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Published in: Education and Information Technologies 4/2021

30-03-2021

An ontology-based hybrid e-learning content recommender system for alleviating the cold-start problem

Authors: Joy Jeevamol, V. G. Renumol

Published in: Education and Information Technologies | Issue 4/2021

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Abstract

An e-learning recommender system (RS) aims to generate personalized recommendations based on learner preferences and goals. The existing RSs in the e-learning domain still exhibit drawbacks due to its inability to consider the learner characteristics in the recommendation process. In this paper, we are dealing with the new user cold-start problem, which is a major drawback in e-learning content RSs. This problem can be mitigated by incorporating additional learner data in the recommendation process. This paper proposes an ontology-based (OB) content recommender system for addressing the new user cold-start problem. In the proposed recommendation model, ontology is used to model the learner and learning objects with their characteristics. Collaborative and content-based filtering techniques are used in the recommendation model to generate the top N recommendations based on learner ratings. Experiments were conducted to evaluate the performance and prediction accuracy of the proposed model in cold-start conditions using the evaluation metrics mean absolute error, precision and recall. The proposed model provides more reliable and personalized recommendations by making use of ontological domain knowledge.

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Literature
go back to reference Adomavicius, G., & Kwon, Y. (2007). New recommendation techniques for multicriteria rating systems. IEEE Intelligent Systems, 22(3), 48–55.CrossRef Adomavicius, G., & Kwon, Y. (2007). New recommendation techniques for multicriteria rating systems. IEEE Intelligent Systems, 22(3), 48–55.CrossRef
go back to reference Aeiad, E., & Meziane, F. (2019). An adaptable and personalised E-learning system applied to computer science programmes design. Education and Information Technologies, 24(2), 1485–1509.CrossRef Aeiad, E., & Meziane, F. (2019). An adaptable and personalised E-learning system applied to computer science programmes design. Education and Information Technologies, 24(2), 1485–1509.CrossRef
go back to reference Al-Yahya, M., George, R., & Alfaries, A. (2015). Ontologies in e-learning: Review of the literature. International Journal of Software Engineering and its Applications, 9(2), 67–84. Al-Yahya, M., George, R., & Alfaries, A. (2015). Ontologies in e-learning: Review of the literature. International Journal of Software Engineering and its Applications, 9(2), 67–84.
go back to reference Atif, Y., Benlamri, R., & Berri, J. (2003). Learning objects based framework for self-adaptive learning. Education and Information Technologies, 8(4), 345–368.CrossRef Atif, Y., Benlamri, R., & Berri, J. (2003). Learning objects based framework for self-adaptive learning. Education and Information Technologies, 8(4), 345–368.CrossRef
go back to reference Bahmani, A., Sedigh, S., & Hurson, A. (2012). Ontology-based recommendation algorithms for personalized education. In International Conference on Database and Expert Systems Applications (pp. 111–120). Springer. Bahmani, A., Sedigh, S., & Hurson, A. (2012). Ontology-based recommendation algorithms for personalized education. In International Conference on Database and Expert Systems Applications (pp. 111–120). Springer.
go back to reference Bajenaru, L., Borozan, A. M., & Smeureanu, I. (2015). Using ontologies for the e-learning system in healthcare human resources management. InformaticaEconomica, 19(2), 15. Bajenaru, L., Borozan, A. M., & Smeureanu, I. (2015). Using ontologies for the e-learning system in healthcare human resources management. InformaticaEconomica, 19(2), 15.
go back to reference Barjasteh, I., Forsati, R., Ross, D., Esfahanian, A. H., & Radha, H. (2016). Cold-start recommendation with provable guarantees: A decoupled approach. IEEE Transactions on Knowledge and Data Engineering, 28(6), 1462–1474.CrossRef Barjasteh, I., Forsati, R., Ross, D., Esfahanian, A. H., & Radha, H. (2016). Cold-start recommendation with provable guarantees: A decoupled approach. IEEE Transactions on Knowledge and Data Engineering, 28(6), 1462–1474.CrossRef
go back to reference Barragáns-Martínez, A. B., Costa-Montenegro, E., Burguillo, J. C., Rey-López, M., Mikic-Fonte, F. A., & Peleteiro, A. (2010). A hybrid content-based and item-based collaborative filtering approach to recommend TV programs enhanced with singular value decomposition. Information Sciences, 180(22), 4290–4311.CrossRef Barragáns-Martínez, A. B., Costa-Montenegro, E., Burguillo, J. C., Rey-López, M., Mikic-Fonte, F. A., & Peleteiro, A. (2010). A hybrid content-based and item-based collaborative filtering approach to recommend TV programs enhanced with singular value decomposition. Information Sciences, 180(22), 4290–4311.CrossRef
go back to reference Benhamdi, S., Babouri, A., & Chiky, R. (2017). Personalized recommender system for e-learning environment. Education and Information Technologies, 22(4), 1455–1477.CrossRef Benhamdi, S., Babouri, A., & Chiky, R. (2017). Personalized recommender system for e-learning environment. Education and Information Technologies, 22(4), 1455–1477.CrossRef
go back to reference Bhaskaran, S., & Santhi, B. (2019). An efficient personalized trust based hybrid recommendation (tbhr) strategy for e-learning system in cloud computing. Cluster Computing, 22(1), 1137–1149.CrossRef Bhaskaran, S., & Santhi, B. (2019). An efficient personalized trust based hybrid recommendation (tbhr) strategy for e-learning system in cloud computing. Cluster Computing, 22(1), 1137–1149.CrossRef
go back to reference Bobadilla, J., Ortega, F., Hernando, A., & Gutiérrez, A. (2013). Recommender systems survey. Knowledge-Based Systems, 46, 109–132.CrossRef Bobadilla, J., Ortega, F., Hernando, A., & Gutiérrez, A. (2013). Recommender systems survey. Knowledge-Based Systems, 46, 109–132.CrossRef
go back to reference Bouihi, B., & Bahaj, M. (2017). An ontology-based architecture for context recommendation system in E-learning and mobile-learning applications. In 2017 International Conference on Electrical and Information Technologies (ICEIT) (pp. 1–6). IEEE. Bouihi, B., & Bahaj, M. (2017). An ontology-based architecture for context recommendation system in E-learning and mobile-learning applications. In 2017 International Conference on Electrical and Information Technologies (ICEIT) (pp. 1–6). IEEE.
