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Towards a Learning-Aware Application Guided by Hierarchical Classification of Learner Profiles

Anna Saranti, Arndt Großmann, Behnam Taraghi, Martin Ebner, Vinzent Müller

2020TUGraz OPEN Library (Graz University of Technology)12 citationsDOIOpen Access PDF

Abstract

Learner profiling is a methodology that draws a parallel from user pro- filing. Implicit feedback is often used in recommender systems to create and adapt user profiles. In this work the implicit feedback is based on the learner's answering behaviour in the Android application UnlockYourBrain, which poses different basic mathematical questions to the learners. We introduce an analytical approach to model the learners' profile according to the learner's answering behaviour. Furthermore, sim- ilar learner's profiles are grouped together to construct a learning behaviour cluster. The choice of hierarchical clustering as a means of classification of learners' profiles derives from the observations of learners behaviour. This in turn reflects the similar- ities and subtle differences of learner behaviour, which are further analysed in more detail. Building awareness about the learner's behaviour is the first and necessary step for future learning-aware applications.

Topics & Concepts

Computer scienceProfiling (computer programming)Construct (python library)Cluster analysisRecommender systemHierarchical clusteringArtificial intelligenceHuman–computer interactionMachine learningOperating systemProgramming languageOnline Learning and AnalyticsIntelligent Tutoring Systems and Adaptive LearningRecommender Systems and Techniques