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Published in: Soft Computing 2/2019

07-11-2017 | Methodologies and Application

A survey on data mining techniques in recommender systems

Authors: Maryam Khanian Najafabadi, Azlinah Hj. Mohamed, Mohd Naz’ri Mahrin

Published in: Soft Computing | Issue 2/2019

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Abstract

Recommender systems have been regarded as gaining a more significant role with the emergence of the first research article on collaborative filtering (CF) in the mid-1990s. CF predicts the interests of an active user based on the opinions of users with similar interests. To extract information on the preference of users for a set of items and evaluate the performance of the recommender system’s techniques and algorithms, a critical analysis can be conducted. This study therefore employs a critical analysis on 131 articles in CF area from 36 journals published between the years 2010 and 2016. This analysis seems to be the exclusive survey which supports and motivates the community of researchers and practitioners. It is done by using the applications of users’ activities and intelligence computing and data mining techniques on CF recommendation systems. In addition, it provides a classification of the literature on academic database according to the benchmark recommendation databases, two users’ feedbacks (explicit and implicit feedbacks) which reflect their activities and categories of intelligence computing and data mining techniques. Eventually, this study provides a road map to guide future direction on recommender systems research and facilitates the accumulated and derived knowledge on the application of intelligence computing and data mining techniques in CF recommendation systems.

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Literature
go back to reference Adomavicius G, Zhang J (2012) Impact of data characteristics on recommender systems performance. ACM Trans Manag Inf Syst 3(1):3 Adomavicius G, Zhang J (2012) Impact of data characteristics on recommender systems performance. ACM Trans Manag Inf Syst 3(1):3
go back to reference Adomavicius G, Tuzhilin A (2005) Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions. IEEE Trans Knowl Data Eng 17(2005):734–749 Adomavicius G, Tuzhilin A (2005) Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions. IEEE Trans Knowl Data Eng 17(2005):734–749
go back to reference Ahn HJ, Kang H, Lee J (2010) Selecting a small number of products for effective user profiling in collaborative filtering. Expert Syst Appl 37(4):3055–3062 Ahn HJ, Kang H, Lee J (2010) Selecting a small number of products for effective user profiling in collaborative filtering. Expert Syst Appl 37(4):3055–3062
go back to reference Anand D, Mampilli BS (2014) Folksonomy-based fuzzy user profiling for improved recommendations. Expert Syst Appl 41(5):2424–2436 Anand D, Mampilli BS (2014) Folksonomy-based fuzzy user profiling for improved recommendations. Expert Syst Appl 41(5):2424–2436
go back to reference Anand D, Bharadwaj KK (2011) Utilizing various sparsity measures for enhancing accuracy of collaborative recommender systems based on local and global similarities. Expert Syst Appl 38(5):5101–5109 Anand D, Bharadwaj KK (2011) Utilizing various sparsity measures for enhancing accuracy of collaborative recommender systems based on local and global similarities. Expert Syst Appl 38(5):5101–5109
go back to reference Bakshi S, Jagadev AK, Dehuri S, Wang GN (2014) Enhancing scalability and accuracy of recommendation systems using unsupervised learning and particle swarm optimization. Appl Soft Comput 15:21–29 Bakshi S, Jagadev AK, Dehuri S, Wang GN (2014) Enhancing scalability and accuracy of recommendation systems using unsupervised learning and particle swarm optimization. Appl Soft Comput 15:21–29
go back to reference Bauer J, Nanopoulos A (2014) Recommender systems based on quantitative implicit customer feedback. Decis Support Syst 68:77–88 Bauer J, Nanopoulos A (2014) Recommender systems based on quantitative implicit customer feedback. Decis Support Syst 68:77–88
go back to reference Bellogín A, Castells P, Cantador I (2014) Neighbor selection and weighting in user-based collaborative filtering: a performance prediction approach. ACM Trans Web 8(2):12 Bellogín A, Castells P, Cantador I (2014) Neighbor selection and weighting in user-based collaborative filtering: a performance prediction approach. ACM Trans Web 8(2):12
go back to reference Berkovsky S, Kuflik T, Ricci F (2012) The impact of data obfuscation on the accuracy of collaborative filtering. Expert Syst Appl 39(5):5033–5042 Berkovsky S, Kuflik T, Ricci F (2012) The impact of data obfuscation on the accuracy of collaborative filtering. Expert Syst Appl 39(5):5033–5042
go back to reference Bedi P, Sharma R (2012) Trust based recommender system using ant colony for trust computation. Expert Syst Appl 39(1):1183–1190 Bedi P, Sharma R (2012) Trust based recommender system using ant colony for trust computation. Expert Syst Appl 39(1):1183–1190
go back to reference Bilge A, Polat H (2013) A comparison of clustering-based privacy-preserving collaborative filtering schemes. Appl Soft Comput 13(5):2478–2489 Bilge A, Polat H (2013) A comparison of clustering-based privacy-preserving collaborative filtering schemes. Appl Soft Comput 13(5):2478–2489
go back to reference Birtolo C, Ronca D (2013) Advances in clustering collaborative filtering by means of fuzzy C-means and trust. Expert Syst Appl 40(17):6997–7009 Birtolo C, Ronca D (2013) Advances in clustering collaborative filtering by means of fuzzy C-means and trust. Expert Syst Appl 40(17):6997–7009