go back to reference Bourkoukou, O., & El Bachari, E. (2016). E-learning personalization based on collaborative filtering and learner’s preference. Journal of Engineering Science and Technology, 11(11), 1565–1581. Bourkoukou, O., & El Bachari, E. (2016). E-learning personalization based on collaborative filtering and learner’s preference. Journal of Engineering Science and Technology, 11(11), 1565–1581.
go back to reference Bourkoukou, O., El Bachari, E., & El Adnani, M. (2017). A recommender model in e-learning environment. Arabian Journal for Science and Engineering, 42(2), 607–617.CrossRef Bourkoukou, O., El Bachari, E., & El Adnani, M. (2017). A recommender model in e-learning environment. Arabian Journal for Science and Engineering, 42(2), 607–617.CrossRef
go back to reference Buder, J., & Schwind, C. (2012). Learning with personalized recommender systems: A psychological view. Computers in Human Behavior, 28(1), 207–216.CrossRef Buder, J., & Schwind, C. (2012). Learning with personalized recommender systems: A psychological view. Computers in Human Behavior, 28(1), 207–216.CrossRef
go back to reference Buitrago, M., & Chiappe, A. (2019). Representation of knowledge in digital educational environments: A systematic review of literature. Australasian Journal of Educational Technology, 35(4). Buitrago, M., & Chiappe, A. (2019). Representation of knowledge in digital educational environments: A systematic review of literature. Australasian Journal of Educational Technology, 35(4).
go back to reference Burke, R. (2007). Hybrid web recommender systems. In The adaptive web (pp. 377–408). Springer. Burke, R. (2007). Hybrid web recommender systems. In The adaptive web (pp. 377–408). Springer.
go back to reference Cakula, S., & Sedleniece, M. (2013). Development of a personalized e-learning model using methods of ontology. Procedia Computer Science, 26, 113–120.CrossRef Cakula, S., & Sedleniece, M. (2013). Development of a personalized e-learning model using methods of ontology. Procedia Computer Science, 26, 113–120.CrossRef
go back to reference Chen, H., Cui, X., & Jin, H. (2016). Top-k followee recommendation over microblogging systems by exploiting diverse information sources. Future Generation Computer Systems, 55, 534–543.CrossRef Chen, H., Cui, X., & Jin, H. (2016). Top-k followee recommendation over microblogging systems by exploiting diverse information sources. Future Generation Computer Systems, 55, 534–543.CrossRef
go back to reference Chen, W., Niu, Z., Zhao, X., & Li, Y. (2014). A hybrid recommendation algorithm adapted in e-learning environments. World Wide Web, 17(2), 271–284.CrossRef Chen, W., Niu, Z., Zhao, X., & Li, Y. (2014). A hybrid recommendation algorithm adapted in e-learning environments. World Wide Web, 17(2), 271–284.CrossRef
go back to reference Ciloglugil, B., & Inceoglu, M. M. (2016). Ontology usage in e-learning systems focusing on metadata modeling of learning objects. In International Conference on New Trends in Education, ICNTE, pp. 80–96. Ciloglugil, B., & Inceoglu, M. M. (2016). Ontology usage in e-learning systems focusing on metadata modeling of learning objects. In International Conference on New Trends in Education, ICNTE, pp. 80–96.
go back to reference Deschênes, M. (2020). Recommender systems to support learners' agency in a learning context: A systematic review. International Journal of Educational Technology in Higher Education, 17(1), 1–23.CrossRef Deschênes, M. (2020). Recommender systems to support learners' agency in a learning context: A systematic review. International Journal of Educational Technology in Higher Education, 17(1), 1–23.CrossRef
go back to reference Dwivedi, P., & Bharadwaj, K. K. (2013). Effective trust-aware e-learning recommender system based on learning styles and knowledge levels. Journal of Educational Technology & Society, 16(4), 201–216. Dwivedi, P., & Bharadwaj, K. K. (2013). Effective trust-aware e-learning recommender system based on learning styles and knowledge levels. Journal of Educational Technology & Society, 16(4), 201–216.
