Modified PRDG Model for Caregiver Segmentation Using Zarit Burden Interview Instrument

N. Rahmayanti, Retno Aulia Vinarti, A. Djunaidy, Anna Tjin, Jeng Liu
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Abstract

The increasing demand for Indonesian workers in Taiwan has an impact on caregiver problems which can be triggered by the burden of caring for the elderly. Therefore, the aim of this study is to identify the characteristics of caregivers who are resilient to burdens based on Indonesian female caregivers who work in Taiwan data to be a guide for selecting prospective caregivers. The process includes analyzing the personal characteristics that have the most influence on the burden using multiple regression and then clustering caregiver data using K-Means with the Elbow Method and Silhouette Index. Then, segmentation in each cluster based on a comparison of the average values. The results of clustering accuracy on dimensions (PRDG) and modified dimensions (S+PRDG) were compared and the smallest error cluster was in case 4 in the S+PRDG dimension with the Elbow Method of 3.6%. Based on segmentation on that dimension, cluster 2 is a resilient caregiver cluster. Then the results of the multiple regression analysis (Number of Children, Education and Work Location) were studied further for each caregiver in cluster 2 and the conclusions are, their average number of children is 1, final education is in junior high school and their work location is in the capital of Taiwan.
基于Zarit负担访谈工具的改进PRDG模型护理者分割
台湾对印尼劳工的需求不断增加,对照顾老人的负担可能引发的照顾问题产生了影响。因此,本研究旨在以在台湾工作的印尼籍女性照护者为研究对象,探讨照护者对负担弹性的特征,以供未来选择照护者之参考。该过程包括使用多元回归分析对负担影响最大的个人特征,然后使用肘部法和轮廓指数的K-Means对护理人员数据进行聚类。然后,在每个聚类中基于平均值的比较进行分割。比较了维度(PRDG)和修正维度(S+PRDG)的聚类精度结果,发现S+PRDG维度的情况4误差最小,肘部法误差为3.6%。基于该维度的分割,集群2是一个有弹性的护理人员集群。然后对聚类2中每个照顾者的子女数、学历、工作地点的多元回归分析结果进行进一步研究,得出其平均子女数为1,最终学历为初中,工作地点为台湾首都。
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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