go back to reference Boratto L, Carta S, Fenu G (2015) Discovery and representation of the preferences of automatically detected groups: exploiting the link between group modeling and clustering. Future Gener Comput Syst 64:165–174 Boratto L, Carta S, Fenu G (2015) Discovery and representation of the preferences of automatically detected groups: exploiting the link between group modeling and clustering. Future Gener Comput Syst 64:165–174
go back to reference Bobadilla J, Ortega F, Hernando A, Glez-de-Rivera G (2013a) A similarity metric designed to speed up, using hardware, the recommender systems k-nearest neighbors algorithm. Knowl Based Syst 51:27–34 Bobadilla J, Ortega F, Hernando A, Glez-de-Rivera G (2013a) A similarity metric designed to speed up, using hardware, the recommender systems k-nearest neighbors algorithm. Knowl Based Syst 51:27–34
go back to reference Bobadilla J, Ortega F, Hernando A, Gutiérrez A (2013b) Recommender systems survey. Knowl Based Syst 46(2013):109–132 Bobadilla J, Ortega F, Hernando A, Gutiérrez A (2013b) Recommender systems survey. Knowl Based Syst 46(2013):109–132
go back to reference Bobadilla J, Hernando A, Ortega F, Gutiérrez A (2012a) Collaborative filtering based on significances. Inf Sci 185(1):1–17 Bobadilla J, Hernando A, Ortega F, Gutiérrez A (2012a) Collaborative filtering based on significances. Inf Sci 185(1):1–17
go back to reference Bobadilla J, Ortega F, Hernando A, Alcalá J (2011) Improving collaborative filtering recommender system results and performance using genetic algorithms. Knowl Based Syst 24(8):1310–1316 Bobadilla J, Ortega F, Hernando A, Alcalá J (2011) Improving collaborative filtering recommender system results and performance using genetic algorithms. Knowl Based Syst 24(8):1310–1316
go back to reference Bobadilla J, Ortega F, Hernando A, Bernal J (2012b) Generalization of recommender systems: collaborative filtering extended to groups of users and restricted to groups of items. Expert Syst Appl 39(1):172–186 Bobadilla J, Ortega F, Hernando A, Bernal J (2012b) Generalization of recommender systems: collaborative filtering extended to groups of users and restricted to groups of items. Expert Syst Appl 39(1):172–186
go back to reference Bobadilla J, Serradilla F, Bernal J (2010) A new collaborative filtering metric that improves the behavior of recommender systems. Knowl Based Syst 23(6):520–528 Bobadilla J, Serradilla F, Bernal J (2010) A new collaborative filtering metric that improves the behavior of recommender systems. Knowl Based Syst 23(6):520–528
go back to reference Braida F, Mello CE, Pasinato MB, Zimbrão G (2015) Transforming collaborative filtering into supervised learning. Expert Syst Appl 42(10):4733–4742 Braida F, Mello CE, Pasinato MB, Zimbrão G (2015) Transforming collaborative filtering into supervised learning. Expert Syst Appl 42(10):4733–4742
go back to reference Briguez CE, Budan MC, Deagustini CA, Maguitman AG, Capobianco M, Simari GR (2014) Argument-based mixed recommenders and their application to movie suggestion. Expert Syst Appl 41(14):6467–6482 Briguez CE, Budan MC, Deagustini CA, Maguitman AG, Capobianco M, Simari GR (2014) Argument-based mixed recommenders and their application to movie suggestion. Expert Syst Appl 41(14):6467–6482
go back to reference Burke R (2002) Hybrid recommender systems: survey and experiments. User Model User Adapt Interact 12(4):331–370MATH Burke R (2002) Hybrid recommender systems: survey and experiments. User Model User Adapt Interact 12(4):331–370MATH
go back to reference Casino F, Domingo-Ferrer J, Patsakis C, Puig D, Solanas A (2015) A k-anonymous approach to privacy preserving collaborative filtering. J Comput Syst Sci 81(6):1000–1011 Casino F, Domingo-Ferrer J, Patsakis C, Puig D, Solanas A (2015) A k-anonymous approach to privacy preserving collaborative filtering. J Comput Syst Sci 81(6):1000–1011
go back to reference Cai Y, Leung HF, Li Q, Min H, Tang J, Li J (2014a) Typicality-based collaborative filtering recommendation. IEEE Trans Knowl Data Eng 26(3):766–779 Cai Y, Leung HF, Li Q, Min H, Tang J, Li J (2014a) Typicality-based collaborative filtering recommendation. IEEE Trans Knowl Data Eng 26(3):766–779
go back to reference Cai Y, Lau RY, Liao SS, Li C, Leung HF, Ma LC (2014b) Object typicality for effective web of things recommendations. Decis Support Syst 63:52–63 Cai Y, Lau RY, Liao SS, Li C, Leung HF, Ma LC (2014b) Object typicality for effective web of things recommendations. Decis Support Syst 63:52–63
go back to reference Cacheda F, Carneiro V, Fernández D, Formoso V (2011) Comparison of collaborative filtering algorithms: limitations of current techniques and proposals for scalable, high-performance recommender systems. ACM Trans Web 5(1):2 Cacheda F, Carneiro V, Fernández D, Formoso V (2011) Comparison of collaborative filtering algorithms: limitations of current techniques and proposals for scalable, high-performance recommender systems. ACM Trans Web 5(1):2
go back to reference Chen MH, Teng CH, Chang PC (2015) Applying artificial immune systems to collaborative filtering for movie recommendation. Adv Eng Inform 29(4):830–839 Chen MH, Teng CH, Chang PC (2015) Applying artificial immune systems to collaborative filtering for movie recommendation. Adv Eng Inform 29(4):830–839
go back to reference Cheng LC, Wang HA (2014) A fuzzy recommender system based on the integration of subjective preferences and objective information. Appl Soft Comput 18:290–301 Cheng LC, Wang HA (2014) A fuzzy recommender system based on the integration of subjective preferences and objective information. Appl Soft Comput 18:290–301
go back to reference Chen YC, Lin YS, Shen YC, Lin SD (2013a) A modified random walk framework for handling negative ratings and generating explanations. ACM Trans Intell Syst Technol 4(1):12 Chen YC, Lin YS, Shen YC, Lin SD (2013a) A modified random walk framework for handling negative ratings and generating explanations. ACM Trans Intell Syst Technol 4(1):12
