耗时又耗费资源。因此,本研究采用自然语言处理技术对这些文档进行自动分类。目前常用的统计方法包括数据清理、查询修改、情感分析和聚类。然而,由于数据的局限性,有必要了解如何进行适合医疗文件的数据分析。为了解决这一问题,本研究提出了一个包含三个模块的鲁棒深度主体与情感混合模型。第一个是主题和非线性情感模块,从数据中提取主题,并补充情感人物。二是情感模型中具有奇异值分解的主题,这是一个利用主题分析和情感模型的维度分解模块。第三种方法是使用情感模块嵌入奇异值分解,这是一种使用情感学习的维数分解方法。准确度和其他模型测量值,如F1、曲线下面积和召回率,基于一篇关于中东呼吸综合征的文章进行评估。达到了约91%的高F1分数。所提出的联合分析方法有望在数据集中提供更好的协同效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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