EFFECT OF COMPLEX SAMPLE DESIGN ON DETERMINING COMMON VARIABLES IN STATISTICAL MATCHING METHOD FOR SOCIAL RESEARCH

Cengiz Özkan, A. S. Türkyılmaz
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Abstract

It is of great importance for researchers to find out different ways of accessing microdata, due to the ever-increasing demand for data and the expectation of reducing the response burden and costs at the same time. In this sense, statistical matching methods have been used extensively to produce new data using existing microdata of surveys and registers recently. It has an increasing application area in social studies such as poverty, deprivation, the effects of newborn on the economic situation of the household, indebtedness and demography, due to the gradual improvement of the micro estimation levels. Selection of matching variables among common variables, at this point, is a critical step in terms of the quality of the microdata to be reached. In the study, while selecting the common variables in order to estimate consumption expenditures by using Statistics on Income and Living Conditions (2018) and Household Budget Survey (2018), weights were added to Hellinger Distance and Spearman2 applications as a new approach. In addition, the effects of design variables (stratum and cluster) were also included in the processes, taking into account the complex structure of both samples. Adding household level weights and design variables to the statistical processes changed the selected or unselected common variables dramatically.
复杂样本设计对社会研究统计匹配方法中共同变量确定的影响
由于对数据的需求不断增加,同时期望减少响应负担和成本,寻找不同的微数据访问方式对研究人员来说非常重要。从这个意义上说,统计匹配方法最近被广泛用于利用现有的调查和登记微数据产生新的数据。由于微观估计水平的逐步提高,它在诸如贫穷、剥夺、新生儿对家庭经济状况的影响、负债和人口等社会研究中有越来越多的应用领域。此时,在公共变量中选择匹配变量是决定要获得的微数据质量的关键步骤。本研究在利用《收入与生活条件统计(2018)》和《家庭预算调查(2018)》选取共同变量估算消费支出的同时,在海灵格距离(Hellinger Distance)和斯皮尔曼(spearman) 2应用程序中增加了权重,作为一种新的方法。此外,考虑到两个样本的复杂结构,设计变量(地层和集群)的影响也包括在过程中。将家庭水平权重和设计变量添加到统计过程中会极大地改变选定或未选定的公共变量。
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