go back to reference Chen L, Zeng W, Yuan Q (2013b) A unified framework for recommending items, groups and friends in social media environment via mutual resource fusion. Expert Syst Appl 40(8):2889–2903 Chen L, Zeng W, Yuan Q (2013b) A unified framework for recommending items, groups and friends in social media environment via mutual resource fusion. Expert Syst Appl 40(8):2889–2903
go back to reference Choi K, Suh Y (2013) A new similarity function for selecting neighbors for each target item in collaborative filtering. Knowl Based Syst 37:146–153 Choi K, Suh Y (2013) A new similarity function for selecting neighbors for each target item in collaborative filtering. Knowl Based Syst 37:146–153
go back to reference Colace F, De Santo M, Greco L, Moscato V, Picariello A (2015) A collaborative user-centered framework for recommending items in online social networks. Comput Hum Behav 51:694–704 Colace F, De Santo M, Greco L, Moscato V, Picariello A (2015) A collaborative user-centered framework for recommending items in online social networks. Comput Hum Behav 51:694–704
go back to reference Da Costa AF, Manzato MG (2016) Exploiting multimodal interactions in recommender systems with ensemble algorithms. Inf Syst 56:120–132 Da Costa AF, Manzato MG (2016) Exploiting multimodal interactions in recommender systems with ensemble algorithms. Inf Syst 56:120–132
go back to reference De Campos LM, Fernández-Luna JM, Huete JF, Rueda-Morales MA (2010) Combining content-based and collaborative recommendations: a hybrid approach based on Bayesian networks. Int J Approx Reason 51(7):785–799 De Campos LM, Fernández-Luna JM, Huete JF, Rueda-Morales MA (2010) Combining content-based and collaborative recommendations: a hybrid approach based on Bayesian networks. Int J Approx Reason 51(7):785–799
go back to reference Devi MK, Venkatesh P (2013) Smoothing approach to alleviate the meager rating problem in collaborative recommender systems. Future Gener Comput Syst 29(1):262–270 Devi MK, Venkatesh P (2013) Smoothing approach to alleviate the meager rating problem in collaborative recommender systems. Future Gener Comput Syst 29(1):262–270
go back to reference Elahi M, Ricci F, Rubens N (2013) Active learning strategies for rating elicitation in collaborative filtering: a system-wide perspective. ACM Trans Intell Syst Technol 5(1):13 Elahi M, Ricci F, Rubens N (2013) Active learning strategies for rating elicitation in collaborative filtering: a system-wide perspective. ACM Trans Intell Syst Technol 5(1):13
go back to reference Eckhardt A (2012) Similarity of users’(content-based) preference models for collaborative filtering in few ratings scenario. Expert Syst Appl 39(14):11511–11516 Eckhardt A (2012) Similarity of users’(content-based) preference models for collaborative filtering in few ratings scenario. Expert Syst Appl 39(14):11511–11516
go back to reference Feng H, Tian J, Wang HJ, Li M (2015) Personalized recommendations based on time-weighted overlapping community detection. Inf Manag 52(7):789–800 Feng H, Tian J, Wang HJ, Li M (2015) Personalized recommendations based on time-weighted overlapping community detection. Inf Manag 52(7):789–800
go back to reference Formoso V, Fernández D, Cacheda F, Carneiro V (2013) Using profile expansion techniques to alleviate the new user problem. Inf Process Manag 49(3):659–672 Formoso V, Fernández D, Cacheda F, Carneiro V (2013) Using profile expansion techniques to alleviate the new user problem. Inf Process Manag 49(3):659–672
go back to reference Gan M, Jiang R (2013) Improving accuracy and diversity of personalized recommendation through power law adjustments of user similarities. Decis Support Syst 55(3):811–821 Gan M, Jiang R (2013) Improving accuracy and diversity of personalized recommendation through power law adjustments of user similarities. Decis Support Syst 55(3):811–821
go back to reference Geng B, Li L, Jiao L, Gong M, Cai Q, Wu Y (2015) NNIA-RS: a multi-objective optimization based recommender system. Physica A 424:383–397MathSciNetMATH Geng B, Li L, Jiao L, Gong M, Cai Q, Wu Y (2015) NNIA-RS: a multi-objective optimization based recommender system. Physica A 424:383–397MathSciNetMATH
go back to reference Gogna A, Majumdar A (2015a) Matrix completion incorporating auxiliary information for recommender system design. Expert Syst Appl 42(14):5789–5799 Gogna A, Majumdar A (2015a) Matrix completion incorporating auxiliary information for recommender system design. Expert Syst Appl 42(14):5789–5799
go back to reference Ghazarian S, Nematbakhsh MA (2015) Enhancing memory-based collaborative filtering for group recommender systems. Expert Syst Appl 42(7):3801–3812 Ghazarian S, Nematbakhsh MA (2015) Enhancing memory-based collaborative filtering for group recommender systems. Expert Syst Appl 42(7):3801–3812
go back to reference Gharibshah J, Jalili M (2014) Connectedness of users-items networks and recommender systems. Appl Math Comput 243:578–584MathSciNetMATH Gharibshah J, Jalili M (2014) Connectedness of users-items networks and recommender systems. Appl Math Comput 243:578–584MathSciNetMATH
go back to reference Ghazanfar MA, Prügel-Bennett A (2014) Leveraging clustering approaches to solve the gray-sheep users problem in recommender systems. Expert Syst Appl 41(7):3261–3275 Ghazanfar MA, Prügel-Bennett A (2014) Leveraging clustering approaches to solve the gray-sheep users problem in recommender systems. Expert Syst Appl 41(7):3261–3275
go back to reference Ghazanfar MA, Prügel-Bennett A, Szedmak S (2012) Kernel-mapping recommender system algorithms. Inf Sci 208:81–104 Ghazanfar MA, Prügel-Bennett A, Szedmak S (2012) Kernel-mapping recommender system algorithms. Inf Sci 208:81–104
go back to reference Gogna A, Majumdar A (2015b) A comprehensive recommender system model: improving accuracy for both warm and cold start users. IEEE Access 3:2803–2813 Gogna A, Majumdar A (2015b) A comprehensive recommender system model: improving accuracy for both warm and cold start users. IEEE Access 3:2803–2813