go back to reference Dwivedi, P., Kant, V., & Bharadwaj, K. K. (2018). Learning path recommendation based on modified variable length genetic algorithm. Education and Information Technologies, 23(2), 819–836.CrossRef Dwivedi, P., Kant, V., & Bharadwaj, K. K. (2018). Learning path recommendation based on modified variable length genetic algorithm. Education and Information Technologies, 23(2), 819–836.CrossRef
go back to reference Essalmi, F., Ayed, L. J. B., Jemni, M., & Graf, S. (2010). A fully personalization strategy of e-learning scenarios. Computers in Human Behavior, 26(4), 581–591.CrossRef Essalmi, F., Ayed, L. J. B., Jemni, M., & Graf, S. (2010). A fully personalization strategy of e-learning scenarios. Computers in Human Behavior, 26(4), 581–591.CrossRef
go back to reference Felder, R. M., & Silverman, L. K. (1988). Learning and teaching styles in engineering education. Engineering Education, 78(7), 674–681. Felder, R. M., & Silverman, L. K. (1988). Learning and teaching styles in engineering education. Engineering Education, 78(7), 674–681.
go back to reference Fraihat, S., & Shambour, Q. (2015). A framework of semantic recommender system for e-learning. Journal of Software, 10(3), 317–330.CrossRef Fraihat, S., & Shambour, Q. (2015). A framework of semantic recommender system for e-learning. Journal of Software, 10(3), 317–330.CrossRef
go back to reference George, G., & Lal, A. M. (2019). Review of ontology-based recommender systems in e-learning. Computers & Education, 142, 103642.CrossRef George, G., & Lal, A. M. (2019). Review of ontology-based recommender systems in e-learning. Computers & Education, 142, 103642.CrossRef
go back to reference Graf, S., & Kinshuk, K. (2007). Providing adaptive courses in learning management systems with respect to learning styles. In E-Learn: World Conference on E-Learning in Corporate, Government, Healthcare, and Higher Education (pp. 2576–2583). Association for the Advancement of Computing in Education. Graf, S., & Kinshuk, K. (2007). Providing adaptive courses in learning management systems with respect to learning styles. In E-Learn: World Conference on E-Learning in Corporate, Government, Healthcare, and Higher Education (pp. 2576–2583). Association for the Advancement of Computing in Education.
go back to reference Graf, S., Viola, S. R., Leo, T., & Kinshuk. (2007). In-depth analysis of the felder-silverman learning style dimensions. Journal of Research on Technology in Education, 40(1), 79–93.CrossRef Graf, S., Viola, S. R., Leo, T., & Kinshuk. (2007). In-depth analysis of the felder-silverman learning style dimensions. Journal of Research on Technology in Education, 40(1), 79–93.CrossRef
go back to reference Gruber, T. R. (1993). A translation approach to portable ontology specifications. Knowledge Acquisition, 5(2), 199–221.CrossRef Gruber, T. R. (1993). A translation approach to portable ontology specifications. Knowledge Acquisition, 5(2), 199–221.CrossRef
go back to reference Harrathi, M., Touzani, N., & Braham, R. (2017). A hybrid knowlegde-based approach for recommending massive learning activities. In 2017 IEEE/ACS 14th International Conference on Computer Systems and Applications (AICCSA) (pp. 49–54). IEEE. Harrathi, M., Touzani, N., & Braham, R. (2017). A hybrid knowlegde-based approach for recommending massive learning activities. In 2017 IEEE/ACS 14th International Conference on Computer Systems and Applications (AICCSA) (pp. 49–54). IEEE.
go back to reference Holzinger, A., Smolle, J., & Reibnegger, G. (2006). An object-oriented approach to manage e-learning content using learning objects. In Handbook of research on informatics in healthcare and biomedicine (pp. 89–98). Holzinger, A., Smolle, J., & Reibnegger, G. (2006). An object-oriented approach to manage e-learning content using learning objects. In Handbook of research on informatics in healthcare and biomedicine (pp. 89–98).
go back to reference IEEE-LTSC. (2010). IEEE P1484.12.1–2002/Cor 1/D14. Draft standard for learning object metadata — corrigendum 1: corrigenda for 1484.12.1 LOM (learning object metadata), IEEE Learning Technology Standards Committee. IEEE-LTSC. (2010). IEEE P1484.12.1–2002/Cor 1/D14. Draft standard for learning object metadata — corrigendum 1: corrigenda for 1484.12.1 LOM (learning object metadata), IEEE Learning Technology Standards Committee.
go back to reference Jannach, D., Zanker, M., Felfernig, A., & Friedrich, G. (2010). Recommender systems: An introduction. Cambridge University Press. Jannach, D., Zanker, M., Felfernig, A., & Friedrich, G. (2010). Recommender systems: An introduction. Cambridge University Press.
