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The Learning Genome Mauricio Marrone Burgoa, Jamie Gabriel, Maree Gosper, Gary Lau, Vanessa Warren Innovation & Scholarship Program Grant Introduction Aims Figure 1. Data Never Sleeps Is there a Learning Genome? •To empower and inform staff of the ways to use smart-data to inform their teaching Are there a set of factors we can point to which are clear indicators of student success? •To illustrate the kinds of data that can be made available to revolutionize teaching at this university Can these be found amongst the sea of data we collect about our students? •To empower students with knowledge and information to make informed decisions that will open opportunities and maximise their learning Can these be used to recommend customised pathways of success for our students? . •Substantially improve the learning opportunities and educational results of our students at Macquarie How can they be used to enhance learning design, teaching and the student experience? The purpose of this project is to apply techniques and technologies to open opportunities and enrich the learning of our students. We want to find out if, based on the data we have about our students, we can make suggestions (or recommendations) as to what actions the University should take and students should do to become the best they can be. •Provide students, academics and academic advisors with knowledge and information to make informed decisions that will open opportunities for students to maximise their learning. Figure 2. Companies that use Recommended Algorithms Expected Outcomes/Progress Approach Technical - to explore analytical approaches, accessing and interrogating both structured and unstructured datasets. Working with MQ analytics to update knowledge of state of the art techniques, developing the skills and protocols to aggregate and interrogate data and undertaking data analysis are within this stream. Educational interpretation and implication – to explore the possible interpretations of the data, their application and the short and long term issues and implications that will emerge are the focus of this stream. This will encompass a literature review to identify current practice, identification of ethical issues, focus groups of stakeholders to review findings and explore implications. Establishment of a community of practice – to develop networks within and outside Macquarie. Learning analytics is attracting enormous interest at the moment and it is essential that we are part of the wider community of practice. • Identification of algorithms to achieve associative and analytical outcomes • An understanding of the issues and implication (both technical and ethical) related to the handling of large teaching Find out more Email us: [email protected] • An understanding of how the findings can be used to open opportunities and enhance the student experience • Establishment of practice within Macquarie a community and external Visit us online: http://mq.edu.au/research/centres_and_groups/learning_genome of to • Exploratory models for mining and interpreting data which will be useful for both MQ Analytics and the wider higher education community • Scholarly outputs in the form of academic papers and conference presentations • An ongoing agenda for the development of learning analytics at Macquarie Acknowledgements This project has been funded through the Innovation and Scholarship Program, Macquarie University. www.mq.edu.au/educationstudio