go back to reference Hawalah A, Fasli M (2014) Utilizing contextual ontological user profiles for personalized recommendations. Expert Syst Appl 41(10):4777–4797 Hawalah A, Fasli M (2014) Utilizing contextual ontological user profiles for personalized recommendations. Expert Syst Appl 41(10):4777–4797
go back to reference Hernando A, Moya R, Ortega F, Bobadilla J (2014) Hierarchical graph maps for visualization of collaborative recommender systems. J Inf Sci 40(1):97–106 Hernando A, Moya R, Ortega F, Bobadilla J (2014) Hierarchical graph maps for visualization of collaborative recommender systems. J Inf Sci 40(1):97–106
go back to reference Hernando A, Bobadilla J, Ortega F, Tejedor J (2013) Incorporating reliability measurements into the predictions of a recommender system. Inf Sci 218:1–16MathSciNet Hernando A, Bobadilla J, Ortega F, Tejedor J (2013) Incorporating reliability measurements into the predictions of a recommender system. Inf Sci 218:1–16MathSciNet
go back to reference Horsburgh B, Craw S, Massie S (2015) Learning pseudo-tags to augment sparse tagging in hybrid music recommender systems. Artif Intell 219:25–39 Horsburgh B, Craw S, Massie S (2015) Learning pseudo-tags to augment sparse tagging in hybrid music recommender systems. Artif Intell 219:25–39
go back to reference Hoseini E, Hashemi S, Hamzeh A (2012) SPCF: a stepwise partitioning for collaborative filtering to alleviate sparsity problems. J Inf Sci 38(6):578–592 Hoseini E, Hashemi S, Hamzeh A (2012) SPCF: a stepwise partitioning for collaborative filtering to alleviate sparsity problems. J Inf Sci 38(6):578–592
go back to reference Hostler RE, Yoon VY, Guimaraes T (2012) Recommendation agent impact on consumer online shopping: the movie magic case study. Expert Syst Appl 39(3):2989–2999 Hostler RE, Yoon VY, Guimaraes T (2012) Recommendation agent impact on consumer online shopping: the movie magic case study. Expert Syst Appl 39(3):2989–2999
go back to reference Hsiao KJ, Kulesza A, Hero AO (2014) Social collaborative retrieval. IEEE J Sel Top Signal Process 8(4):680–689 Hsiao KJ, Kulesza A, Hero AO (2014) Social collaborative retrieval. IEEE J Sel Top Signal Process 8(4):680–689
go back to reference Hwang WS, Lee HJ, Kim SW, Won Y, Lee MS (2016) Efficient recommendation methods using category experts for a large dataset. Inf Fusion 28:75–82 Hwang WS, Lee HJ, Kim SW, Won Y, Lee MS (2016) Efficient recommendation methods using category experts for a large dataset. Inf Fusion 28:75–82
go back to reference Huang S, Ma J, Cheng P, Wang S (2015) A hybrid multigroup coclustering recommendation framework based on information fusion. ACM Trans Intell Syst Technol 6(2):27 Huang S, Ma J, Cheng P, Wang S (2015) A hybrid multigroup coclustering recommendation framework based on information fusion. ACM Trans Intell Syst Technol 6(2):27
go back to reference Huang CL, Yeh PH, Lin CW, Wu DC (2014) Utilizing user tag-based interests in recommender systems for social resource sharing websites. Knowl Based Syst 56:86–96 Huang CL, Yeh PH, Lin CW, Wu DC (2014) Utilizing user tag-based interests in recommender systems for social resource sharing websites. Knowl Based Syst 56:86–96
go back to reference Hu L, Song G, Xie Z, Zhao K (2014) Personalized recommendation algorithm based on preference features. Tsinghua Sci Technol 19(3):293–299 Hu L, Song G, Xie Z, Zhao K (2014) Personalized recommendation algorithm based on preference features. Tsinghua Sci Technol 19(3):293–299
go back to reference Javari A, Jalili M (2015) Accurate and novel recommendations: an algorithm based on popularity forecasting. ACM Trans Intell Syst Technol 5(4):56 Javari A, Jalili M (2015) Accurate and novel recommendations: an algorithm based on popularity forecasting. ACM Trans Intell Syst Technol 5(4):56
go back to reference Kaššák O, Kompan M, Bieliková M (2015) Personalized hybrid recommendation for group of users: top-N multimedia recommender. Inf Process Manag Kaššák O, Kompan M, Bieliková M (2015) Personalized hybrid recommendation for group of users: top-N multimedia recommender. Inf Process Manag
go back to reference Kagita VR, Pujari AK, Padmanabhan V (2015) Virtual user approach for group recommender systems using precedence relations. Inf Sci 294:15–30MATH Kagita VR, Pujari AK, Padmanabhan V (2015) Virtual user approach for group recommender systems using precedence relations. Inf Sci 294:15–30MATH
go back to reference Kaleli C (2014) An entropy-based neighbor selection approach for collaborative filtering. Knowl Based Syst 56:273–280 Kaleli C (2014) An entropy-based neighbor selection approach for collaborative filtering. Knowl Based Syst 56:273–280
go back to reference Kolomvatsos K, Anagnostopoulos C, Hadjiefthymiades S (2014) An efficient recommendation system based on the optimal stopping theory. Expert Syst Appl 41(15):6796–6806 Kolomvatsos K, Anagnostopoulos C, Hadjiefthymiades S (2014) An efficient recommendation system based on the optimal stopping theory. Expert Syst Appl 41(15):6796–6806
go back to reference Krestel R, Fankhauser P (2012) Personalized topic-based tag recommendation. Neurocomputing 76(1):61–70 Krestel R, Fankhauser P (2012) Personalized topic-based tag recommendation. Neurocomputing 76(1):61–70
go back to reference Kim HN, El Saddik A (2015) A stochastic approach to group recommendations in social media systems. Inf Syst 50:76–93 Kim HN, El Saddik A (2015) A stochastic approach to group recommendations in social media systems. Inf Syst 50:76–93
go back to reference Kim H, Kim HJ (2014) A framework for tag-aware recommender systems. Expert Syst Appl 41(8):4000–4009 Kim H, Kim HJ (2014) A framework for tag-aware recommender systems. Expert Syst Appl 41(8):4000–4009
