Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection

Recommender Systems (RS) have been implemented in the Technology enhanced Learning (TeL) field for facilitating, among others, Learning Object (LO) selection by teachers to support their daily teaching practice. In particular, memory-based collaborative filtering (CF) approaches have demonstrated pr...

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Main Authors: Sergis, S., Sampson, Demetrios
Format: Conference Paper
Published: 2015
Online Access:http://hdl.handle.net/20.500.11937/9234
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author Sergis, S.
Sampson, Demetrios
author_facet Sergis, S.
Sampson, Demetrios
author_sort Sergis, S.
building Curtin Institutional Repository
collection Online Access
description Recommender Systems (RS) have been implemented in the Technology enhanced Learning (TeL) field for facilitating, among others, Learning Object (LO) selection by teachers to support their daily teaching practice. In particular, memory-based collaborative filtering (CF) approaches have demonstrated promising results for real-life implementations of web-based Learning Object Repositories (LOR). Building on this, the contribution of this paper is an enhancement to existing memory-based CF RS methods, by adaptively selecting the teacher neighbors based on their co-rated LOs and the attribute similarity of the latter to the LO to be recommended. The evaluation results show a significant increase in the predictive accuracy of the adaptive RS approaches compared to their "traditional" benchmarks, signifying the proposed approach's capacity to enhance the accuracy of existing memory-based CF approaches.
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institution Curtin University Malaysia
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spelling curtin-20.500.11937-92342017-09-13T15:34:02Z Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection Sergis, S. Sampson, Demetrios Recommender Systems (RS) have been implemented in the Technology enhanced Learning (TeL) field for facilitating, among others, Learning Object (LO) selection by teachers to support their daily teaching practice. In particular, memory-based collaborative filtering (CF) approaches have demonstrated promising results for real-life implementations of web-based Learning Object Repositories (LOR). Building on this, the contribution of this paper is an enhancement to existing memory-based CF RS methods, by adaptively selecting the teacher neighbors based on their co-rated LOs and the attribute similarity of the latter to the LO to be recommended. The evaluation results show a significant increase in the predictive accuracy of the adaptive RS approaches compared to their "traditional" benchmarks, signifying the proposed approach's capacity to enhance the accuracy of existing memory-based CF approaches. 2015 Conference Paper http://hdl.handle.net/20.500.11937/9234 10.1109/ICALT.2015.50 restricted
spellingShingle Sergis, S.
Sampson, Demetrios
Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection
title Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection
title_full Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection
title_fullStr Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection
title_full_unstemmed Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection
title_short Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection
title_sort enhancing learning object recommendations for teachers using adaptive neighbor selection
url http://hdl.handle.net/20.500.11937/9234