Cognitive Learning Styles and Academic Performance in 19 First-Year University Courses: Successful Students Versus Students at Risk

2001 ◽  
Vol 6 (3) ◽  
pp. 271-289 ◽  
Author(s):  
Maureen T. B. Drysdale ◽  
Jonathan L. Ross ◽  
Robert A. Schulz
2016 ◽  
Vol 3 (2) ◽  
pp. 330-372 ◽  
Author(s):  
Geraldine Gray ◽  
Colm McGuinness ◽  
Philip Owende ◽  
Markus Hofmann

This paper reports on a study to predict students at risk of failing based on data available prior to commencement of first year of study. The study was conducted over three years, 2010 to 2012, on a student population from a range of academic disciplines, n=1,207. Data was gathered from both student enrolment data maintained by college administration, and an online, self-reporting, learner profiling tool administered during first-year student induction. Factors considered included prior academic performance, personality, motivation, self-regulation, learning approaches, age and gender.  Models were trained on data from the 2010 and 2011 student cohort, and tested on data from the 2012 student cohort. A comparison of eight classification algorithms found k-NN achieved best model accuracy (72%), but results from other models were similar, including ensembles (71%), support vector machine (70%) and a decision tree (70%). Models of subgroups by age and discipline achieved higher accuracies, but were affected by sample size; n<900 underrepresented patterns in the dataset. Results showed that factors most predictive of academic performance in first year of study at tertiary education included age, prior academic performance and self-efficacy. This study indicated that early modelling of first year students yielded informative, generalisable models that identified students at risk of failing.


Author(s):  
TMGP Duarte ◽  
AM Lopes ◽  
LFM da Silva

Understanding how the academic performance of first year undergraduate students is influenced by home, personal and institutional factors is fundamental to delineate policies able to mitigate failure. This paper investigates possible correlations between the academic performance of students at the end of high school with their achievements at the end of first year university. Data for students in the Integrated Master in Mechanical Engineering (MIEM) program within the Faculty of Engineering at the University of Porto are analysed for the period 2016/2017 to 2019/2020. The students’ performance is measured by two metrics and the students are structured as a whole and by groups, according to their gender (Male/Female), type of secondary school (Public/Private), living place (Away/Home) and the rank of MIEM in their application list of options (Option 1/Option 2–6). The information is organized statistically and possible correlations between the data are investigated. The analysis reveals limited correlation between the two metrics, meaning that all students may exhibit good or poor results at the end of first year in MIEM, independent of their status at entrance. An unanticipated pattern is exhibited for the group Option 2–6, since it shows that, despite entering into MIEM without top application marks, the students in this group can perform as well as the others. This behavior is consistent over time.


2021 ◽  
Vol 14 (28) ◽  
pp. 57-64
Author(s):  
José Eduardo Molina Arriola ◽  
Victor Osiris Rodriguez Cervantes ◽  
Julio Cesar Lozano Flores ◽  
Luis Quintana Rivera ◽  
José Moncada Jimenez ◽  
...  

Este estudio tuvo como objetivo determinar la asociación entre la aptitud motriz de estudiantes universitarios de primer ingreso y su desempeño académico en los dos periodos lectivos de inicio de la carrera de Educación Física, Deporte y Recreación. Participaron 83 voluntarios (Hombres = 60, Mujeres = 23) de la Universidad Veracruzana, México. La aptitud motriz se evaluó con ocho pruebas y el rendimiento académico se midió con el promedio ponderado de dos periodos consecutivos. Los análisis de regresión múltiple mostraron que el salto sin carrera (modelo 1), y gimnasia y encestes de baloncesto (modelo 2) predicen el rendimiento académico. En conclusión, la aptitud motriz predice parcialmente el rendimiento académico en estudiantes de primer ingreso.AbstractThe purpose of this study was to determine the association between the motor skills of first-year university students and their academic performance in the two initial academic terms of the Physical Education, Sports and Recreation degree. Eighty-three volunteers participated (Men = 60, Women = 23) from the Universidad Veracruzana, Mexico. Motor skills were evaluated with eight tests and academic performance was measured with the weighted average of two consecutive terms. Multiple regression analyses showed that standing jumping (model 1), and gymnastics and effective basketball throws (model 2) predicted academic performance. In conclusion, motor skills partially predict academic performance in first-year students


2019 ◽  
Vol 9 (4) ◽  
pp. 265
Author(s):  
Chambers ◽  
Salter ◽  
Muldrow

First-year students who enter college pursuing a STEM degree still face challenges persisting through the STEM pipeline (Chen, 2013; Leu, 2017). In this case study, researchers examine the impact of a utilitarian scientific literacy based academic intervention on retention of first-year students in STEM using a mixed methods approach. A sample (n = 116) of first-year students identified as at-risk of not persisting in STEM were enrolled in a for credit utilitarian scientific literacy course. Participants of the semester long course were then compared with a control group of first-year students identified as at-risk of persisting in STEM. A two-proportion z test was performed to assess the mean differences between students and participants of the course were given a survey to gauge student experiences. Quantitative results (φ 0.34, p < 0.05) indicate that the utilitarian scientific literacy course had a statistically significant impact on retention among first-year students at-risk of persisting in STEM. Moreover, qualitative data obtained from participant responses describe internal and external growth as positive outcomes associated with the intervention.


2019 ◽  
Vol 9 (3) ◽  
pp. 448 ◽  
Author(s):  
Fredys Simanca ◽  
Rubén González Crespo ◽  
Luis Rodríguez-Baena ◽  
Daniel Burgos

Learning analytics (LA) has become a key area of study in educology, where it could assist in customising teaching and learning. Accordingly, it is precisely this data analysis technique that is used in a sensor—AnalyTIC—designed to identify students who are at risk of failing a course, and to prompt subsequent tutoring. This instrument provides the teacher and the student with the necessary information to evaluate academic performance by using a risk assessment matrix; the teacher can then customise any tutoring for a student having problems, as well as adapt the course contents. The sensor was validated in a study involving 39 students in the first term of the Environmental Engineering program at the Cooperative University of Colombia. Participants were all enrolled in an Algorithms course. Our findings led us to assert that it is vital to identify struggling students so that teachers can take corrective measures. The sensor was initially created based on the theoretical structure of the processes and/or phases of LA. A virtual classroom was built after these phases were identified, and the tool for applying the phases was then developed. After the tool was validated, it was established that students’ educational experiences are more dynamic when teachers have sufficient information for decision-making, and that tutoring and content adaptation boost the students’ academic performance.


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