go back to reference Joy, J., Raj, N. S. & Renumol V.G. (2019). An ontology model for content recommendation in personalized learning environment. In Proceedings of the Second International Conference on Data Science, E-Learning and Information Systems (pp. 1–6). ACM. Joy, J., Raj, N. S. & Renumol V.G. (2019). An ontology model for content recommendation in personalized learning environment. In Proceedings of the Second International Conference on Data Science, E-Learning and Information Systems (pp. 1–6). ACM.
go back to reference Kamal, A., & Radhakrishnan, S. (2019). Individual learning preferences based on personality traits in an e-learning scenario. Education and Information Technologies, 24(1), 407–435.CrossRef Kamal, A., & Radhakrishnan, S. (2019). Individual learning preferences based on personality traits in an e-learning scenario. Education and Information Technologies, 24(1), 407–435.CrossRef
go back to reference Karga, S., & Satratzemi, M. (2018). A hybrid recommender system integrated into LAMS for learning designers. Education and Information Technologies, 23(3), 1297–1329.CrossRef Karga, S., & Satratzemi, M. (2018). A hybrid recommender system integrated into LAMS for learning designers. Education and Information Technologies, 23(3), 1297–1329.CrossRef
go back to reference Khanal, S. S., Prasad, P. W. C., Alsadoon, A., & Maag, A. (2019). A systematic review: Machine learning based recommendation systems for e-learning. Education and Information Technologies, 25(4), 2635–2664. Khanal, S. S., Prasad, P. W. C., Alsadoon, A., & Maag, A. (2019). A systematic review: Machine learning based recommendation systems for e-learning. Education and Information Technologies, 25(4), 2635–2664.
go back to reference Kilani, Y., Alhijawi, B., & Alsarhan, A. (2018). Using artificial intelligence techniques in collaborative filtering recommender systems: Survey. International Journal of Advanced Intelligence Paradigms, 11(3–4), 378–396.CrossRef Kilani, Y., Alhijawi, B., & Alsarhan, A. (2018). Using artificial intelligence techniques in collaborative filtering recommender systems: Survey. International Journal of Advanced Intelligence Paradigms, 11(3–4), 378–396.CrossRef
go back to reference Kim, S. C., Sung, K. J., Park, C. S., & Kim, S. K. (2016). Improvement of collaborative filtering using rating normalization. Multimedia Tools and Applications, 75(9), 4957–4968.CrossRef Kim, S. C., Sung, K. J., Park, C. S., & Kim, S. K. (2016). Improvement of collaborative filtering using rating normalization. Multimedia Tools and Applications, 75(9), 4957–4968.CrossRef
go back to reference Klašnja-Milićević, A., Vesin, B., Ivanović, M., & Budimac, Z. (2011). E-learning personalization based on hybrid recommendation strategy and learning style identification. Computers & Education, 56(3), 885–899.CrossRef Klašnja-Milićević, A., Vesin, B., Ivanović, M., & Budimac, Z. (2011). E-learning personalization based on hybrid recommendation strategy and learning style identification. Computers & Education, 56(3), 885–899.CrossRef
go back to reference Klašnja-Milićević, A., Ivanović, M., & Nanopoulos, A. (2015). Recommender systems in e-learning environments: A survey of the state-of-the-art and possible extensions. Artificial Intelligence Review, 44(4), 571–604.CrossRef Klašnja-Milićević, A., Ivanović, M., & Nanopoulos, A. (2015). Recommender systems in e-learning environments: A survey of the state-of-the-art and possible extensions. Artificial Intelligence Review, 44(4), 571–604.CrossRef
go back to reference Klašnja-Milićević, A., Ivanović, M., Vesin, B., & Budimac, Z. (2018). Enhancing e-learning systems with personalized recommendation based on collaborative tagging techniques. Applied Intelligence, 48(6), 1519–1535.CrossRef Klašnja-Milićević, A., Ivanović, M., Vesin, B., & Budimac, Z. (2018). Enhancing e-learning systems with personalized recommendation based on collaborative tagging techniques. Applied Intelligence, 48(6), 1519–1535.CrossRef
go back to reference Kolekar, S. V., Pai, R. M., & ManoharaPai, M. M. (2019). Rule based adaptive user interface for adaptive e-learning system. Education and Information Technologies, 24(1), 613–641.CrossRef Kolekar, S. V., Pai, R. M., & ManoharaPai, M. M. (2019). Rule based adaptive user interface for adaptive e-learning system. Education and Information Technologies, 24(1), 613–641.CrossRef
go back to reference Lam, X. N., Vu, T., Le, T. D., & Duong, A. D. (2008). Addressing cold-start problem in recommendation systems. In Proceedings of the 2nd international conference on Ubiquitous information management and communication (pp. 208–211). Lam, X. N., Vu, T., Le, T. D., & Duong, A. D. (2008). Addressing cold-start problem in recommendation systems. In Proceedings of the 2nd international conference on Ubiquitous information management and communication (pp. 208–211).
