Monday, August 12, 2013

Trait complex, cognitive ability, and domain knowledge predictors of baccalaureate success, STEM persistence, and gender differences. [feedly]


 
Shared via feedly // published on Journal of Educational Psychology - Vol 105, Iss 3 // visit site
Trait complex, cognitive ability, and domain knowledge predictors of baccalaureate success, STEM persistence, and gender differences.
Prediction of academic success at postsecondary institutions is an enduring issue for educational psychology. Traditional measures of high-school grade point average and high-stakes entrance examinations are valid predictors, especially of 1st-year college grades, yet a large amount of individual-differences variance remains unaccounted for. Studies of individual trait measures (e.g., personality, self-concept, motivation) have supported the potential for broad predictors of academic success, but integration across these approaches has been challenging. The current study tracks 589 undergraduates from their 1st semester through attrition or graduation (up to 8 years beyond their first semester). Based on an integrative trait-complex approach to assessment of cognitive, affective, and conative traits, patterns of facilitative and impeding roles in predicting academic success were predicted. We report on the validity of these broad trait complexes for predicting academic success (grades and attrition rates) in isolation and in the context of traditional predictors and indicators of domain knowledge (Advanced Placement [AP] exams). We also examine gender differences and trait complex by gender interactions for predicting college success and persistence in science, technology, engineering, and math (STEM) fields. Inclusion of trait-complex composite scores and average AP exam scores raised the prediction variance accounted for in college grades to 37%, a marked improvement over traditional prediction measures. Math/Science Self-Concept and Mastery/Organization trait complex profiles were also found to differ between men and women who had initial STEM major intentions but who left STEM for non-STEM majors. Implications for improving selection and identification of students at-risk for attrition are discussed. (PsycINFO Database Record (c) 2013 APA, all rights reserved)


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