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Published in: Computing 8/2018

07-06-2018

A novel recommendation system based on semantics and context awareness

Author: Qin Yang

Published in: Computing | Issue 8/2018

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Abstract

The existing content-based recommendation methods have two major limitations. First, due to the defects of the items and the user model matching algorithms, the recommendation results are very narrow. Second, scant attention is paid to the scenario, making the recommendation system not context-aware. It is essential to improve user satisfaction through high-quality recommendation. In this paper, two state-of-the-art methods are analyzed and extended to enhance recommendation performance. The first method is the context-aware recommender, which integrates context information into the recommendation process. The second method is the semantic analysis-based recommender, which incorporates domain semantics. Despite their compatibility, the challenge is to combine them in a way that will fully exploit their potential. An improved content-based model is proposed in this paper incorporating both semantics and context. Context-aware recommendation is performed to improve sensitivity to the context. Semantic relevance-based instance similarity is computed to address the problem of narrowness. The proposed recommendation system is evaluated using metrics (for instance, recall metric) and paralleled with the current methods grounded on the content. Results demonstrate the superiority of the proposed system in terms of accuracy.

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Literature
1.
go back to reference Lekakos G, Caravelas P (2008) A hybrid approach for movie recommendation. Multimed Tools Appl 36(1–2):55–70CrossRef Lekakos G, Caravelas P (2008) A hybrid approach for movie recommendation. Multimed Tools Appl 36(1–2):55–70CrossRef
2.
go back to reference Kuo FF, Chiang MF, Shan MK, Lee SY (2005) Emotion-based music recommendation by association discovery from film music. In: ACM international conference on multimedia, 2005, vol 36(4), pp 507–510 Kuo FF, Chiang MF, Shan MK, Lee SY (2005) Emotion-based music recommendation by association discovery from film music. In: ACM international conference on multimedia, 2005, vol 36(4), pp 507–510
3.
go back to reference Bogers T (2010) Movie recommendation using random walks over the contextual graph. In: Proceedings of international workshop on context, 2010 Bogers T (2010) Movie recommendation using random walks over the contextual graph. In: Proceedings of international workshop on context, 2010
4.
go back to reference Unger M, Bar A, Shapira B, Rokach L (2016) Towards latent context-aware recommendation systems. Knowl-Based Syst 104:165–178CrossRef Unger M, Bar A, Shapira B, Rokach L (2016) Towards latent context-aware recommendation systems. Knowl-Based Syst 104:165–178CrossRef
5.
go back to reference Pan W, Ming Z (2017) Collaborative recommendation with multiclass preference context. IEEE Intell Syst 32(2):45–51CrossRef Pan W, Ming Z (2017) Collaborative recommendation with multiclass preference context. IEEE Intell Syst 32(2):45–51CrossRef
6.
go back to reference Golbeck J (2006) Generating predictive movie recommendations from trust in social networks. Lect Notes Comput Sci 3986:93–104CrossRef Golbeck J (2006) Generating predictive movie recommendations from trust in social networks. Lect Notes Comput Sci 3986:93–104CrossRef
7.
go back to reference Viana W, Braga R, Lemos FDA, Souza JMOD, Carmo RAF (2014) Mobile photo recommendation and logbook generation using context-tagged images. IEEE Multimed 21(1):24–34CrossRef Viana W, Braga R, Lemos FDA, Souza JMOD, Carmo RAF (2014) Mobile photo recommendation and logbook generation using context-tagged images. IEEE Multimed 21(1):24–34CrossRef
8.
go back to reference Said A, Berkovsky S, Luca EWD, Hermanns J (2011) In: Proceedings of the 2nd challenge on context-aware movie recommendation, challenge on context-aware movie recommendation, 2011 Said A, Berkovsky S, Luca EWD, Hermanns J (2011) In: Proceedings of the 2nd challenge on context-aware movie recommendation, challenge on context-aware movie recommendation, 2011
9.
go back to reference Winoto P, Tang TY (2010) The role of user mood in movie recommendations. Expert Syst Appl 37(8):6086–6092CrossRef Winoto P, Tang TY (2010) The role of user mood in movie recommendations. Expert Syst Appl 37(8):6086–6092CrossRef
10.