go back to reference Lika, B., Kolomvatsos, K., & Hadjiefthymiades, S. (2014). Facing the cold start problem in recommender systems. Expert Systems with Applications, 41(4), 2065–2073.CrossRef Lika, B., Kolomvatsos, K., & Hadjiefthymiades, S. (2014). Facing the cold start problem in recommender systems. Expert Systems with Applications, 41(4), 2065–2073.CrossRef
go back to reference Manouselis, N., Drachsler, H., Vuorikari, R., Hummel, H., & Koper, R. (2011). Recommender systems in technology enhanced learning. In Recommender systems handbook (pp. 387–415). Springer. Manouselis, N., Drachsler, H., Vuorikari, R., Hummel, H., & Koper, R. (2011). Recommender systems in technology enhanced learning. In Recommender systems handbook (pp. 387–415). Springer.
go back to reference Mobasher, B. (2007). Data mining for web personalization. In The adaptive web (pp. 90–135). Springer. Mobasher, B. (2007). Data mining for web personalization. In The adaptive web (pp. 90–135). Springer.
go back to reference Murad, D. F., Heryadi, Y., Isa, S. M., & Budiharto, W. (2020). Personalization of study material based on predicted final grades using multi-criteria user-collaborative filtering recommender system. Education and Information Technologies, 25, 5655–5668.CrossRef Murad, D. F., Heryadi, Y., Isa, S. M., & Budiharto, W. (2020). Personalization of study material based on predicted final grades using multi-criteria user-collaborative filtering recommender system. Education and Information Technologies, 25, 5655–5668.CrossRef
go back to reference Nafea, S., Maglaras, L. A., Iewe, F., Smith, R., & Janicke, H. (2016). Personalized students’ profile based on ontology and rule-based reasoning. EAI Endorsed Transactions on E-Learning, 3(12), 151720.CrossRef Nafea, S., Maglaras, L. A., Iewe, F., Smith, R., & Janicke, H. (2016). Personalized students’ profile based on ontology and rule-based reasoning. EAI Endorsed Transactions on E-Learning, 3(12), 151720.CrossRef
go back to reference Nafea, S. M., Siewe, F., & He, Y. (2019). On recommendation of learning objects using felder-silverman learning style model. IEEE Access, 7, 163034–163048.CrossRef Nafea, S. M., Siewe, F., & He, Y. (2019). On recommendation of learning objects using felder-silverman learning style model. IEEE Access, 7, 163034–163048.CrossRef
go back to reference Najafabadi, M. K., & Mahrin, M. N. R. (2016). A systematic literature review on the state of research and practice of collaborative filtering technique and implicit feedback. Artificial intelligence review, 45(2), 167–201.CrossRef Najafabadi, M. K., & Mahrin, M. N. R. (2016). A systematic literature review on the state of research and practice of collaborative filtering technique and implicit feedback. Artificial intelligence review, 45(2), 167–201.CrossRef
go back to reference Natarajan, S., Vairavasundaram, S., Natarajan, S., & Gandomi, A. H. (2020). Resolving data sparsity and cold start problem in collaborative filtering recommender system using linked open data. Expert Systems with Applications, 149, 113248.CrossRef Natarajan, S., Vairavasundaram, S., Natarajan, S., & Gandomi, A. H. (2020). Resolving data sparsity and cold start problem in collaborative filtering recommender system using linked open data. Expert Systems with Applications, 149, 113248.CrossRef
go back to reference Ouf, S., Ellatif, M. A., Salama, S. E., & Helmy, Y. (2017). A proposed paradigm for smart learning environment based on semantic web. Computers in Human Behavior, 72, 796–818.CrossRef Ouf, S., Ellatif, M. A., Salama, S. E., & Helmy, Y. (2017). A proposed paradigm for smart learning environment based on semantic web. Computers in Human Behavior, 72, 796–818.CrossRef
go back to reference Park, S. T., Pennock, D., Madani, O., Good, N., & DeCoste, D. (2006). Naïve filterbots for robust cold-start recommendations. In Proceedings of the 12th ACM SIGKDD international conference on Knowledge discovery and data mining (pp. 699–705). Park, S. T., Pennock, D., Madani, O., Good, N., & DeCoste, D. (2006). Naïve filterbots for robust cold-start recommendations. In Proceedings of the 12th ACM SIGKDD international conference on Knowledge discovery and data mining (pp. 699–705).
go back to reference Pazzani, M. J., & Billsus, D. (2007). Content-based recommendation systems. In The adaptive web (pp. 325–341). Springer. Pazzani, M. J., & Billsus, D. (2007). Content-based recommendation systems. In The adaptive web (pp. 325–341). Springer.
go back to reference Premlatha, K. R., & Geetha, T. V. (2015). Learning content design and learner adaptation for adaptive e-learning environment: a survey. Artificial Intelligence Review, 44(4), 443–465.CrossRef Premlatha, K. R., & Geetha, T. V. (2015). Learning content design and learner adaptation for adaptive e-learning environment: a survey. Artificial Intelligence Review, 44(4), 443–465.CrossRef
go back to reference Pukkhem, N. (2013). Ontology-based semantic approach for learning object recommendation. International Journal on Information Technology, 3(4), 12. Pukkhem, N. (2013). Ontology-based semantic approach for learning object recommendation. International Journal on Information Technology, 3(4), 12.
