2021
DOI: 10.1111/bmsp.12252
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Computerized adaptive testing for testlet‐based innovative items

Abstract: Increasing use of innovative items in operational assessments has shedded new light on the polytomous testlet models. In this study, we examine performance of several scoring models when polytomous items exhibit random testlet effects. Four models are considered for investigation: the partial credit model (PCM), testlet-as-a-polytomousitem model (TPIM), random-effect testlet model (RTM), and fixed-effect testlet model (FTM). The performance of the models was evaluated in two adaptive testings where testlets ha… Show more

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Cited by 4 publications
(3 citation statements)
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“…The b -matched selection is less greedy than the information-based selection and tends to make more exhaustive use of item pools. One issue with applying this criterion to TEIs is that TEIs are typically scored polytomously ( Betts, Muntean, Kim, & Kao, 2021 ; Jiao et al, 2012 ; Kang, Han, Betts, & Muntean, 2022 ), and there is no specific index that can characterize the location of an item. In this study, we introduce location indices that describe the location of a polytomous item on the ability continuum and investigate probable testing outcomes of the location-matched item selection through Monte Carlo simulation.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…The b -matched selection is less greedy than the information-based selection and tends to make more exhaustive use of item pools. One issue with applying this criterion to TEIs is that TEIs are typically scored polytomously ( Betts, Muntean, Kim, & Kao, 2021 ; Jiao et al, 2012 ; Kang, Han, Betts, & Muntean, 2022 ), and there is no specific index that can characterize the location of an item. In this study, we introduce location indices that describe the location of a polytomous item on the ability continuum and investigate probable testing outcomes of the location-matched item selection through Monte Carlo simulation.…”
Section: Introductionmentioning
confidence: 99%
“…5.Previous studies on polytomous CAT commonly considered 100 or fewer items with four response categories (e.g., Gorin et al, 2005; Lee & Dodd, 2012; Leroux et al, 2019; Pastor et al, 2002; Penfield, 2006). This study assumes a moderate size of 200 items with greater score multiplicity to mimic operational TEIs (e.g., Kang, Han, Betts, & Muntean, 2022; Kang, Han, Kim, & Kao, 2022). …”
mentioning
confidence: 99%
“…The b-matched selection is less greedy than the information-based selection and tends to make more exhaustive use of item pools. One issue with applying this criterion to TEIs is that TEIs are typically scored polytomously (Betts, Muntean, Kim, & Kao, 2021;Kang, Han, Betts, & Muntean, 2022;Jiao, Liu, Hainie, Woo, & Gorham, 2012), and there is no specific index that can represent the location of an item. In this study, we introduce location indices that 1 Copious research exists in the measurement literature that imposes heuristic nonstatistical constraints in item selection (e.g., Chang & Ying, 1999;Cheng & Chang, 2009;Kingsbury & Zara, 1989;Sympson & Hetter, 1985;van der Linden, 2000).…”
Section: Introductionmentioning
confidence: 99%