2017
DOI: 10.1111/bmsp.12104
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Improving precision of ability estimation: Getting more from response times

Abstract: By considering information about response time (RT) in addition to response accuracy (RA), joint models for RA and RT such as the hierarchical model can improve the precision with which ability is estimated over models that only consider RA. The hierarchical model, however, assumes that only the person's speed is informative of ability. This assumption of conditional independence between RT and ability given speed may be violated in practice, and ignores collateral information about ability that may be presen… Show more

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Cited by 45 publications
(42 citation statements)
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“…It is not known whether any RTM perfectly reflects reality or fits real data adequately. For example, even though the LNMRT is quite popular, researchers such as Bolsinova and Tijmstra (2018) and Ranger (2013) pointed to some limitations of the model. Therefore, to examine the properties of Λ s , simulations based on real data were used rather than simulations based on data generated from a RTM.…”
Section: Simulation Based On Real Datamentioning
confidence: 99%
“…It is not known whether any RTM perfectly reflects reality or fits real data adequately. For example, even though the LNMRT is quite popular, researchers such as Bolsinova and Tijmstra (2018) and Ranger (2013) pointed to some limitations of the model. Therefore, to examine the properties of Λ s , simulations based on real data were used rather than simulations based on data generated from a RTM.…”
Section: Simulation Based On Real Datamentioning
confidence: 99%
“…The collected response times provide a valuable source of information on examinees and test items. For example, response times can be used to improve the accuracy of ability estimates (van der Linden, 2007 ; Klein Entink et al, 2009a ; van der Linden and Glas, 2010 ; Wang et al, 2013 , 2018a ; Wang and Xu, 2015 ; Fox and Marianti, 2016 ; Bolsinova and Tijmstra, 2018 ; De Boeck and Jeon, 2019 ), to detect rapid guessing and cheating behavior (van der Linden and Guo, 2008 ; van der Linden, 2009 ; Wang and Xu, 2015 ; Pokropek, 2016 ; Qian et al, 2016 ; Skorupski and Wainer, 2017 ; Wang et al, 2018a , b ; Lu et al, 2019 ; Sinharay and Johnson, 2019 ; Zopluoglu, 2019 ), to evaluate the speededness of tests (Schnipke and Scrams, 1997 ; van der Linden et al, 2007 ), and to design more efficient tests (Bridgeman and Cline, 2004 ; Chang, 2004 ; Choe et al, 2018 ).…”
Section: Introductionmentioning
confidence: 99%
“…The LNMRT is arguably one of the most popular RTMs. The model was considered, either to analyze only the response times, or to analyze the response times and item scores, by, for example, Bolsinova and Tijmstra (), Boughton, Smith, and Ren (), Glas and van der Linden (), Qian, Staniewska, Reckase, and Woo (), van der Linden (, , ), van der Linden and Glas (), and van der Linden and Guo (). Bolsinova and Tijmstra (, p. 13) commented that the LNMRT is used in most applications of RTM.…”
Section: Introductionmentioning
confidence: 99%
“…The use of RTMs has been suggested to improve precision of examinee ability estimates (e.g., Bolsinova & Tijmstra, ), to detect test fraud (e.g., van der Linden & Guo, ), to detect speededness (e.g., Schnipke & Scrams, ), to improve test construction (e.g., van der Linden, ), and to test substantive theories about cognitive processes (e.g., van der Maas, Molenaar, Maris, Kievit, and Borsboom, ). Several RTMs have been suggested by, for example, Bolsinova and Tijmstra (), Entink, Fox, and van der Linden (), Entink, van der Linden, and Fox (), E. Maris (), G. Maris and van der Maas (), Rasch (), Schnipke and Scrams (), Thissen (), van der Linden (, ), van der Maas et al. (), and Wang and Hanson ().…”
mentioning
confidence: 99%