go back to reference Pukkhem, N. (2014). LORecommendNet: an ontology-based representation of learning object recommendation. In Recent Advances in Information and Communication Technology (pp. 293–303). Springer. Pukkhem, N. (2014). LORecommendNet: an ontology-based representation of learning object recommendation. In Recent Advances in Information and Communication Technology (pp. 293–303). Springer.
go back to reference Raju, P., & Ahmed, V. (2012). Enabling technologies for developing next-generation learning object repository for construction. Automation in Construction, 22, 247–257.CrossRef Raju, P., & Ahmed, V. (2012). Enabling technologies for developing next-generation learning object repository for construction. Automation in Construction, 22, 247–257.CrossRef
go back to reference Ranjbar, M., Moradi, P., Azami, M., & Jalili, M. (2015). An imputation-based matrix factorization method for improving accuracy of collaborative filtering systems. Engineering Applications of Artificial Intelligence, 46, 58–66.CrossRef Ranjbar, M., Moradi, P., Azami, M., & Jalili, M. (2015). An imputation-based matrix factorization method for improving accuracy of collaborative filtering systems. Engineering Applications of Artificial Intelligence, 46, 58–66.CrossRef
go back to reference Ricci, F., Rokach, L., & Shapira, B. (2011). Introduction to recommender systems handbook. In Recommender systems handbook (pp. 1–35). Springer. Ricci, F., Rokach, L., & Shapira, B. (2011). Introduction to recommender systems handbook. In Recommender systems handbook (pp. 1–35). Springer.
go back to reference Romero, L., Saucedo, C., Caliusco, M. L., & Gutiérrez, M. (2019). Supporting self-regulated learning and personalization using ePortfolios: a semantic approach based on learning paths. International Journal of Educational Technology in Higher Education, 16(1), 16.CrossRef Romero, L., Saucedo, C., Caliusco, M. L., & Gutiérrez, M. (2019). Supporting self-regulated learning and personalization using ePortfolios: a semantic approach based on learning paths. International Journal of Educational Technology in Higher Education, 16(1), 16.CrossRef
go back to reference Ruiz-Iniesta, A., Jimenez-Diaz, G., & Gomez-Albarran, M. (2014). A semantically enriched context-aware OER recommendation strategy and its application to a computer science OER repository. IEEE Transactions on Education, 57(4), 255–260.CrossRef Ruiz-Iniesta, A., Jimenez-Diaz, G., & Gomez-Albarran, M. (2014). A semantically enriched context-aware OER recommendation strategy and its application to a computer science OER repository. IEEE Transactions on Education, 57(4), 255–260.CrossRef
go back to reference Safoury, L., & Salah, A. (2013). Exploiting user demographic attributes for solving cold-start problem in recommender system. Lecture Notes on Software Engineering, 1(3), 303–307.CrossRef Safoury, L., & Salah, A. (2013). Exploiting user demographic attributes for solving cold-start problem in recommender system. Lecture Notes on Software Engineering, 1(3), 303–307.CrossRef
go back to reference Saleena, B., & Srivatsa, S. K. (2015). Using concept similarity in cross ontology for adaptive e-learning systems. Journal of King Saud University-Computer and Information Sciences, 27(1), 1–12.CrossRef Saleena, B., & Srivatsa, S. K. (2015). Using concept similarity in cross ontology for adaptive e-learning systems. Journal of King Saud University-Computer and Information Sciences, 27(1), 1–12.CrossRef
go back to reference Salehi, M., Kamalabadi, I. N., & Ghoushchi, M. B. G. (2013). An effective recommendation framework for personal learning environments using a learner preference tree and a GA. IEEE Transactions on Learning Technologies, 6(4), 350–363.CrossRef Salehi, M., Kamalabadi, I. N., & Ghoushchi, M. B. G. (2013). An effective recommendation framework for personal learning environments using a learner preference tree and a GA. IEEE Transactions on Learning Technologies, 6(4), 350–363.CrossRef
go back to reference Sarwar, B., Karypis, G., Konstan, J., & Riedl, J. (2001). Item-based collaborative filtering recommendation algorithms. In Proceedings of the 10th international conference on World Wide Web (pp. 285–295). Sarwar, B., Karypis, G., Konstan, J., & Riedl, J. (2001). Item-based collaborative filtering recommendation algorithms. In Proceedings of the 10th international conference on World Wide Web (pp. 285–295).
go back to reference Schafer, J. B., Frankowski, D., Herlocker, J., & Sen, S. (2007). Collaborative filtering recommender systems. In The adaptive web (pp. 291–324). Springer. Schafer, J. B., Frankowski, D., Herlocker, J., & Sen, S. (2007). Collaborative filtering recommender systems. In The adaptive web (pp. 291–324). Springer.
