Item Screening in Graphical Loglinear Rasch Models

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Item Screening in Graphical Loglinear Rasch Models. / Kreiner, Svend; Christensen, Karl Bang.

I: Psychometrika, Bind 76, Nr. 2, 04.2011, s. 228-256.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Kreiner, S & Christensen, KB 2011, 'Item Screening in Graphical Loglinear Rasch Models', Psychometrika, bind 76, nr. 2, s. 228-256. https://doi.org/10.1007/S11336-011-9203-Y

APA

Kreiner, S., & Christensen, K. B. (2011). Item Screening in Graphical Loglinear Rasch Models. Psychometrika, 76(2), 228-256. https://doi.org/10.1007/S11336-011-9203-Y

Vancouver

Kreiner S, Christensen KB. Item Screening in Graphical Loglinear Rasch Models. Psychometrika. 2011 apr.;76(2):228-256. https://doi.org/10.1007/S11336-011-9203-Y

Author

Kreiner, Svend ; Christensen, Karl Bang. / Item Screening in Graphical Loglinear Rasch Models. I: Psychometrika. 2011 ; Bind 76, Nr. 2. s. 228-256.

Bibtex

@article{6c0161e0967c41fc8ec5233418bb3d4c,
title = "Item Screening in Graphical Loglinear Rasch Models",
abstract = "In behavioural sciences, local dependence and DIF are common, and purification procedures that eliminate items with these weaknesses often result in short scales with poor reliability. Graphical loglinear Rasch models (Kreiner & Christensen, in Statistical Methods for Quality of Life Studies, ed. by M. Mesbah, F.C. Cole & M.T. Lee, Kluwer Academic, pp. 187–203, 2002) where uniform DIF and uniform local dependence are permitted solve this dilemma by modelling the local dependence and DIF. Identifying loglinear Rasch models by a stepwise model search is often very time consuming, since the initial item analysis may disclose a great deal of spurious and misleading evidence of DIF and local dependence that has to disposed of during the modelling procedure. Like graphical models, graphical loglinear Rasch models possess Markov properties that are useful during the statistical analysis if they are used methodically. This paper describes how. It contains a systematic study of the Markov properties and the way they can be used to distinguish spurious from genuine evidence of DIF and local dependence and proposes a strategy for initial item screening that will reduce the time needed to identify a graphical loglinear Rasch model that fits the item responses. The last part of the paper illustrates the item screening procedure on simulated data and on data on the PF subscale measuring physical functioning in the SF36 Health Survey inventory.",
author = "Svend Kreiner and Christensen, {Karl Bang}",
year = "2011",
month = apr,
doi = "10.1007/S11336-011-9203-Y",
language = "English",
volume = "76",
pages = "228--256",
journal = "Psychometrika",
issn = "0033-3123",
publisher = "Springer",
number = "2",

}

RIS

TY - JOUR

T1 - Item Screening in Graphical Loglinear Rasch Models

AU - Kreiner, Svend

AU - Christensen, Karl Bang

PY - 2011/4

Y1 - 2011/4

N2 - In behavioural sciences, local dependence and DIF are common, and purification procedures that eliminate items with these weaknesses often result in short scales with poor reliability. Graphical loglinear Rasch models (Kreiner & Christensen, in Statistical Methods for Quality of Life Studies, ed. by M. Mesbah, F.C. Cole & M.T. Lee, Kluwer Academic, pp. 187–203, 2002) where uniform DIF and uniform local dependence are permitted solve this dilemma by modelling the local dependence and DIF. Identifying loglinear Rasch models by a stepwise model search is often very time consuming, since the initial item analysis may disclose a great deal of spurious and misleading evidence of DIF and local dependence that has to disposed of during the modelling procedure. Like graphical models, graphical loglinear Rasch models possess Markov properties that are useful during the statistical analysis if they are used methodically. This paper describes how. It contains a systematic study of the Markov properties and the way they can be used to distinguish spurious from genuine evidence of DIF and local dependence and proposes a strategy for initial item screening that will reduce the time needed to identify a graphical loglinear Rasch model that fits the item responses. The last part of the paper illustrates the item screening procedure on simulated data and on data on the PF subscale measuring physical functioning in the SF36 Health Survey inventory.

AB - In behavioural sciences, local dependence and DIF are common, and purification procedures that eliminate items with these weaknesses often result in short scales with poor reliability. Graphical loglinear Rasch models (Kreiner & Christensen, in Statistical Methods for Quality of Life Studies, ed. by M. Mesbah, F.C. Cole & M.T. Lee, Kluwer Academic, pp. 187–203, 2002) where uniform DIF and uniform local dependence are permitted solve this dilemma by modelling the local dependence and DIF. Identifying loglinear Rasch models by a stepwise model search is often very time consuming, since the initial item analysis may disclose a great deal of spurious and misleading evidence of DIF and local dependence that has to disposed of during the modelling procedure. Like graphical models, graphical loglinear Rasch models possess Markov properties that are useful during the statistical analysis if they are used methodically. This paper describes how. It contains a systematic study of the Markov properties and the way they can be used to distinguish spurious from genuine evidence of DIF and local dependence and proposes a strategy for initial item screening that will reduce the time needed to identify a graphical loglinear Rasch model that fits the item responses. The last part of the paper illustrates the item screening procedure on simulated data and on data on the PF subscale measuring physical functioning in the SF36 Health Survey inventory.

U2 - 10.1007/S11336-011-9203-Y

DO - 10.1007/S11336-011-9203-Y

M3 - Journal article

VL - 76

SP - 228

EP - 256

JO - Psychometrika

JF - Psychometrika

SN - 0033-3123

IS - 2

ER -

ID: 33547506