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Transition, Engagement and Retention of First Year Computing Students

Transition, Engagement and Retention of First Year Computing Students. Heather Sayers Mairin Nicell Anne Hinds. Outline . Purpose of the study Transition and Retention in School of Computing and Intelligent Systems The Experiment Data Analysis and Results Conclusion.

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Transition, Engagement and Retention of First Year Computing Students

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  1. Transition, Engagement and Retention of First Year Computing Students Heather Sayers Mairin Nicell Anne Hinds

  2. Outline • Purpose of the study • Transition and Retention in School of Computing and Intelligent Systems • The Experiment • Data Analysis and Results • Conclusion

  3. Purpose of the Study • Create a full profile of the 2009-10 first year student cohort’s educational and social backgrounds • Continuously monitor student engagement and academic progress throughout semester 1 from an ‘inside’ perspective • Provide a variety of opportunities for students to provide feedback on the first year experience • Analyse the data gathered in relation to transition and retention

  4. Transition and Retention in SCIS • First Year Teaching team • Attendance monitoring and follow-up; weekly meetings to consider students at risk and to take speedy action when necessary • Small group weekly tutorials • Extended induction • Social induction

  5. The Experiment • Semester 1, 2009-10 • 106 participants (79 male and 27 female) • Initial questionnaire (educational and social backgrounds) • Focus groups • Informal interviews • The “Inside” perspective – RA in lectures and practicals

  6. Data Analysis and Results • Statistics on student attendance and semester 1 performance were added to the data. • Transition, retention and engagement issues were considered under the following headings: • Attendance • Employment • Educational Background • Subject-specific issues • Teaching Delivery • Socialisation

  7. Attendance • Hypothesis: poor attendance = poor performance. • ANOVA: Independent variable: overall attendance (0-20% 21-40% etc.); Dependent variable: overall semester 1 average. • Attendance was found to have a significant effect on performance, with poor attendance relating to poor performance (p=0.000, F[3,61] = 12.208). • 29% of the 106 participants attended 81-100% of classes. • >50% of the IFY students (22) were in this higher attendance category compared to 20% of the year 1 students.

  8. Attendance • Of the year 1 modules, Mathematics, Programming and Computer Games had the highest recorded attendances. • Modules with higher levels of continuous assessment (Maths and Programming) or smaller class sizes (IFY modules and Year 1 Computer Games) had higher rates of attendance and better performances. • Difficult to pinpoint a particular reason why students choose not to attend. • RA convinced that motivation and support are the key factors.

  9. Employment • The hypothesis that the more hours worked, the lower the students’ attendance and performance would be, was tested. • 40% in part-time employment (34 Year 1 students and 8 IFY students) with 70% of these working 10-20 hours per week. • Employment was found not to have a significant effect on either attendance or performance (p = 0.512, F[1, 65] = 0.434).

  10. Educational Background • The hypothesis that grammar schools entrants would achieve better results was tested. • ANOVA: Independent variable: type of secondary school; Dependent variable: overall average. • ANOVA: Independent variable: type of qualification; Dependent variable: overall average. • Type of secondary level school attended was found not to have a significant effect on first semester performance (p=0.185, F[1,68] =1.792). • No significant difference was found for entrance qualification also.

  11. Subject-Specific Issues • SCIS course provision: an Integrated Foundation Year; 4 single-honours Computing degrees; several combined degrees with other disciplines. • National Audit Office report (2007): highest non-continuation figures. • 55 single honours students compared with 29 combined degree students in Year 1. • Higher percentage of combined degree students failed the semester with an overall average of <40% (18% vs 12%) and none reached the highest or lowest performance categories (80-100% and 0-20%).

  12. Teaching Delivery • Even 2-hour lectures were considered too long, and the general consensus was for more practical/tutorial classes instead. • Students liked: “the freedom”; being “treated like an adult”; and “the more relaxed atmosphere” as opposed to being “constantly told what to do next” (at school). • One student summed it up saying “I don’t really learn that well in the lectures, just being talked to, rather than doing something like in a practical”. • But this change of environment can be seen as “a lot of cord to hang yourself” with!

  13. Socialisation • 62% of participants had friends also attending the Magee Campus, with half of these on the same course. • Almost two-thirds live at home and travel. • Feedback from focus groups – not enough opportunities to mix with students and staff. • One outing in semester 1 – good feedback. • Further funding obtained for 2010/11 and events planned.

  14. Challenges • The results from this study have challenged us to consider in further detail: • The way we deliver modules; • The level and type of support we provide; • The level of attendance monitoring; • The level of social integration.

  15. Conclusion • Some level of attrition cannot be avoided. • Poor attendance continues to be a major contributing factor to poor attrition. • Student motivation and student support are key factors. • There are multiple factors to consider within each individual student cohort. • Initiatives need to be adapted dynamically to suit identified needs, and to suit the subject area. • No one solution fits all. • Keep trying!

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