Literature DB >> 29863377

Fixed effects models versus mixed effects models for clustered data: Reviewing the approaches, disentangling the differences, and making recommendations.

Daniel McNeish1, Ken Kelley2.   

Abstract

Clustered data are common in many fields. Some prominent examples of clustering are employees clustered within supervisors, students within classrooms, and clients within therapists. Many methods exist that explicitly consider the dependency introduced by a clustered data structure, but the multitude of available options has resulted in rigid disciplinary preferences. For example, those working in the psychological, organizational behavior, medical, and educational fields generally prefer mixed effects models, whereas those working in economics, behavioral finance, and strategic management generally prefer fixed effects models. However, increasingly interdisciplinary research has caused lines that separate the fields grounded in psychology and those grounded in economics to blur, leading to researchers encountering unfamiliar statistical methods commonly found in other disciplines. Persistent discipline-specific preferences can be particularly problematic because (a) each approach has certain limitations that can restrict the types of research questions that can be appropriately addressed, and (b) analyses based on the statistical modeling decisions common in one discipline can be difficult to understand for researchers trained in alternative disciplines. This can impede cross-disciplinary collaboration and limit the ability of scientists to make appropriate use of research from adjacent fields. This article discusses the differences between mixed effects and fixed effects models for clustered data, reviews each approach, and helps to identify when each approach is optimal. We then discuss the within-between specification, which blends advantageous properties of each framework into a single model. (PsycINFO Database Record (c) 2019 APA, all rights reserved).

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Mesh:

Year:  2018        PMID: 29863377     DOI: 10.1037/met0000182

Source DB:  PubMed          Journal:  Psychol Methods        ISSN: 1082-989X


  20 in total

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4.  A doubly-inflated Poisson regression for correlated count data.

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5.  The role of pain and socioenvironmental factors on posttraumatic stress disorder symptoms in traumatically injured adults: A 1-year prospective study.

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6.  Cancer Information Overload Across Time: Evidence from Two Longitudinal Studies.

Authors:  Helen Lillie; Rachael A Katz; Nick Carcioppolo; Elizabeth A Giorgi; Jakob D Jensen
Journal:  Health Commun       Date:  2022-02-16

7.  GEOGRAPHICAL ACCESS TO RECREATIONAL MARIJUANA.

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8.  Sensitivity Analysis of the No-Omitted Confounder Assumption in Latent Growth Curve Mediation Models.

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Journal:  Struct Equ Modeling       Date:  2018-09-11       Impact factor: 6.125

9.  Consequences of ignoring clustering in linear regression.

Authors:  Georgia Ntani; Hazel Inskip; Clive Osmond; David Coggon
Journal:  BMC Med Res Methodol       Date:  2021-07-07       Impact factor: 4.615

10.  Moral dilemmas and trust in leaders during a global health crisis.

Authors:  Jim A C Everett; Clara Colombatto; Edmond Awad; Paulo Boggio; Björn Bos; William J Brady; Megha Chawla; Vladimir Chituc; Dongil Chung; Moritz A Drupp; Srishti Goel; Brit Grosskopf; Frederik Hjorth; Alissa Ji; Caleb Kealoha; Judy S Kim; Yangfei Lin; Yina Ma; Michel André Maréchal; Federico Mancinelli; Christoph Mathys; Asmus L Olsen; Graeme Pearce; Annayah M B Prosser; Niv Reggev; Nicholas Sabin; Julien Senn; Yeon Soon Shin; Walter Sinnott-Armstrong; Hallgeir Sjåstad; Madelijn Strick; Sunhae Sul; Lars Tummers; Monique Turner; Hongbo Yu; Yoonseo Zoh; Molly J Crockett
Journal:  Nat Hum Behav       Date:  2021-07-01
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