go back to reference Shi Y, Larson M, Hanjalic A (2010) Mining mood-specific movie similarity with matrix factorization for context-aware recommendation. In: Workshop on context-aware movie recommendation, 2010, vol 4(1), pp 34–40 Shi Y, Larson M, Hanjalic A (2010) Mining mood-specific movie similarity with matrix factorization for context-aware recommendation. In: Workshop on context-aware movie recommendation, 2010, vol 4(1), pp 34–40
11.
go back to reference Choi SM, Ko SK, Han YS (2012) A movie recommendation algorithm based on genre correlations. Expert Syst Appl 39(9):8079–8085CrossRef Choi SM, Ko SK, Han YS (2012) A movie recommendation algorithm based on genre correlations. Expert Syst Appl 39(9):8079–8085CrossRef
12.
go back to reference Biancalana C, Gasparetti F, Micarelli A, Miola A, Sansonetti G (2011) Context-aware movie recommendation based on signal processing and machine learning. Chall Context-aware Movie Recomm 2011:5–10 Biancalana C, Gasparetti F, Micarelli A, Miola A, Sansonetti G (2011) Context-aware movie recommendation based on signal processing and machine learning. Chall Context-aware Movie Recomm 2011:5–10
13.
go back to reference Borg M, Wnuk K, Regnell B, Runeson P (2016) Supporting change impact analysis using a recommendation system: an industrial case study in a safety-critical context. IEEE Trans Softw Eng PP(99):135–151 Borg M, Wnuk K, Regnell B, Runeson P (2016) Supporting change impact analysis using a recommendation system: an industrial case study in a safety-critical context. IEEE Trans Softw Eng PP(99):135–151
14.
go back to reference Ostuni VC, Gentile G, Noia TD, Mirizzi R, Romito D (2013) Mobile movie recommendations with linked data. In: International conference on availability, 2013, vol 8127, pp 400–415 Ostuni VC, Gentile G, Noia TD, Mirizzi R, Romito D (2013) Mobile movie recommendations with linked data. In: International conference on availability, 2013, vol 8127, pp 400–415
15.
go back to reference Jeong WH, Kim SJ, Park DS, Jin K (2013) Performance improvement of a movie recommendation system based on personal propensity and secure collaborative filtering. J Inf Process Syst 9(1):157–172CrossRef Jeong WH, Kim SJ, Park DS, Jin K (2013) Performance improvement of a movie recommendation system based on personal propensity and secure collaborative filtering. J Inf Process Syst 9(1):157–172CrossRef
16.
go back to reference Jakob N, Weber SH, Gurevych I (2009) Beyond the stars: exploiting free-text user reviews to improve the accuracy of movie recommendations. In: International Cikm workshop on topic-sentiment analysis for mass opinion, 2009, vol 59(1), pp 57–64 Jakob N, Weber SH, Gurevych I (2009) Beyond the stars: exploiting free-text user reviews to improve the accuracy of movie recommendations. In: International Cikm workshop on topic-sentiment analysis for mass opinion, 2009, vol 59(1), pp 57–64
17.
go back to reference Chen CC, Huang TC, Park JJ, Yen NY (2015) Real-time smartphone sensing and recommendations towards context-awareness shopping. Multimed Syst 21(1):61–72CrossRef Chen CC, Huang TC, Park JJ, Yen NY (2015) Real-time smartphone sensing and recommendations towards context-awareness shopping. Multimed Syst 21(1):61–72CrossRef
18.
go back to reference Benini S, Canini L, Leonardi R (2011) A connotative space for supporting movie affective recommendation. IEEE Trans Multimed 13(6):1356–1370CrossRef Benini S, Canini L, Leonardi R (2011) A connotative space for supporting movie affective recommendation. IEEE Trans Multimed 13(6):1356–1370CrossRef
19.
go back to reference Alhamid MF, Rawashdeh M, Dong H, Hossain MA, Alelaiwi A (2016) RecAm: a collaborative context-aware framework for multimedia recommendations in an ambient intelligence environment. Multimed Syst 22(5):587–601CrossRef Alhamid MF, Rawashdeh M, Dong H, Hossain MA, Alelaiwi A (2016) RecAm: a collaborative context-aware framework for multimedia recommendations in an ambient intelligence environment. Multimed Syst 22(5):587–601CrossRef
20.
go back to reference Chen Q, Aickelin U (2008) Movie recommendation systems using an artificial immune system. Social Science Electronic Publishing, New York Chen Q, Aickelin U (2008) Movie recommendation systems using an artificial immune system. Social Science Electronic Publishing, New York
21.
go back to reference He Q, Pei J, Kifer D, Mitra P, Giles L (2010) Context-aware citation recommendation. In: International conference on world wide web, 2010, pp 421–430 He Q, Pei J, Kifer D, Mitra P, Giles L (2010) Context-aware citation recommendation. In: International conference on world wide web, 2010, pp 421–430
22.
