Modeling Error in Quantitative Macro-Comparative Research

Much quantitative macro-comparative research (QMCR) relies on a common set of published data sources to answer similar research questions using a limited number of statistical tools. Since all researchers have access to much the same data, one might expect quick convergence of opinion on most topics...

Full description

Bibliographic Details
Main Author: Salvatore J. Babones
Format: Article
Language:English
Published: University Library System, University of Pittsburgh 2015-08-01
Series:Journal of World-Systems Research
Online Access:http://jwsr.pitt.edu/ojs/index.php/jwsr/article/view/333
id doaj-e19497053eb04deb91587f9c8b8a4508
record_format Article
spelling doaj-e19497053eb04deb91587f9c8b8a45082020-11-25T00:52:35ZengUniversity Library System, University of PittsburghJournal of World-Systems Research1076-156X2015-08-011518611410.5195/jwsr.2009.333327Modeling Error in Quantitative Macro-Comparative ResearchSalvatore J. Babones0University of SydneyMuch quantitative macro-comparative research (QMCR) relies on a common set of published data sources to answer similar research questions using a limited number of statistical tools. Since all researchers have access to much the same data, one might expect quick convergence of opinion on most topics. In reality, of course, differences of opinion abound and persist. Many of these differences can be traced, implicitly or explicitly, to the different ways researchers choose to model error in their analyses. Much careful attention has been paid in the political science literature to the error structures characteristic of time series cross-sectional (TSCE) data, but much less attention has been paid to the modeling of error in broadly cross-national research involving large panels of countries observed at limited numbers of time points. Here, and especially in the sociology literature, multilevel modeling has become a hegemonic but often poorly understood research tool. I argue that widely-used types of multilevel models, commonly known as fixed effects models (FEMs) and random effects models (REMs), can produce wildly spurious results when applied to trended data due to mis-specification of error. I suggest that in most commonly-encountered scenarios, difference models are more appropriate for use in QMC.http://jwsr.pitt.edu/ojs/index.php/jwsr/article/view/333
collection DOAJ
language English
format Article
sources DOAJ
author Salvatore J. Babones
spellingShingle Salvatore J. Babones
Modeling Error in Quantitative Macro-Comparative Research
Journal of World-Systems Research
author_facet Salvatore J. Babones
author_sort Salvatore J. Babones
title Modeling Error in Quantitative Macro-Comparative Research
title_short Modeling Error in Quantitative Macro-Comparative Research
title_full Modeling Error in Quantitative Macro-Comparative Research
title_fullStr Modeling Error in Quantitative Macro-Comparative Research
title_full_unstemmed Modeling Error in Quantitative Macro-Comparative Research
title_sort modeling error in quantitative macro-comparative research
publisher University Library System, University of Pittsburgh
series Journal of World-Systems Research
issn 1076-156X
publishDate 2015-08-01
description Much quantitative macro-comparative research (QMCR) relies on a common set of published data sources to answer similar research questions using a limited number of statistical tools. Since all researchers have access to much the same data, one might expect quick convergence of opinion on most topics. In reality, of course, differences of opinion abound and persist. Many of these differences can be traced, implicitly or explicitly, to the different ways researchers choose to model error in their analyses. Much careful attention has been paid in the political science literature to the error structures characteristic of time series cross-sectional (TSCE) data, but much less attention has been paid to the modeling of error in broadly cross-national research involving large panels of countries observed at limited numbers of time points. Here, and especially in the sociology literature, multilevel modeling has become a hegemonic but often poorly understood research tool. I argue that widely-used types of multilevel models, commonly known as fixed effects models (FEMs) and random effects models (REMs), can produce wildly spurious results when applied to trended data due to mis-specification of error. I suggest that in most commonly-encountered scenarios, difference models are more appropriate for use in QMC.
url http://jwsr.pitt.edu/ojs/index.php/jwsr/article/view/333
work_keys_str_mv AT salvatorejbabones modelingerrorinquantitativemacrocomparativeresearch
_version_ 1725241539948445696