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Design and Analysis of a Cluster-Based Intelligent Hybrid Recommendation System for E-Learning Applications

Author

Listed:
  • Sundaresan Bhaskaran

    (School of Computing, SASTRA Deemed University, Thanjavur 613401, India)

  • Raja Marappan

    (School of Computing, SASTRA Deemed University, Thanjavur 613401, India)

  • Balachandran Santhi

    (School of Computing, SASTRA Deemed University, Thanjavur 613401, India)

Abstract

Recently, different recommendation techniques in e-learning have been designed that are helpful to both the learners and the educators in a wide variety of e-learning systems. Customized learning, which requires e-learning systems designed based on educational experience that suit the interests, goals, abilities, and willingness of both the learners and the educators, is required in some situations. In this research, we develop an intelligent recommender using split and conquer strategy-based clustering that can adapt automatically to the requirements, interests, and levels of knowledge of the learners. The recommender analyzes and learns the styles and characteristics of learners automatically. The different styles of learning are processed through the split and conquer strategy-based clustering. The proposed cluster-based linear pattern mining algorithm is applied to extract the functional patterns of the learners. Then, the system provides intelligent recommendations by evaluating the ratings of frequent sequences. Experiments were conducted on different groups of learners and datasets, and the proposed model suggested essential learning activities to learners based on their style of learning, interest classification, and talent features. It was experimentally found that the proposed cluster-based recommender improves the recommendation performance by resulting in more lessons completed when compared to learners present in the no-recommender cluster category. It was found that more than 65% of the learners considered all criteria to evaluate the proposed recommender. The simulation of the proposed recommender showed that for learner size values of <1000, better metric values were produced. When the learner size exceeded 1000, significant differences were obtained in the evaluated metrics. The significant differences were analyzed in terms of a computational structure depending on L , the recommendation list size, and the attributes of learners. The learners were also satisfied with the accuracy and speed of the recommender. For the sample dataset considered, a significant difference was observed in the standard deviation σ and mean μ of parameters, in terms of the Recall ( List , User ) and Ranking Score ( User ) measures, compared to other methods. The devised method performed well concerning all the considered metrics when compared to other methods. The simulation results signify that this recommender minimized the mean absolute error metric for the different clusters in comparison with some well-known methods.

Suggested Citation

  • Sundaresan Bhaskaran & Raja Marappan & Balachandran Santhi, 2021. "Design and Analysis of a Cluster-Based Intelligent Hybrid Recommendation System for E-Learning Applications," Mathematics, MDPI, vol. 9(2), pages 1-21, January.
  • Handle: RePEc:gam:jmathe:v:9:y:2021:i:2:p:197-:d:483113
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    References listed on IDEAS

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    1. Syed Manzar Abbas & Khubaib Amjad Alam & Shahaboddin Shamshirband, 2019. "A Soft-Rough Set Based Approach for Handling Contextual Sparsity in Context-Aware Video Recommender Systems," Mathematics, MDPI, vol. 7(8), pages 1-36, August.
    2. Rob E.J.R. Koper, 2005. "Increasing Learner Retention in a Simulated Learning Network Using Indirect Social Interaction," Journal of Artificial Societies and Social Simulation, Journal of Artificial Societies and Social Simulation, vol. 8(2), pages 1-5.
    3. Liu, Run-Ran & Jia, Chun-Xiao & Zhou, Tao & Sun, Duo & Wang, Bing-Hong, 2009. "Personal recommendation via modified collaborative filtering," Physica A: Statistical Mechanics and its Applications, Elsevier, vol. 388(4), pages 462-468.
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    Cited by:

    1. Saisai Yu & Ming Guo & Xiangyong Chen & Jianlong Qiu & Jianqiang Sun, 2023. "Personalized Movie Recommendations Based on a Multi-Feature Attention Mechanism with Neural Networks," Mathematics, MDPI, vol. 11(6), pages 1-22, March.

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