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Using Pedagogy and Learning Analytics to Manage Our Students. Neil Gordon Department of Computer Science University of Hull. Higher Education Academy STEM Annual Conference 2014 University of Edinburgh. Overview.
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Using Pedagogy and Learning Analytics to Manage Our Students Neil GordonDepartment of Computer ScienceUniversity of Hull Higher Education AcademySTEM Annual Conference 2014University of Edinburgh
Overview • Pedagogy – the how we teach –provides the primary way to direct student behaviours • Learning Analytics is of growing interest within the context of Technology Enhanced Learning and can provide data on student activity • We will consider how these two ideas can be brought together to provide a way to manage student engagement
Developing activities and assessments for engagement • A variety of pedagogic approaches • For example: • Handing out material (esp. formative or summative examples) in lectures or other sessions • Incorporating student activities in lectures and formal contact meetings (including flipped lectures) • Some approaches are behavioural rather than pedagogic – e.g. rewarding attendance / penalising non-attendance
Formative versus Summative assessment • Utilise and adapting assessment to encourage regular and early engagement • Consider formative assessment – will they do it, compared to • Summative – they do it for marks • Balance over-assessment versus having sufficient data to potentially identify behaviours
What is learning analytics • Big Data is a popular topics in Computer Science and more general society – referring to the collation and use of large sets of data • Learning Analytics refers to the use of data from learning systems – typically a Virtual Learning Environment (VLE), though it could be from any system used for learning
Analytics can tell us WHAT students are doing Most active resource
WHICH resources they want • Most downloaded file • Some tools (e.g. many lecture capture systems) can show which part of a file / media is being accessed to help identify “difficult” topics
When they are doing it • Different analytics tools can offer analysis of when students access resources • Common to get spikes near assessment periods • Some tools offer time of day so it becomes possible to appreciate how and when students are using the learning resources
Who is (not) doing it • Tools can enable staff to check if students are accessing resources • Carrying out tasks – assessed or otherwise • And whether they are contributing to activities e.g. team activities • Web 2.0 and learning tools support this – with date and author stamping
Team Work and analytics Can provide audit trails andcollect other data fromaccess logs
Engagement and attendance • What is engagement:not clearly defined. In educational terms, that students attend (possibly), read, prepare and carry out activities, and demonstrate attainment (through some form of testing) • Does attendance matter?The historical approach of reading for a degree would put the onus on students to choose how (even whether) to attend • Expectation that increased fees (England) would improve attendance rates – though data is patchy • But institutions are adopting more stringent and strict attendance monitoring regimes
Monitoring attendance • Range of empirical and experiential data show that attendance and performance are in correlation – though some outliers
Working to deadlines means missed deadlines • Understanding that (some) students work to last minute deadlines can help in teaching and supporting them • E-submission can lead to increased late penalties (until students understand the approach) • Suitable programme/module planning can help e.g. formative or low-risk (i.e. low contribution) assessments that let students practice submission E.g. submission deadline 4pm 7 Nov 2013.10% of the class received a penalty for late submission (within 1 day of original deadline) Late
Rules and Regs and engagement • Can use the stick approach • Attendance requirements: • Mandatory attendance • Registers • Follow up non-attendance • Penalty for non-attendance • Submission requirements • On time • Penalties for late submission • Penalties for not following guidance • But do these improve student engagement, or just student presence
So a model for encouraging engagement, supported by learning analytics • Initial formative activities (that can be logged/tracked) • Encourage attendance – “light warnings” for absence • Periodic summative assessments (computer tests or other) to check progress (for students and staff) • Combine results from attendance and engagement to target support • Adapt teaching based on topics students find difficulty with – identified from access logs and tests
Support mechanisms • Personal Tutors • Specific learning and study support • Personalised (targeted) support • E.g. Your mark so far is below 40%. You are advised to see X in order…. • Potential for relative performance (common overseas, seems less so in the UK): you are in the top 60% of the cohort…
Results • Combining attendance data with data from assessments enables students to be flagged as “at risk” • Better analysis if done across modules – combining attendance data with engagement data (formative and summative assessments, accessing material) • Can highlight “at risk” students • Allows the targeting of support
Conclusions: future work • Need to balance “big brother” with helpful teacher • MOOCS are offering a huge level of data on learners and their behaviour – suspected as one of the reasons why some institutions are offering them • Understanding learner behaviour may enable more suitable (flexible) approaches to how we teach • VLEs already support some aspects of this – next generation tools should take this further. • So what do you want from Learning Analytics? END