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de Silva, Tricia L.; Zakzanis, Konstantine; Henderson, Joanna; Ravindran, Arun V. – Canadian Journal of Education, 2017
Poor academic performance and dropout are major concerns at post-secondary institutions. Influences include sociodemographic, psychosocial, and academic functioning factors. Canadian literature is limited, and little published data directly compare academic outcomes between local-born, immigrant, and international students. We conducted a…
Descriptors: Predictor Variables, Postsecondary Education, Academic Achievement, Outcomes of Education
Wu, Amery D.; Zumbo, Bruno D.; Marshall, Sheila K. – International Journal of Behavioral Development, 2014
This article describes a method based on Pratt's measures and demonstrates its use in exploratory factor analyses. The article discusses the interpretational complexities due to factor correlations and how Pratt's measures resolve these interpretational problems. Two real data examples demonstrate the calculation of what we call the…
Descriptors: Factor Analysis, Correlation, Comparative Analysis, Multiple Regression Analysis
Eroglu, Cihan; Unlu, Huseyin – Educational Sciences: Theory and Practice, 2015
This study's main aim was to determine physical education (PE) teacher candidates' self-efficacy levels and attitudes toward the PE teaching profession. Designed on a survey model, this study was conducted during the 2011-2012 academic year. A total of 601 PE teacher candidates studying in the PE and sports teaching programs of six different…
Descriptors: Foreign Countries, Preservice Teachers, Physical Education Teachers, Teacher Attitudes
Rabitoy, Eric R.; Hoffman, John L.; Person, Dawn R. – Journal of Hispanic Higher Education, 2015
This study evaluated variables associated with academic preparation and student demographics as predictors of academic achievement through participation in supplemental instruction (SI) programs for community college students in Science, Technology, Engineering, and Math (STEM) fields. The findings suggest a differential impact of SI outcome for…
Descriptors: Supplementary Education, Demography, Academic Achievement, Predictor Variables
Pae, Tae-Il – Language Testing, 2012
This study tracked gender differential item functioning (DIF) on the English subtest of the Korean College Scholastic Aptitude Test (KCSAT) over a nine-year period across three data points, using both the Mantel-Haenszel (MH) and item response theory likelihood ratio (IRT-LR) procedures. Further, the study identified two factors (i.e. reading…
Descriptors: Aptitude Tests, Academic Aptitude, Language Tests, Test Items
Thurman, Carol – ProQuest LLC, 2009
The increased use of polytomous item formats has led assessment developers to pay greater attention to the detection of differential item functioning (DIF) in these items. DIF occurs when an item performs differently for two contrasting groups of respondents (e.g., males versus females) after controlling for differences in the abilities of the…
Descriptors: Test Items, Monte Carlo Methods, Test Bias, Educational Testing
Emmons, Mark; Wilkinson, Frances C. – College & Research Libraries, 2011
What impact does the academic library have on student persistence? This study explores the relationship between traditional library input and output measures of staff, collections, use, and services with fall-to-fall retention and six-year graduation rates at Association of Research Libraries member libraries. When controlling for race/ethnicity…
Descriptors: Academic Libraries, Academic Persistence, Library Services, Library Materials
Bengoechea, Enrique Garcia; Sabiston, Catherine M.; Ahmed, Rashid; Farnoush, Michelle – Research Quarterly for Exercise and Sport, 2010
There is limited research on participation context in studies of physical activity correlates during adolescence. Using an ecological approach, this study explored the association of gender, socioeconomic status (SES), weight status, and physical education enjoyment with participation in organized and unorganized physical activity contexts in a…
Descriptors: Foreign Countries, Holistic Approach, Socioeconomic Status, Participation
Lee, Chun-Hsiung; Yeh, Dowming; Kung, Regina J.; Hsu, Chin-Shan – Journal of Educational Computing Research, 2007
This study mainly investigates the factors affecting the learning effects in a blended e-Learning course for Mathematics. The research targets of this study are 48 junior high school students. After they had received traditional lessons in class as well as the accompanied e-Learning lessons, the influences of their learning portfolios and learning…
Descriptors: Portfolios (Background Materials), Multiple Regression Analysis, Data Analysis, Gender Differences
Roulette-McIntyre, Ovella; Bagaka's, Joshua G.; Drake, Daniel D. – ERS Spectrum, 2005
This study identified parental practices that relate positively to high school students' academic performance. Parents of 643 high school students participated in the study. Data analysis, using a multiple linear regression model, shows parent-school connection, student gender, and race are significant predictors of student academic performance.…
Descriptors: Racial Differences, Parent Participation, Academic Achievement, Program Effectiveness