GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets
Historically, multidimensional forced choice (MFC) measures have been criticized because conventional scoring methods can lead to ipsativity problems that render scores unsuitable for interindividual comparisons. However, with the recent advent of item response theory (IRT) scoring methods that yiel...
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sg-ntu-dr.10356-1514932023-05-19T07:31:16Z GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets Lee, Philseok Joo, Seang-Hwane Stark, Stephen Chernyshenko, Oleksandr S. Nanyang Business School Social sciences::Psychology Multidimensional Forced Choice Noncognitive Assessment Historically, multidimensional forced choice (MFC) measures have been criticized because conventional scoring methods can lead to ipsativity problems that render scores unsuitable for interindividual comparisons. However, with the recent advent of item response theory (IRT) scoring methods that yield normative information, MFC measures are surging in popularity and becoming important components in high-stake evaluation settings. This article aims to add to burgeoning methodological advances in MFC measurement by focusing on statement and person parameter recovery for the GGUM-RANK (generalized graded unfolding-RANK) IRT model. Markov chain Monte Carlo (MCMC) algorithm was developed for estimating GGUM-RANK statement and person parameters directly from MFC rank responses. In simulation studies, it was examined that how the psychometric properties of statements composing MFC items, test length, and sample size influenced statement and person parameter estimation; and it was explored for the benefits of measurement using MFC triplets relative to pairs. To demonstrate this methodology, an empirical validity study was then conducted using an MFC triplet personality measure. The results and implications of these studies for future research and practice are discussed. 2021-06-29T03:04:49Z 2021-06-29T03:04:49Z 2019 Journal Article Lee, P., Joo, S., Stark, S. & Chernyshenko, O. S. (2019). GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets. Applied Psychological Measurement, 43(3), 226-240. https://dx.doi.org/10.1177/0146621618768294 0146-6216 https://hdl.handle.net/10356/151493 10.1177/0146621618768294 31019358 2-s2.0-85064342109 3 43 226 240 en Applied Psychological Measurement © 2018 The Author(s). All rights reserved. |
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Social sciences::Psychology Multidimensional Forced Choice Noncognitive Assessment Lee, Philseok Joo, Seang-Hwane Stark, Stephen Chernyshenko, Oleksandr S. GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets |
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Historically, multidimensional forced choice (MFC) measures have been criticized because conventional scoring methods can lead to ipsativity problems that render scores unsuitable for interindividual comparisons. However, with the recent advent of item response theory (IRT) scoring methods that yield normative information, MFC measures are surging in popularity and becoming important components in high-stake evaluation settings. This article aims to add to burgeoning methodological advances in MFC measurement by focusing on statement and person parameter recovery for the GGUM-RANK (generalized graded unfolding-RANK) IRT model. Markov chain Monte Carlo (MCMC) algorithm was developed for estimating GGUM-RANK statement and person parameters directly from MFC rank responses. In simulation studies, it was examined that how the psychometric properties of statements composing MFC items, test length, and sample size influenced statement and person parameter estimation; and it was explored for the benefits of measurement using MFC triplets relative to pairs. To demonstrate this methodology, an empirical validity study was then conducted using an MFC triplet personality measure. The results and implications of these studies for future research and practice are discussed. |
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Nanyang Business School |
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Nanyang Business School Lee, Philseok Joo, Seang-Hwane Stark, Stephen Chernyshenko, Oleksandr S. |
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Article |
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Lee, Philseok Joo, Seang-Hwane Stark, Stephen Chernyshenko, Oleksandr S. |
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Lee, Philseok |
title |
GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets |
title_short |
GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets |
title_full |
GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets |
title_fullStr |
GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets |
title_full_unstemmed |
GGUM-RANK statement and person parameter estimation with multidimensional forced choice triplets |
title_sort |
ggum-rank statement and person parameter estimation with multidimensional forced choice triplets |
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2021 |
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https://hdl.handle.net/10356/151493 |
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1772829002628595712 |