go back to reference Kim HN, Ha I, Lee KS, Jo GS, El-Saddik A (2011a) Collaborative user modeling for enhanced content filtering in recommender systems. Decis Support Syst 51(4):772–781 Kim HN, Ha I, Lee KS, Jo GS, El-Saddik A (2011a) Collaborative user modeling for enhanced content filtering in recommender systems. Decis Support Syst 51(4):772–781
go back to reference Kim HN, El-Saddik A, Jo GS (2011b) Collaborative error-reflected models for cold-start recommender systems. Decis Support Syst 51(3):519–531 Kim HN, El-Saddik A, Jo GS (2011b) Collaborative error-reflected models for cold-start recommender systems. Decis Support Syst 51(3):519–531
go back to reference Koren Y (2010) Factor in the neighbors: Scalable and accurate collaborative filtering. ACM Trans Knowl Discov Data 4(1):1 Koren Y (2010) Factor in the neighbors: Scalable and accurate collaborative filtering. ACM Trans Knowl Discov Data 4(1):1
go back to reference Langseth H, Nielsen TD (2015) Scalable learning of probabilistic latent models for collaborative filtering. Decis Support Syst 74:1–11 Langseth H, Nielsen TD (2015) Scalable learning of probabilistic latent models for collaborative filtering. Decis Support Syst 74:1–11
go back to reference Langseth H, Nielsen TD (2012) A latent model for collaborative filtering. Int J Approx Reason 53(4):447–466MathSciNet Langseth H, Nielsen TD (2012) A latent model for collaborative filtering. Int J Approx Reason 53(4):447–466MathSciNet
go back to reference Liu J, Sui C, Deng D, Wang J, Feng B, Liu W, Wu C (2016) Representing conditional preference by boosted regression trees for recommendation. Inf Sci 327:1–20 Liu J, Sui C, Deng D, Wang J, Feng B, Liu W, Wu C (2016) Representing conditional preference by boosted regression trees for recommendation. Inf Sci 327:1–20
go back to reference Liu W, Wu C, Feng B, Liu J (2015) Conditional preference in recommender systems. Expert Syst Appl 42(2):774–788 Liu W, Wu C, Feng B, Liu J (2015) Conditional preference in recommender systems. Expert Syst Appl 42(2):774–788
go back to reference Liu J, Wu C, Xiong Y, Liu W (2014a) List-wise probabilistic matrix factorization for recommendation. Inf Sci 278:434–447 Liu J, Wu C, Xiong Y, Liu W (2014a) List-wise probabilistic matrix factorization for recommendation. Inf Sci 278:434–447
go back to reference Liu H, Hu Z, Mian A, Tian H, Zhu X (2014b) A new user similarity model to improve the accuracy of collaborative filtering. Knowl Based Syst 56:156–166 Liu H, Hu Z, Mian A, Tian H, Zhu X (2014b) A new user similarity model to improve the accuracy of collaborative filtering. Knowl Based Syst 56:156–166
go back to reference Liu J, Wu C, Liu W (2013) Bayesian probabilistic matrix factorization with social relations and item contents for recommendation. Decis Support Syst 55(3):838–850 Liu J, Wu C, Liu W (2013) Bayesian probabilistic matrix factorization with social relations and item contents for recommendation. Decis Support Syst 55(3):838–850
go back to reference Liu Z, Qu W, Li H, Xie C (2010) A hybrid collaborative filtering recommendation mechanism for P2P networks. Future Gener Comput Syst 26(8):1409–1417 Liu Z, Qu W, Li H, Xie C (2010) A hybrid collaborative filtering recommendation mechanism for P2P networks. Future Gener Comput Syst 26(8):1409–1417
go back to reference Lika B, Kolomvatsos K, Hadjiefthymiades S (2014) Facing the cold start problem in recommender systems. Expert Syst Appl 41(4):2065–2073 Lika B, Kolomvatsos K, Hadjiefthymiades S (2014) Facing the cold start problem in recommender systems. Expert Syst Appl 41(4):2065–2073
go back to reference Li X, Chen H (2013) Recommendation as link prediction in bipartite graphs: a graph kernel-based machine learning approach. Decis Support Syst 54(2):880–890 Li X, Chen H (2013) Recommendation as link prediction in bipartite graphs: a graph kernel-based machine learning approach. Decis Support Syst 54(2):880–890
go back to reference Lv G, Hu C, Chen S (2015) Research on recommender system based on ontology and genetic algorithm. Neurocomputing Lv G, Hu C, Chen S (2015) Research on recommender system based on ontology and genetic algorithm. Neurocomputing
go back to reference Lu J, Wu D, Mao M, Wang W, Zhang G (2015) Recommender system application developments: a survey. Decis Support Syst 74:12–32 Lu J, Wu D, Mao M, Wang W, Zhang G (2015) Recommender system application developments: a survey. Decis Support Syst 74:12–32
go back to reference Luo X, Zhou M, Xia Y, Zhu Q (2014) An efficient non-negative matrix-factorization-based approach to collaborative filtering for recommender systems. IEEE Trans Industr Inf 10(2):1273–1284 Luo X, Zhou M, Xia Y, Zhu Q (2014) An efficient non-negative matrix-factorization-based approach to collaborative filtering for recommender systems. IEEE Trans Industr Inf 10(2):1273–1284
go back to reference Luo X, Xia Y, Zhu Q (2012) Incremental collaborative filtering recommender based on regularized matrix factorization. Knowl Based Syst 27:271–280 Luo X, Xia Y, Zhu Q (2012) Incremental collaborative filtering recommender based on regularized matrix factorization. Knowl Based Syst 27:271–280
go back to reference Ma H, Zhou TC, Lyu MR, King I (2011) Improving recommender systems by incorporating social contextual information. ACM Trans Inf Syst 29(2):9 Ma H, Zhou TC, Lyu MR, King I (2011) Improving recommender systems by incorporating social contextual information. ACM Trans Inf Syst 29(2):9
go back to reference Mehta S, Banati H (2014) Context aware filtering using social behavior of frogs. Swarm Evol Comput 17:25–36 Mehta S, Banati H (2014) Context aware filtering using social behavior of frogs. Swarm Evol Comput 17:25–36
go back to reference Moreno MN, Segrera S, López VF, Muñoz MD, Sánchez ÁL (2016) Web mining based framework for solving usual problems in recommender systems. A case study for movies’ recommendation. Neurocomputing 176:72–80 Moreno MN, Segrera S, López VF, Muñoz MD, Sánchez ÁL (2016) Web mining based framework for solving usual problems in recommender systems. A case study for movies’ recommendation. Neurocomputing 176:72–80
