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挖掘职业伤害非法赔偿的隐性知识:主题模型方法。

Mining Hidden Knowledge About Illegal Compensation for Occupational Injury: Topic Model Approach.

作者信息

Min Jin-Young, Song Sung-Hee, Kim HyeJin, Min Kyoung-Bok

机构信息

Institute of Health and Environment, Seoul National University, Seoul, Republic of Korea.

Department of Preventive Medicine, Seoul National University College of Medicine, Seoul, Republic of Korea.

出版信息

JMIR Med Inform. 2019 Sep 26;7(3):e14763. doi: 10.2196/14763.

Abstract

BACKGROUND

Although injured employees are legally covered by workers' compensation insurance in South Korea, some employers make agreements to prevent the injured employees from claiming their compensation. Thus, this leads to underreporting of occupational injury statistics. Illegal compensation (called gong-sang in Korean) is a critical method used to underreport or cover-up occupational injuries. However, gong-sang is not counted in the official occupational injury statistics; therefore, we cannot identify gong-sang-related issues.

OBJECTIVE

This study aimed to analyze social media data using topic modeling to explore hidden knowledge about illegal compensation-gong-sang-for occupational injury in South Korea.

METHODS

We collected 2210 documents from social media data by filtering the keyword, gong-sang. The study period was between January 1, 2006, and December 31, 2017. After completing natural language processing of the Korean language, a morphological analyzer, we performed topic modeling using latent Dirichlet allocation (LDA) in the Python library, Gensim. A 10-topic model was selected and run with 3000 Gibbs sampling iterations to fit the model.

RESULTS

The LDA model was used to classify gong-sang-related documents into 4 categories from a total of 10 topics. Topic 1 was the greatest concern (60.5%). Workers who suffered from industrial accidents seemed to be worried about illegal compensation and legal insurance claims, wherein keywords on the choice between illegal compensation and legal insurance claims were included. In topic 2, keywords were associated with claims for industrial accident insurance benefits. Topics 3 and 4, as the second highest concern (19%), contained keywords implying the monetary compensation of gong-sang. Topics 5 to 10 included keywords on vulnerable jobs (ie, workers in the construction and defense industry, delivery riders, and foreign workers) and body parts (ie, injuries to the hands, face, teeth, lower limbs, and back) to gong-sang.

CONCLUSIONS

We explored hidden knowledge to identify the salient issues surrounding gong-sang using the LDA model. These topics may provide valuable information to ensure the more efficient operation of South Korea's occupational health and safety administration and protect vulnerable workers from illegal gong-sang compensation practices.

摘要

背景

在韩国,尽管受伤员工在法律上受工伤赔偿保险覆盖,但一些雇主会达成协议以阻止受伤员工索要赔偿。因此,这导致职业伤害统计数据漏报。非法赔偿(韩语称为“gong-sang”)是用于漏报或掩盖职业伤害的一种关键手段。然而,“gong-sang”未被计入官方职业伤害统计数据中;因此,我们无法识别与“gong-sang”相关的问题。

目的

本研究旨在使用主题建模分析社交媒体数据,以探索韩国职业伤害非法赔偿“gong-sang”的隐藏知识。

方法

我们通过筛选关键词“gong-sang”从社交媒体数据中收集了2210份文档。研究时间段为2006年1月1日至2017年12月31日。在对韩语进行自然语言处理(形态分析器)后,我们在Python库Gensim中使用潜在狄利克雷分配(LDA)进行主题建模。选择了一个10主题模型,并运行3000次吉布斯采样迭代以拟合该模型。

结果

LDA模型用于将与“gong-sang”相关的文档从总共10个主题中分类为4类。主题1最为受关注(60.5%)。遭受工业事故的工人似乎担心非法赔偿和合法保险索赔,其中包含关于非法赔偿和合法保险索赔之间选择的关键词。在主题2中,关键词与工业事故保险福利索赔相关。主题3和4作为第二高关注度(19%),包含暗示“gong-sang”金钱赔偿的关键词。主题5至10包括与“gong-sang”相关的弱势工作(即建筑和国防行业的工人、快递骑手和外国工人)和身体部位(即手部、面部、牙齿、下肢和背部受伤)的关键词。

结论

我们使用LDA模型探索隐藏知识以识别围绕“gong-sang”的突出问题。这些主题可能提供有价值的信息,以确保韩国职业健康与安全管理更高效地运作,并保护弱势工人免受非法“gong-sang”赔偿行为的侵害。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24b5/6787526/5c431679bbd7/medinform_v7i3e14763_fig1.jpg

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