Monte-Carlo Simulation Studies in Survey Statistics – An Appraisal
Jan Pablo Burgard,
Patricia Dörr and
Ralf Münnich
No 2020-04, Research Papers in Economics from University of Trier, Department of Economics
Abstract:
Innovations in statistical methodology is often accompanied by Monte-Carlo studies. In the context of survey statistics two types of inferences have to be considered. First, the classical randomization methods used for developments in statistical modelling. Second, survey data is typically gathered using random sampling schemes from a finite population. In this case, the sampling inference under a finite population model drives statistical conclusions. For empirical analyses, in general, mainly survey data is available. So the question arises how best to conduct the simulation study accompanying the empirical research. In addition, economists and social scientists often use statistical models on the survey data where the statistical inference is based on the classical randomization approach based on the model assumptions. This confounds classical randomization with sampling inference. The question arises under which circumstances – if any – the sampling design can then be ignored. In both fields of research – official statistics and (micro-)econometrics – Monte-Carlo studies generally seek to deliver additional information on an estimator’s distribution. The two named inferences obviously impact distributional assumptions and, hence, must be distinguished in the Monte-Carlo set-up. Both, the conclusions to be drawn and comparability between research results, therefore, depend on inferential assumptions and the consequently adapted simulation study. The present paper gives an overview of the different types of inferences and combinations thereof that are possibly applicable on survey data. Additionally, further types of Monte-Carlo methods are elaborated to provide answers in mixed types of randomization in the survey context as well as under statistical modelling using survey data. The aim is to provide a common understanding of Monte-Carlo based studies using survey data including a thorough discussion of advantages and disadvantages of the different types and their appropriate evaluation.
Keywords: Monte-Carlo simulation; survey sampling; randomization inference; model inference (search for similar items in EconPapers)
Pages: 29 pages
Date: 2020
New Economics Papers: this item is included in nep-cmp and nep-ecm
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Persistent link: https://EconPapers.repec.org/RePEc:trr:wpaper:202004
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