go back to reference Moradi P, Ahmadian S, Akhlaghian F (2015) An effective trust-based recommendation method using a novel graph clustering algorithm. Physica A 436:462–481 Moradi P, Ahmadian S, Akhlaghian F (2015) An effective trust-based recommendation method using a novel graph clustering algorithm. Physica A 436:462–481
go back to reference Movahedian H, Khayyambashi MR (2014) Folksonomy-based user interest and disinterest profiling for improved recommendations: an ontological approach. J Inf Sci 40(5):594–610 Movahedian H, Khayyambashi MR (2014) Folksonomy-based user interest and disinterest profiling for improved recommendations: an ontological approach. J Inf Sci 40(5):594–610
go back to reference Najafabadi MK, Mahrin MNR (2016) A systematic literature review on the state of research and practice of collaborative filtering technique and implicit feedback. Artif Intell Rev 45(2):167–201 Najafabadi MK, Mahrin MNR (2016) A systematic literature review on the state of research and practice of collaborative filtering technique and implicit feedback. Artif Intell Rev 45(2):167–201
go back to reference Najafabadi MK, Mahrin MNR, Chuprat S, Sarkan HM (2017) Improving the accuracy of collaborative filtering recommendations using clustering and association rules mining on implicit data. Comput Hum Behav 67:113–128 Najafabadi MK, Mahrin MNR, Chuprat S, Sarkan HM (2017) Improving the accuracy of collaborative filtering recommendations using clustering and association rules mining on implicit data. Comput Hum Behav 67:113–128
go back to reference Nakatsuji M, Toda H, Sawada H, Zheng JG, Hendler JA (2016) Semantic sensitive tensor factorization. Artif Intell 230:224–245MathSciNetMATH Nakatsuji M, Toda H, Sawada H, Zheng JG, Hendler JA (2016) Semantic sensitive tensor factorization. Artif Intell 230:224–245MathSciNetMATH
go back to reference Nakatsuji M, Fujiwara Y (2014) Linked taxonomies to capture users’ subjective assessments of items to facilitate accurate collaborative filtering. Artif Intell 207:52–68MathSciNet Nakatsuji M, Fujiwara Y (2014) Linked taxonomies to capture users’ subjective assessments of items to facilitate accurate collaborative filtering. Artif Intell 207:52–68MathSciNet
go back to reference Nikolakopoulos AN, Kouneli MA, Garofalakis JD (2015) Hierarchical itemspace rank: exploiting hierarchy to alleviate sparsity in ranking-based recommendation. Neurocomputing 163:126–136 Nikolakopoulos AN, Kouneli MA, Garofalakis JD (2015) Hierarchical itemspace rank: exploiting hierarchy to alleviate sparsity in ranking-based recommendation. Neurocomputing 163:126–136
go back to reference Pan W, Liu Z, Ming Z, Zhong H, Wang X, Xu C (2015a) Compressed knowledge transfer via factorization machine for heterogeneous collaborative recommendation. Knowl Based Syst 85:234–244 Pan W, Liu Z, Ming Z, Zhong H, Wang X, Xu C (2015a) Compressed knowledge transfer via factorization machine for heterogeneous collaborative recommendation. Knowl Based Syst 85:234–244
go back to reference Pan W, Zhong H, Xu C, Ming Z (2015b) Adaptive bayesian personalized ranking for heterogeneous implicit feedbacks. Knowl Based Syst 73:173–180 Pan W, Zhong H, Xu C, Ming Z (2015b) Adaptive bayesian personalized ranking for heterogeneous implicit feedbacks. Knowl Based Syst 73:173–180
go back to reference Pan W, Yang Q (2013) Transfer learning in heterogeneous collaborative filtering domains. Artif Intell 197:39–55MathSciNetMATH Pan W, Yang Q (2013) Transfer learning in heterogeneous collaborative filtering domains. Artif Intell 197:39–55MathSciNetMATH
go back to reference Park DH, Kim HK, Choi IY, Kim JK (2012) A literature review and classification of recommender systems research. Expert Syst Appl 39(11):10059–10072 Park DH, Kim HK, Choi IY, Kim JK (2012) A literature review and classification of recommender systems research. Expert Syst Appl 39(11):10059–10072
go back to reference Peng F, Lu J, Wang Y, Yi-Da Xu R, Ma C, Yang J (2016) N-dimensional Markov random field prior for cold-start recommendation. Neurocomputing 191:187–199 Peng F, Lu J, Wang Y, Yi-Da Xu R, Ma C, Yang J (2016) N-dimensional Markov random field prior for cold-start recommendation. Neurocomputing 191:187–199
go back to reference Patra BK, Launonen R, Ollikainen V, Nandi S (2015) A new similarity measure using Bhattacharyya coefficient for collaborative filtering in sparse data. Knowl Based Syst 82:163–177 Patra BK, Launonen R, Ollikainen V, Nandi S (2015) A new similarity measure using Bhattacharyya coefficient for collaborative filtering in sparse data. Knowl Based Syst 82:163–177
go back to reference Pirasteh P, Hwang D, Jung JJ (2015) Exploiting matrix factorization to asymmetric user similarities in recommendation systems. Knowl Based Syst 83:51–57 Pirasteh P, Hwang D, Jung JJ (2015) Exploiting matrix factorization to asymmetric user similarities in recommendation systems. Knowl Based Syst 83:51–57
go back to reference Polatidis N, Georgiadis CK (2016) A multi-level collaborative filtering method that improves recommendations. Expert Syst Appl 48:100–110 Polatidis N, Georgiadis CK (2016) A multi-level collaborative filtering method that improves recommendations. Expert Syst Appl 48:100–110
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. Eng Appl Artif Intell 46:58–66 Ranjbar M, Moradi P, Azami M, Jalili M (2015) An imputation-based matrix factorization method for improving accuracy of collaborative filtering systems. Eng Appl Artif Intell 46:58–66
go back to reference Ramezani M, Moradi P, Akhlaghian F (2014) A pattern mining approach to enhance the accuracy of collaborative filtering in sparse data domains. Physica A 408:72–84 Ramezani M, Moradi P, Akhlaghian F (2014) A pattern mining approach to enhance the accuracy of collaborative filtering in sparse data domains. Physica A 408:72–84