go back to reference Schein, A. I., Popescul, A., Ungar, L. H., & Pennock, D. M. (2002). Methods and metrics for cold-start recommendations. In Proceedings of the 25th annual international ACM SIGIR conference on research and development in information retrievaz (pp. 253–260). Schein, A. I., Popescul, A., Ungar, L. H., & Pennock, D. M. (2002). Methods and metrics for cold-start recommendations. In Proceedings of the 25th annual international ACM SIGIR conference on research and development in information retrievaz (pp. 253–260).
go back to reference Senthilnayaki, B., Venkatalakshmi, K., & Kannan, A. (2015). An ontology based framework for intelligent web based e-learning. International Journal of Intelligent Information Technologies (IJIIT), 11(2), 23–39.CrossRef Senthilnayaki, B., Venkatalakshmi, K., & Kannan, A. (2015). An ontology based framework for intelligent web based e-learning. International Journal of Intelligent Information Technologies (IJIIT), 11(2), 23–39.CrossRef
go back to reference Shani, G., & Gunawardana, A. (2011). Evaluating recommendation systems. In Recommender systems handbook (pp. 257–297). Springer. Shani, G., & Gunawardana, A. (2011). Evaluating recommendation systems. In Recommender systems handbook (pp. 257–297). Springer.
go back to reference Shaw, G., Xu, Y., & Geva, S. (2010). Using association rules to solve the cold-start problem in recommender systems. In Pacific-Asia conference on knowledge discovery and data mining (pp. 340–347). Springer. Shaw, G., Xu, Y., & Geva, S. (2010). Using association rules to solve the cold-start problem in recommender systems. In Pacific-Asia conference on knowledge discovery and data mining (pp. 340–347). Springer.
go back to reference Sheeba, T., & Krishnan, R. (2016). An ontological framework of semantic learner profile in an e-learning system. International Conference on Brain Inspired Cognitive Systems. (pp. 284–297). Springer. Sheeba, T., & Krishnan, R. (2016). An ontological framework of semantic learner profile in an e-learning system. International Conference on Brain Inspired Cognitive Systems. (pp. 284–297). Springer.
go back to reference Shishehchi, S., Banihashem, S. Y., Zin, N. A. M., Noah, S. A. M., & Malaysia, K. (2012). Ontological approach in knowledge based recommender system to develop the quality of e-learning system. Australian Journal of Basic and Applied Sciences, 6(2), 115–123. Shishehchi, S., Banihashem, S. Y., Zin, N. A. M., Noah, S. A. M., & Malaysia, K. (2012). Ontological approach in knowledge based recommender system to develop the quality of e-learning system. Australian Journal of Basic and Applied Sciences, 6(2), 115–123.
go back to reference Silva, N., Carvalho, D., Pereira, A. C., Mourão, F., & Rocha, L. (2019). The pure cold-start problem: A deep study about how to conquer first-time users in recommendations domains. Information Systems, 80, 1–12.CrossRef Silva, N., Carvalho, D., Pereira, A. C., Mourão, F., & Rocha, L. (2019). The pure cold-start problem: A deep study about how to conquer first-time users in recommendations domains. Information Systems, 80, 1–12.CrossRef
go back to reference Son, L. H. (2016). Dealing with the new user cold-start problem in recommender systems: A comparative review. Information Systems, 58, 87–104.CrossRef Son, L. H. (2016). Dealing with the new user cold-start problem in recommender systems: A comparative review. Information Systems, 58, 87–104.CrossRef
go back to reference Sosnovsky, S., Hsiao, I. H., & Brusilovsky, P. (2012). Adaptation “in the Wild”: ontology-based personalization of open-corpus learning material. European Conference on Technology Enhanced Learning. (pp. 425–431). Springer. Sosnovsky, S., Hsiao, I. H., & Brusilovsky, P. (2012). Adaptation “in the Wild”: ontology-based personalization of open-corpus learning material. European Conference on Technology Enhanced Learning. (pp. 425–431). Springer.
go back to reference Tarus, J. K., Niu, Z., & Yousif, A. (2017). A hybrid knowledge-based recommender system for e-learning based on ontology and sequential pattern mining. Future Generation Computer Systems, 72, 37–48.CrossRef Tarus, J. K., Niu, Z., & Yousif, A. (2017). A hybrid knowledge-based recommender system for e-learning based on ontology and sequential pattern mining. Future Generation Computer Systems, 72, 37–48.CrossRef
go back to reference Tarus, J. K., Niu, Z., & Mustafa, G. (2018). Knowledge-based recommendation: A review of ontology-based recommender systems for e-learning. Artificial intelligence review, 50(1), 21–48.CrossRef Tarus, J. K., Niu, Z., & Mustafa, G. (2018). Knowledge-based recommendation: A review of ontology-based recommender systems for e-learning. Artificial intelligence review, 50(1), 21–48.CrossRef
go back to reference Vanitha, V., & Krishnan, P. (2019). A modified ant colony algorithm for personalized learning path construction. Journal of Intelligent & Fuzzy Systems, 37(5), 6785–6800.CrossRef Vanitha, V., & Krishnan, P. (2019). A modified ant colony algorithm for personalized learning path construction. Journal of Intelligent & Fuzzy Systems, 37(5), 6785–6800.CrossRef
go back to reference Victor, P., De Cock, M., Cornelis, C., & Teredesai, A. M. (2008). Getting cold start users connected in a recommender system's trust network. In Computational Intelligence in Decision and Control (pp. 877–882). Victor, P., De Cock, M., Cornelis, C., & Teredesai, A. M. (2008). Getting cold start users connected in a recommender system's trust network. In Computational Intelligence in Decision and Control (pp. 877–882).
