使用零修正计数回归模型分析孟加拉国产前保健访问数据

N. Ahmed, T. S. Mallick
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引用次数: 0

摘要

在医学、药物研究、公共卫生和社会经济研究中,我们经常遇到计数数据中超过零的情况。这种零的优势导致过色散。在这种情况下,传统的计数数据回归模型,如泊松和负二项回归(NB)可能不适合推理。为调整计数数据中过多的零而开发的两种最常用的模型类型是障碍模型和零膨胀模型。在本研究中,我们使用传统和零修改计数模型分析了孟加拉国孕妇的产前护理(ANC)访问数据。根据模型选择标准,我们发现负二项障碍模型最适合数据。通过这一分析,我们发现,母亲的年龄、分工、出生顺序(孩子出生的顺序)、居住地、经济条件、母亲的媒体曝光率、通往村庄的主要通道以及夫妻之间的教育差距等变量对ANC的平均访问次数有显著影响。达卡大学学报(自然科学版),67(2):117- 122,2019 (7)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Antenatal Care Visit Data in Bangladesh Using Zero Modified Count Regression Model
In medical science, pharmaceutical studies, public health and socio-economic researches we often encounter the situation of excess of zeros in count data. This preponderance of zeros leads to overdispersion. In such cases traditional count data regression models like Poisson and negative binomial (NB) regression may not be pertinent for inference. The two most commonly used types of model that have been developed to adjust for excessivezeros in count data are Hurdle and zero-inflated models. In this study we have analyzed the antenatal care (ANC) visit data of pregnant women in Bangladesh using traditional and zero-modified count models. Based on the model selection criteria, we found that negative binomial hurdle model fits the data best. Through this analysis,we have perceived that the variables age of mother, division, birth order (order a child is born), place of residence, economic condition, media exposure of the mother, mainaccess road to village and education gap between husband and wife have significant impact on the mean number of ANC visits taken. Dhaka Univ. J. Sci. 67(2): 117-122, 2019 (July)
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