DocumentCode :
3717288
Title :
Parallel Particle Swarm Optimization (PPSO) clustering for learning analytics
Author :
Kannan Govindarajan;David Boulanger;Vivekanandan Suresh Kumar; Kinshuk
Author_Institution :
Athabasca Univ., Edmonton, AB, Canada
fYear :
2015
Firstpage :
1461
Lastpage :
1465
Abstract :
Analytics is all about insights. Learning-oriented insights are the targets for Learning Analytics researchers. Insights could be detected, analysed, or created in the context of variables such as the quality of interactions with the content, study habits, engagement, competence growth, sentiments, learning efficiency, and instructional effectiveness. Clustering techniques offer an effective solution for grouping learners using observed patterns. For instance, learners could be clustered based on the effectiveness of learners´ self-regulation initiatives in reaching the target learning outcomes. Each learner could belong to a number of clusters that target different types of insights. One could also analyse the distance between clusters as a means to guide learners towards better performance. Further, one could analyse the effectiveness of cohesive peer groups within and among clusters. Traditional clustering techniques only cope with numerical or categorical data and are not readily applicable in offering learning analytics solutions. In addressing this gap, this research aims to design a Parallel Particle Swarm Optimization (PPSO) algorithm for the purposes of learning analytics, where the arrival of data is continuous, the types of data is both structured and unstructured, and the volume of data can be significantly large. The research will also describe the application of the PPSO algorithm to detect, analyse, and generate learning-oriented insights.
Keywords :
"Clustering algorithms","Particle swarm optimization","Big data","Algorithm design and analysis","Program processors","Atmospheric measurements","Particle measurements"
Publisher :
ieee
Conference_Titel :
Big Data (Big Data), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/BigData.2015.7363907
Filename :
7363907
Link To Document :
بازگشت