Enhancing EFL At-risk Students’ Meta-motivational Self-regulation: Immediate and Delayed Impact on Their Strategy Use and Academic Achievement

2016 ◽  
Vol 44 (44) ◽  
pp. 1-32
Author(s):  
Abdullah Mahmoud Ismail Ammar
2015 ◽  
Vol 27 (4) ◽  
pp. 440-456 ◽  
Author(s):  
Caitlin McLear ◽  
Christopher J. Trentacosta ◽  
Joanne Smith-Darden

Author(s):  
Cheng-Huan Chen ◽  
Stephen J. H. Yang ◽  
Jian-Xuan Weng ◽  
Hiroaki Ogata ◽  
Chien-Yuan Su

Providing early predictions of academic performance is necessary for identifying at-risk students and subsequently providing them with timely intervention for critical factors affecting their academic performance. Although e-book systems are often used to provide students with teaching/learning materials in university courses, seldom has research made the early prediction based on their online reading behaviours by implementing machine learning classifiers. This study explored to what extent university students’ academic achievement can be predicted, based on their reading behaviours in an e-book supported course, using the classifiers. It further investigated which of the features extracted from the reading logs influence the predictions. The participants were 100 first-year undergraduates enrolled in a compulsory course at a university in Taiwan. The results suggest that logistic regression supports vector classification, decision trees, and random forests, and neural networks achieved moderate prediction performance with accuracy, precision, and recall metrics. The Bayes classifier identified almost all at-risk students. Additionally, student online reading behaviours affecting the prediction models included: turning pages, going back to previous pages and jumping to other pages, adding/deleting markers, and editing/removing memos. These behaviours were significantly positively correlated to academic achievement and should be encouraged during courses supported by e-books. Implications for practice or policy: For identifying at-risk students, educators could prioritise using Gaussian naïve Bayes in an e-book supported course, as it shows almost perfect recall performance. Assessors could give priority to logistic regression and neural networks in this context because they have stable achievement prediction performance with different evaluation metrics. The prediction models are strongly affected by student online reading behaviours, in particular by locating/returning to relevant pages and modifying markers.


Author(s):  
Justin Teeuwen

The L.E.A.D. program involves teacher candidates collaborating with schools in the delivery of leadership programming for at-risk youth. Compulsory to their learning throughout the program, teacher candidates learn about various topics regarding support for at-risk students' wellbeing. This chapter presents an intervention for supporting at-risk youths' overall wellness which could be integrated within a L.E.A.D. practice. Previous interventions targeting social-skills and self-regulatory behaviour for at-risk elementary students increased academic achievement. Given the interrelationship between emotion and cognition, a “metawellness” intervention that employs metacognition and metaemotion, directed to the six domains of wellness (i.e., physical, emotional, social, intellectual, occupational, spiritual) is proposed for educators to apply to at-risk learners. Hypothetical cases are examined to illustrate potential pathways for, and benefits of, implementing the intervention with at-risk learners. Limitations and recommendations for the present intervention are included.


2009 ◽  
Author(s):  
Jennifer R. Vought ◽  
Renee L. Grizzle-Allen ◽  
Sharon E. Paulson

1998 ◽  
Vol 29 (2) ◽  
pp. 109-116 ◽  
Author(s):  
Margie Gilbertson ◽  
Ronald K. Bramlett

The purpose of this study was to investigate informal phonological awareness measures as predictors of first-grade broad reading ability. Subjects were 91 former Head Start students who were administered standardized assessments of cognitive ability and receptive vocabulary, and informal phonological awareness measures during kindergarten and early first grade. Regression analyses indicated that three phonological awareness tasks, Invented Spelling, Categorization, and Blending, were the most predictive of standardized reading measures obtained at the end of first grade. Discriminant analyses indicated that these three phonological awareness tasks correctly identified at-risk students with 92% accuracy. Clinical use of a cutoff score for these measures is suggested, along with general intervention guidelines for practicing clinicians.


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