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Sheehan, Kathleen M.; Kostin, Irene; Futagi, Yoko – ETS Research Report Series, 2007
This paper explores alternative approaches for facilitating efficient, evidence-centered item development for a new type of verbal reasoning item developed for use on the GREĀ® General Test. Results obtained in two separate studies are reported. The first study documented the development and validation of a fully automated approach for locating the…
Descriptors: College Entrance Examinations, Graduate Study, Test Items, Item Analysis
Sheehan, Kathleen M.; Kostin, Irene; Futagi, Yoko; Hemat, Ramin; Zuckerman, Daniel – ETS Research Report Series, 2006
This paper describes the development, implementation, and evaluation of an automated system for predicting the acceptability status of candidate reading-comprehension stimuli extracted from a database of journal and magazine articles. The system uses a combination of classification and regression techniques to predict the probability that a given…
Descriptors: Automation, Prediction, Reading Comprehension, Classification

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