go back to reference Baltrunas L, Ludwig B, Ricci F (2011) Matrix factorization techniques for context aware recommendation. In: ACM conference on recommender systems, 2011, pp 301–304 Baltrunas L, Ludwig B, Ricci F (2011) Matrix factorization techniques for context aware recommendation. In: ACM conference on recommender systems, 2011, pp 301–304
23.
go back to reference Hariri N, Mobasher B, Burke R (2012) Context-aware music recommendation based on latenttopic sequential patterns. In: ACM conference on recommender systems, 2012, pp 131–138 Hariri N, Mobasher B, Burke R (2012) Context-aware music recommendation based on latenttopic sequential patterns. In: ACM conference on recommender systems, 2012, pp 131–138
24.
go back to reference Genuit K, André F (2014) Applicability of measurement procedures in soundscape context—experiences and recommendations. J Acoust Soc Am 135(4):2186CrossRef Genuit K, André F (2014) Applicability of measurement procedures in soundscape context—experiences and recommendations. J Acoust Soc Am 135(4):2186CrossRef
25.
go back to reference Tang J, Hu X, Gao H, Liu H (2012) Exploiting local and global social context for recommendation. In: International joint conference on artificial intelligence, 2013, pp 2712–2718 Tang J, Hu X, Gao H, Liu H (2012) Exploiting local and global social context for recommendation. In: International joint conference on artificial intelligence, 2013, pp 2712–2718
26.
go back to reference Shin D, Lee JW, Yeon J, Lee SG (2009) Context-aware recommendation by aggregating user context. In: IEEE conference on commerce & enterprise computing, 2009, vol 12(1), pp 423–430 Shin D, Lee JW, Yeon J, Lee SG (2009) Context-aware recommendation by aggregating user context. In: IEEE conference on commerce & enterprise computing, 2009, vol 12(1), pp 423–430
27.
go back to reference Zheng Y, Burke R, Mobasher B (2013) Recommendation with differential context weighting. In: Conference on user modeling, 2013, vol 7899, pp 152–164 Zheng Y, Burke R, Mobasher B (2013) Recommendation with differential context weighting. In: Conference on user modeling, 2013, vol 7899, pp 152–164
28.
go back to reference Su JH, Yeh HH, Yu PS, Tseng VS (2010) Music recommendation using content and context information mining. IEEE Intell Syst 25(1):16–26CrossRef Su JH, Yeh HH, Yu PS, Tseng VS (2010) Music recommendation using content and context information mining. IEEE Intell Syst 25(1):16–26CrossRef
29.
go back to reference Lee WP, Che K, Huang JY (2014) A smart TV system with body-gesture control, tag-based rating and context-aware recommendation. Knowl-Based Syst 56(2):167–178CrossRef Lee WP, Che K, Huang JY (2014) A smart TV system with body-gesture control, tag-based rating and context-aware recommendation. Knowl-Based Syst 56(2):167–178CrossRef
30.
go back to reference Oh Y, Choi A, Woo W (2010) u-BabSang: a context-aware food recommendation system. J Supercomput 54(1):61–81CrossRef Oh Y, Choi A, Woo W (2010) u-BabSang: a context-aware food recommendation system. J Supercomput 54(1):61–81CrossRef
31.
go back to reference Liu NN, He L, Zhao M (2013) Social temporal collaborative ranking for context aware movie recommendation. ACM Trans Intell Syst Technol 4(1):1–26 Liu NN, He L, Zhao M (2013) Social temporal collaborative ranking for context aware movie recommendation. ACM Trans Intell Syst Technol 4(1):1–26
32.
go back to reference Singh VK, Mukherjee M, Mehta GK (2011) Combining collaborative filtering and sentiment classification for improved movie recommendations. In: International conference on multi-disciplinary trends in artificial intelligence, 2011, vol 7080, pp 38–50 Singh VK, Mukherjee M, Mehta GK (2011) Combining collaborative filtering and sentiment classification for improved movie recommendations. In: International conference on multi-disciplinary trends in artificial intelligence, 2011, vol 7080, pp 38–50
33.
go back to reference Ruiziniesta A, Jimenezdiaz G, Gomezalbarran M (2014) A semantically enriched context-aware OER recommendation strategy and its application to a computer science OER repository. IEEE Trans Educ 57(4):255–260CrossRef Ruiziniesta A, Jimenezdiaz G, Gomezalbarran M (2014) A semantically enriched context-aware OER recommendation strategy and its application to a computer science OER repository. IEEE Trans Educ 57(4):255–260CrossRef
Metadata
Title
A novel recommendation system based on semantics and context awareness
Author
Qin Yang
Publication date
07-06-2018
Publisher
Springer Vienna
Published in
Computing / Issue 8/2018
Print ISSN: 0010-485X
Electronic ISSN: 1436-5057
DOI
https://doi.org/10.1007/s00607-018-0627-4

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