go back to reference Rana C, Jain SK (2014) An evolutionary clustering algorithm based on temporal features for dynamic recommender systems. Swarm Evol Comput 14:21–30 Rana C, Jain SK (2014) An evolutionary clustering algorithm based on temporal features for dynamic recommender systems. Swarm Evol Comput 14:21–30
go back to reference Rafeh R, Bahrehmand A (2012) An adaptive approach to dealing with unstable behaviour of users in collaborative filtering systems. J Inf Sci 38(3):205–221 Rafeh R, Bahrehmand A (2012) An adaptive approach to dealing with unstable behaviour of users in collaborative filtering systems. J Inf Sci 38(3):205–221
go back to reference Ren Y, Li G, Zhang J, Zhou W (2013) Lazy collaborative filtering for data sets with missing values. IEEE Trans Cybern 43(6):1822–1834 Ren Y, Li G, Zhang J, Zhou W (2013) Lazy collaborative filtering for data sets with missing values. IEEE Trans Cybern 43(6):1822–1834
go back to reference Salah A, Rogovschi N, Nadif M (2016) A dynamic collaborative filtering system via a weighted clustering approach. Neurocomputing 175:206–215 Salah A, Rogovschi N, Nadif M (2016) A dynamic collaborative filtering system via a weighted clustering approach. Neurocomputing 175:206–215
go back to reference Shambour Q, Lu J (2015) An effective recommender system by unifying user and item trust information for B2B applications. J Comput Syst Sci 81(7):1110–1126MathSciNetMATH Shambour Q, Lu J (2015) An effective recommender system by unifying user and item trust information for B2B applications. J Comput Syst Sci 81(7):1110–1126MathSciNetMATH
go back to reference Shambour Q, Lu J (2012) A trust-semantic fusion-based recommendation approach for e-business applications. Decis Support Syst 54(1):768–780 Shambour Q, Lu J (2012) A trust-semantic fusion-based recommendation approach for e-business applications. Decis Support Syst 54(1):768–780
go back to reference Shang MS, Zhang ZK, Zhou T, Zhang YC (2010) Collaborative filtering with diffusion-based similarity on tripartite graphs. Physica A 389(6):1259–1264 Shang MS, Zhang ZK, Zhou T, Zhang YC (2010) Collaborative filtering with diffusion-based similarity on tripartite graphs. Physica A 389(6):1259–1264
go back to reference Shinde SK, Kulkarni U (2012) Hybrid personalized recommender system using centering-bunching based clustering algorithm. Expert Syst Appl 39(1):1381–1387 Shinde SK, Kulkarni U (2012) Hybrid personalized recommender system using centering-bunching based clustering algorithm. Expert Syst Appl 39(1):1381–1387
go back to reference Sun Z, Han L, Huang W, Wang X, Zeng X, Wang M, Yan H (2015) Recommender systems based on social networks. J Syst Softw 99:109–119 Sun Z, Han L, Huang W, Wang X, Zeng X, Wang M, Yan H (2015) Recommender systems based on social networks. J Syst Softw 99:109–119
go back to reference Tan S, Bu J, Qin X, Chen C, Cai D (2014) Cross domain recommendation based on multi-type media fusion. Neurocomputing 127:124–134 Tan S, Bu J, Qin X, Chen C, Cai D (2014) Cross domain recommendation based on multi-type media fusion. Neurocomputing 127:124–134
go back to reference Toledo RY, Mota YC, Martínez L (2015) Correcting noisy ratings in collaborative recommender systems. Knowl-Based Syst 76:96–108 Toledo RY, Mota YC, Martínez L (2015) Correcting noisy ratings in collaborative recommender systems. Knowl-Based Syst 76:96–108
go back to reference Tyagi S, Bharadwaj KK (2013) Enhancing collaborative filtering recommendations by utilizing multi-objective particle swarm optimization embedded association rule mining. Swarm Evol Comput 13:1–12 Tyagi S, Bharadwaj KK (2013) Enhancing collaborative filtering recommendations by utilizing multi-objective particle swarm optimization embedded association rule mining. Swarm Evol Comput 13:1–12
go back to reference Tsai CF, Hung C (2012) Cluster ensembles in collaborative filtering recommendation. Appl Soft Comput 12(4):1417–1425 Tsai CF, Hung C (2012) Cluster ensembles in collaborative filtering recommendation. Appl Soft Comput 12(4):1417–1425
go back to reference Umyarov A, Tuzhilin A (2011) Using external aggregate ratings for improving individual recommendations. ACM Trans Web 5(1):3 Umyarov A, Tuzhilin A (2011) Using external aggregate ratings for improving individual recommendations. ACM Trans Web 5(1):3
go back to reference Wang Z, Yu X, Feng N, Wang Z (2014a) An improved collaborative movie recommendation system using computational intelligence. J VisLang Comput 25(6):667–675 Wang Z, Yu X, Feng N, Wang Z (2014a) An improved collaborative movie recommendation system using computational intelligence. J VisLang Comput 25(6):667–675
go back to reference Wang S, Sun J, Gao BJ, Ma J (2014b) VSRank: a novel framework for ranking-based collaborative filtering. ACM Trans Intell Syst Technol 5(3):51 Wang S, Sun J, Gao BJ, Ma J (2014b) VSRank: a novel framework for ranking-based collaborative filtering. ACM Trans Intell Syst Technol 5(3):51
go back to reference Wang J, Ke L (2014) Feature subspace transfer for collaborative filtering. Neurocomputing 136:1–6 Wang J, Ke L (2014) Feature subspace transfer for collaborative filtering. Neurocomputing 136:1–6
go back to reference Wen Y, Liu Y, Zhang ZJ, Xiong F, Cao W (2014) Compare two community-based personalized information recommendation algorithms. Physica A 398:199–209 Wen Y, Liu Y, Zhang ZJ, Xiong F, Cao W (2014) Compare two community-based personalized information recommendation algorithms. Physica A 398:199–209
go back to reference Wu H, Yue K, Pei Y, Li B, Zhao Y, Dong F (2016) Collaborative topic regression with social trust ensemble for recommendation in social media systems. Knowl Based Syst Wu H, Yue K, Pei Y, Li B, Zhao Y, Dong F (2016) Collaborative topic regression with social trust ensemble for recommendation in social media systems. Knowl Based Syst
