Crossing Language Barriers: Using Crossed Random Effects Modelling in Psycholinguistics Research

The purpose of this paper is to provide a brief review of multilevel modelling (MLM), also called hierarchical linear modelling (HLM), and to present a step-by-step tutorial on how to perform a crossed random effects model (CREM) analysis. The first part provides an overview of how hierarchical data...

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Main Authors: Robyn J. Carson, Christina M. L. Beeson
Format: Article
Language:English
Published: Université d'Ottawa 2013-02-01
Series:Tutorials in Quantitative Methods for Psychology
Subjects:
Online Access:http://www.tqmp.org/Content/vol09-1/p025/p025.pdf
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spelling doaj-826694d24e8b433d93242936c3fdb3572020-11-25T00:48:59ZengUniversité d'OttawaTutorials in Quantitative Methods for Psychology1913-41262013-02-010912541Crossing Language Barriers: Using Crossed Random Effects Modelling in Psycholinguistics ResearchRobyn J. CarsonChristina M. L. BeesonThe purpose of this paper is to provide a brief review of multilevel modelling (MLM), also called hierarchical linear modelling (HLM), and to present a step-by-step tutorial on how to perform a crossed random effects model (CREM) analysis. The first part provides an overview of how hierarchical data have been analyzed in the past and how they are being analyzed presently. It then focuses on how these types of data have been dealt with in psycholinguistic research. It concludes with an overview of the steps involved in CREM, a form of MLM used for psycholinguistics data. The second part includes a tutorial demonstrating how to conduct a CREM analysis in SPSS, using the following steps: 1) clarify your research question, 2) determine if CREM is necessary, 3) choose an estimation method, 4) build your model, and 5) estimate the models effect size. A short example on how to report CREM results in a scholarly article is also included. http://www.tqmp.org/Content/vol09-1/p025/p025.pdfstatisticsmultilevel modellinghierarchical linear modellingSPSS
collection DOAJ
language English
format Article
sources DOAJ
author Robyn J. Carson
Christina M. L. Beeson
spellingShingle Robyn J. Carson
Christina M. L. Beeson
Crossing Language Barriers: Using Crossed Random Effects Modelling in Psycholinguistics Research
Tutorials in Quantitative Methods for Psychology
statistics
multilevel modelling
hierarchical linear modelling
SPSS
author_facet Robyn J. Carson
Christina M. L. Beeson
author_sort Robyn J. Carson
title Crossing Language Barriers: Using Crossed Random Effects Modelling in Psycholinguistics Research
title_short Crossing Language Barriers: Using Crossed Random Effects Modelling in Psycholinguistics Research
title_full Crossing Language Barriers: Using Crossed Random Effects Modelling in Psycholinguistics Research
title_fullStr Crossing Language Barriers: Using Crossed Random Effects Modelling in Psycholinguistics Research
title_full_unstemmed Crossing Language Barriers: Using Crossed Random Effects Modelling in Psycholinguistics Research
title_sort crossing language barriers: using crossed random effects modelling in psycholinguistics research
publisher Université d'Ottawa
series Tutorials in Quantitative Methods for Psychology
issn 1913-4126
publishDate 2013-02-01
description The purpose of this paper is to provide a brief review of multilevel modelling (MLM), also called hierarchical linear modelling (HLM), and to present a step-by-step tutorial on how to perform a crossed random effects model (CREM) analysis. The first part provides an overview of how hierarchical data have been analyzed in the past and how they are being analyzed presently. It then focuses on how these types of data have been dealt with in psycholinguistic research. It concludes with an overview of the steps involved in CREM, a form of MLM used for psycholinguistics data. The second part includes a tutorial demonstrating how to conduct a CREM analysis in SPSS, using the following steps: 1) clarify your research question, 2) determine if CREM is necessary, 3) choose an estimation method, 4) build your model, and 5) estimate the models effect size. A short example on how to report CREM results in a scholarly article is also included.
topic statistics
multilevel modelling
hierarchical linear modelling
SPSS
url http://www.tqmp.org/Content/vol09-1/p025/p025.pdf
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