go back to reference Wiley, D. A. (2000). Connecting learning objects to instructional design theory: A definition, a metaphor, and a taxonomy. The instructional use of learning objects, 2830(435), 1–35. Wiley, D. A. (2000). Connecting learning objects to instructional design theory: A definition, a metaphor, and a taxonomy. The instructional use of learning objects, 2830(435), 1–35.
go back to reference Wongchokprasitti, C., Peltonen, J., Ruotsalo, T., Bandyopadhyay, P., Jacucci, G., & Brusilovsky, P. (2015). User model in a box: Cross-system user model transfer for resolving cold start problems. In International Conference on User Modeling, Adaptation, and Personalization (pp. 289–301). Springer. Wongchokprasitti, C., Peltonen, J., Ruotsalo, T., Bandyopadhyay, P., Jacucci, G., & Brusilovsky, P. (2015). User model in a box: Cross-system user model transfer for resolving cold start problems. In International Conference on User Modeling, Adaptation, and Personalization (pp. 289–301). Springer.
go back to reference Yang, S. Y. (2010). Developing an ontology-supported information integration and recommendation system for scholars. Expert Systems with Applications, 37(10), 7065–7079.CrossRef Yang, S. Y. (2010). Developing an ontology-supported information integration and recommendation system for scholars. Expert Systems with Applications, 37(10), 7065–7079.CrossRef
go back to reference Yao, L., Sheng, Q. Z., Ngu, A. H., Yu, J., & Segev, A. (2014). Unified collaborative and content-based web service recommendation. IEEE Transactions on Services Computing, 8(3), 453–466.CrossRef Yao, L., Sheng, Q. Z., Ngu, A. H., Yu, J., & Segev, A. (2014). Unified collaborative and content-based web service recommendation. IEEE Transactions on Services Computing, 8(3), 453–466.CrossRef
go back to reference Zhang, Z. K., Liu, C., Zhang, Y. C., & Zhou, T. (2010). Solving the cold-start problem in recommender systems with social tags. EPL (Europhysics Letters), 92(2), 28002.CrossRef Zhang, Z. K., Liu, C., Zhang, Y. C., & Zhou, T. (2010). Solving the cold-start problem in recommender systems with social tags. EPL (Europhysics Letters), 92(2), 28002.CrossRef
go back to reference Zhao, X., Niu, Z., Chen, W., Shi, C., Niu, K., & Liu, D. (2015a). A hybrid approach of topic model and matrix factorization based on two-step recommendation framework. Journal of Intelligent Information Systems, 44(3), 335–353.CrossRef Zhao, X., Niu, Z., Chen, W., Shi, C., Niu, K., & Liu, D. (2015a). A hybrid approach of topic model and matrix factorization based on two-step recommendation framework. Journal of Intelligent Information Systems, 44(3), 335–353.CrossRef
go back to reference Zhao, X., Niu, Z., Wang, K., Niu, K., & Liu, Z. (2015b). Improving top-N recommendation performance using missing data. Mathematical Problems in Engineering, 2015. Zhao, X., Niu, Z., Wang, K., Niu, K., & Liu, Z. (2015b). Improving top-N recommendation performance using missing data. Mathematical Problems in Engineering, 2015.
go back to reference Zhong, J., Xie, H. & Wang, F.L. (2019). The research trends in recommender systems for e-learning: A systematic review of SSCI journal articles from 2014 to 2018. Asian Association of Open Universities Journal, 14(1), 12–27. Zhong, J., Xie, H. & Wang, F.L. (2019). The research trends in recommender systems for e-learning: A systematic review of SSCI journal articles from 2014 to 2018. Asian Association of Open Universities Journal, 14(1), 12–27.
go back to reference Zhuhadar, L., & Nasraoui, O. (2010). A hybrid recommender system guided by semantic user profiles for search in the e-learning domain. Journal of Emerging Technologies in Web Intelligence, 2(4), 272–281. Zhuhadar, L., & Nasraoui, O. (2010). A hybrid recommender system guided by semantic user profiles for search in the e-learning domain. Journal of Emerging Technologies in Web Intelligence, 2(4), 272–281.
Metadata
Title
An ontology-based hybrid e-learning content recommender system for alleviating the cold-start problem
Authors
Joy Jeevamol
V. G. Renumol
Publication date
30-03-2021
Publisher
Springer US
Published in
Education and Information Technologies / Issue 4/2021
Print ISSN: 1360-2357
Electronic ISSN: 1573-7608
DOI
https://doi.org/10.1007/s10639-021-10508-0

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