go back to reference Wu ML, Chang CH, Liu RZ (2014) Integrating content-based filtering with collaborative filtering using co-clustering with augmented matrices. Expert Syst Appl 41(6):2754–2761 Wu ML, Chang CH, Liu RZ (2014) Integrating content-based filtering with collaborative filtering using co-clustering with augmented matrices. Expert Syst Appl 41(6):2754–2761
go back to reference Xie F, Chen Z, Shang J, Feng X, Li J (2015) A link prediction approach for item recommendation with complex number. Knowl Based Syst 81:148–158 Xie F, Chen Z, Shang J, Feng X, Li J (2015) A link prediction approach for item recommendation with complex number. Knowl Based Syst 81:148–158
go back to reference Xie F, Chen Z, Shang J, Fox GC (2014) Grey forecast model for accurate recommendation in presence of data sparsity and correlation. Knowl Based Syst 69:179–190 Xie F, Chen Z, Shang J, Fox GC (2014) Grey forecast model for accurate recommendation in presence of data sparsity and correlation. Knowl Based Syst 69:179–190
go back to reference Xu Y, Yin J (2015) Collaborative recommendation with user generated content. Eng Appl Artif Intell 45:281–294 Xu Y, Yin J (2015) Collaborative recommendation with user generated content. Eng Appl Artif Intell 45:281–294
go back to reference Yakut I, Polat H (2012) Estimating NBC-based recommendations on arbitrarily partitioned data with privacy. Knowl Based Syst 36:353–362 Yakut I, Polat H (2012) Estimating NBC-based recommendations on arbitrarily partitioned data with privacy. Knowl Based Syst 36:353–362
go back to reference Yan S, Zheng X, Chen D, Wang Y (2013) Exploiting two-faceted web of trust for enhanced-quality recommendations. Expert Syst Appl 40(17):7080–7095 Yan S, Zheng X, Chen D, Wang Y (2013) Exploiting two-faceted web of trust for enhanced-quality recommendations. Expert Syst Appl 40(17):7080–7095
go back to reference Yera R, Castro J, Martínez L (2016) A fuzzy model for managing natural noise in recommender systems. Appl Soft Comput 40:187–198 Yera R, Castro J, Martínez L (2016) A fuzzy model for managing natural noise in recommender systems. Appl Soft Comput 40:187–198
go back to reference Yu H, Kim S (2012) SVM tutorial–classification, regression and ranking handbook of natural computing. Springer, Berlin, pp 479–506 Yu H, Kim S (2012) SVM tutorial–classification, regression and ranking handbook of natural computing. Springer, Berlin, pp 479–506
go back to reference Zahra S, Ghazanfar MA, Khalid A, Azam MA, Naeem U, Prugel-Bennett A (2015) Novel centroid selection approaches for KMeans-clustering based recommender systems. Inf Sci 320:156–189MathSciNet Zahra S, Ghazanfar MA, Khalid A, Azam MA, Naeem U, Prugel-Bennett A (2015) Novel centroid selection approaches for KMeans-clustering based recommender systems. Inf Sci 320:156–189MathSciNet
go back to reference Zeng W, Zhu YX, Lü L, Zhou T (2011) Negative ratings play a positive role in information filtering. Physica A 390(23):4486–4493MathSciNet Zeng W, Zhu YX, Lü L, Zhou T (2011) Negative ratings play a positive role in information filtering. Physica A 390(23):4486–4493MathSciNet
go back to reference Zhao W, Guan Z, Liu Z (2015) Ranking on heterogeneous manifolds for tag recommendation in social tagging services. Neurocomputing 148:521–534 Zhao W, Guan Z, Liu Z (2015) Ranking on heterogeneous manifolds for tag recommendation in social tagging services. Neurocomputing 148:521–534
go back to reference Zhou X, He J, Huang G, Zhang Y (2015) SVD-based incremental approaches for recommender systems. J Comput Syst Sci 81(4):717–733MathSciNetMATH Zhou X, He J, Huang G, Zhang Y (2015) SVD-based incremental approaches for recommender systems. J Comput Syst Sci 81(4):717–733MathSciNetMATH
go back to reference Zhang J, Peng Q, Sun S, Liu C (2014) Collaborative filtering recommendation algorithm based on user preference derived from item domain features. Physica A 396:66–76 Zhang J, Peng Q, Sun S, Liu C (2014) Collaborative filtering recommendation algorithm based on user preference derived from item domain features. Physica A 396:66–76
go back to reference Zhang Z, Lin H, Liu K, Wu D, Zhang G, Lu J (2013) A hybrid fuzzy-based personalized recommender system for telecom products/services. Inf Sci 235:117–129 Zhang Z, Lin H, Liu K, Wu D, Zhang G, Lu J (2013) A hybrid fuzzy-based personalized recommender system for telecom products/services. Inf Sci 235:117–129
go back to reference Zhang Z, Zhao K, Zha H (2012) Inducible regularization for low-rank matrix factorizations for collaborative filtering. Neurocomputing 97:52–62 Zhang Z, Zhao K, Zha H (2012) Inducible regularization for low-rank matrix factorizations for collaborative filtering. Neurocomputing 97:52–62
go back to reference Zhang ZK, Zhou T, Zhang YC (2010) Personalized recommendation via integrated diffusion on user-item-tag tripartite graphs. Physica A 389(1):179–186MathSciNet Zhang ZK, Zhou T, Zhang YC (2010) Personalized recommendation via integrated diffusion on user-item-tag tripartite graphs. Physica A 389(1):179–186MathSciNet
go back to reference Zhu T, Ren Y, Zhou W, Rong J, Xiong P (2014) An effective privacy preserving algorithm for neighborhood-based collaborative filtering. Future Gener Comput Syst 36:142–155 Zhu T, Ren Y, Zhou W, Rong J, Xiong P (2014) An effective privacy preserving algorithm for neighborhood-based collaborative filtering. Future Gener Comput Syst 36:142–155
Metadata
Title
A survey on data mining techniques in recommender systems
Authors
Maryam Khanian Najafabadi
Azlinah Hj. Mohamed
Mohd Naz’ri Mahrin
Publication date
07-11-2017
Publisher
Springer Berlin Heidelberg
Published in
Soft Computing / Issue 2/2019
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-017-2918-7

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