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Thompson, Aaron M.; Huang, Francis; Smith, Tyler; Reinke, Wendy M.; Herman, Keith C. – School Mental Health, 2021
The purpose of this paper is to confirm the factor structure, examine the invariance, and investigate the predictive validity using disciplinary data for 5262 high school students who completed the Early Identification System--Student Response (EIS-SR). The development and theory of the EIS-SR is discussed along with prior work. Building off of…
Descriptors: Factor Structure, Factor Analysis, Predictive Validity, Identification
Olive, David Monllao; Huynh, Du Q.; Reynolds, Mark; Dougiamas, Martin; Wiese, Damyon – IEEE Transactions on Learning Technologies, 2019
A significant amount of research effort has been put into finding variables that can identify students at risk based on activity records available in learning management systems (LMS). These variables often depend on the context, for example, the course structure, how the activities are assessed or whether the course is entirely online or a…
Descriptors: Prediction, Identification, At Risk Students, Online Courses
Terrell, Misty – National Technical Assistance Center on Transition, 2017
Early warning systems (EWS), in the context of secondary transition, are tools that analyze individual student-level data and estimate each student's risk of dropping out of school or completing school on time. Such tools generally consider three primary types of data--commonly referred to as the A, B, Cs: attendance/absence data,…
Descriptors: Identification, Intervention, Secondary School Students, At Risk Students
Truckenmiller, Adrea J.; Petscher, Yaacov; Gaughan, Linda; Dwyer, Ted – Regional Educational Laboratory Southeast, 2016
District and state education leaders frequently use screening assessments to identify students who are at risk of performing poorly on end-of-year achievement tests. This study examines the use of a universal screening assessment of reading skills for early identification of students at risk of low achievement on nationally normed tests of reading…
Descriptors: Prediction, Predictive Validity, Predictor Variables, Mathematics Achievement
Catts, Hugh W.; Herrera, Sarah; Nielsen, Diane Corcoran; Bridges, Mindy Sittner – Reading and Writing: An Interdisciplinary Journal, 2015
The simple view of reading proposes that reading comprehension is the product of word reading and language comprehension. In this study, we used the simple view framework to examine the early prediction of reading comprehension abilities. Using multiple measures for all constructs, we assessed word reading precursors (i.e., letter knowledge,…
Descriptors: Prediction, Reading Comprehension, Sight Method, Language Acquisition
Caldarella, Paul; Larsen, Ross A. A.; Williams, Leslie; Wehby, Joseph H.; Wills, Howard; Kamps, Debra – Journal of Positive Behavior Interventions, 2017
Numerous well-validated academic progress monitoring tools are used in schools, but there are fewer behavioral progress monitoring measures available. Some brief behavior rating scales have been shown to be effective in monitoring students' progress, but most focus only on students' social skills and do not address critical academic-related…
Descriptors: Psychometrics, Interpersonal Competence, Classroom Environment, Elementary Schools
Caldarella, Paul; Larsen, Ross A. A.; Williams, Leslie; Wehby, Joseph H.; Wills, Howard P.; Kamps, Debra M. – Grantee Submission, 2017
Numerous well validated academic progress monitoring tools are used in schools, but there are fewer behavioral progress monitoring measures available. Some brief behavior rating scales have been shown to be effective in monitoring students' progress, but most focus only on students' social skills and do not address critical academic-related…
Descriptors: Psychometrics, Interpersonal Competence, Classroom Environment, Elementary Schools
Brennan, Lauretta M.; Shaw, Daniel S.; Dishion, Thomas J.; Wilson, Melvin – Journal of Abnormal Child Psychology, 2012
This project examined the unique predictive validity of parent ratings of toddler-age aggression, oppositionality, inattention, and hyperactivity-impulsivity to academic achievement at school-age in a sample of 566 high-risk children and families. The study also investigated potential indirect effects of the Family Check-Up on school-age academic…
Descriptors: Academic Achievement, Identification, Behavior Problems, Child Behavior
Peer reviewedHall, Gordon C. Nagayama; And Others – Journal of Consulting and Clinical Psychology, 1986
Attempted to demonstrate the utility of Minnesota Multiphasic Pesonality Inventory in identifying sexual offenders against children by using offense characteristics, including gender of the victim, victim's age, relationship of victim to offender, whether the offender used physical force against the victim, and whether the offender molested the…
Descriptors: Child Abuse, Criminals, Identification, Males
Sadler, William E.; Cohen, Frederic L.; Kockesen, Levent – 1997
This paper describes a methodology used in an on-going retention study at New York University (NYU) to identify a series of easily measured factors affecting student departure decisions. Three logistic regression models for predicting student retention were developed, each containing data available at three distinct times during the first…
Descriptors: Academic Persistence, College Freshmen, Dropouts, High Risk Students

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