Statistical modelling of key variables in social survey data analysis

The application of statistical modelling techniques has become a cornerstone of analyses of large-scale social survey data. Bringing this special section on key variables to a close, this final article discusses several important issues relating to the inclusion of key variables in statistical model...

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Main Authors: Roxanne Connelly, Vernon Gayle, Paul S. Lambert
Format: Article
Language:English
Published: SAGE Publishing 2016-04-01
Series:Methodological Innovations
Online Access:https://doi.org/10.1177/2059799116638002
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spelling doaj-029bcc6c56f646088461ca38c89b7bfc2020-11-25T03:00:34ZengSAGE PublishingMethodological Innovations2059-79912016-04-01910.1177/2059799116638002Statistical modelling of key variables in social survey data analysisRoxanne Connelly0Vernon Gayle1Paul S. Lambert2The University of Warwick, Coventry, UKThe University of Edinburgh, Edinburgh, UKUniversity of Stirling, Stirling, UKThe application of statistical modelling techniques has become a cornerstone of analyses of large-scale social survey data. Bringing this special section on key variables to a close, this final article discusses several important issues relating to the inclusion of key variables in statistical modelling analyses. We outline two, often neglected, issues that are relevant to a great many applications of statistical models based upon social survey data. The first is known as the reference category problem and is related to the interpretation of categorical explanatory variables. The second is the interpretation and comparison of the effects from models for non-linear outcomes. We then briefly discuss other common complexities in using statistical models for social science research; these include the non-linear transformation of variables, and considerations of intersectionality and interaction effects. We conclude by emphasising the importance of two, often overlooked, elements of the social survey data analysis process, sensitivity analysis and documentation for replication. We argue that more attention should routinely be devoted to these issues.https://doi.org/10.1177/2059799116638002
collection DOAJ
language English
format Article
sources DOAJ
author Roxanne Connelly
Vernon Gayle
Paul S. Lambert
spellingShingle Roxanne Connelly
Vernon Gayle
Paul S. Lambert
Statistical modelling of key variables in social survey data analysis
Methodological Innovations
author_facet Roxanne Connelly
Vernon Gayle
Paul S. Lambert
author_sort Roxanne Connelly
title Statistical modelling of key variables in social survey data analysis
title_short Statistical modelling of key variables in social survey data analysis
title_full Statistical modelling of key variables in social survey data analysis
title_fullStr Statistical modelling of key variables in social survey data analysis
title_full_unstemmed Statistical modelling of key variables in social survey data analysis
title_sort statistical modelling of key variables in social survey data analysis
publisher SAGE Publishing
series Methodological Innovations
issn 2059-7991
publishDate 2016-04-01
description The application of statistical modelling techniques has become a cornerstone of analyses of large-scale social survey data. Bringing this special section on key variables to a close, this final article discusses several important issues relating to the inclusion of key variables in statistical modelling analyses. We outline two, often neglected, issues that are relevant to a great many applications of statistical models based upon social survey data. The first is known as the reference category problem and is related to the interpretation of categorical explanatory variables. The second is the interpretation and comparison of the effects from models for non-linear outcomes. We then briefly discuss other common complexities in using statistical models for social science research; these include the non-linear transformation of variables, and considerations of intersectionality and interaction effects. We conclude by emphasising the importance of two, often overlooked, elements of the social survey data analysis process, sensitivity analysis and documentation for replication. We argue that more attention should routinely be devoted to these issues.
url https://doi.org/10.1177/2059799116638002
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