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Research on Personalized Recommendation of Smart Phones Applications Based on Association Rules and Collaborative Filtering Algorithms

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Part of the book series: Lecture Notes on Multidisciplinary Industrial Engineering ((LNMUINEN))

Abstract

Rapid growth in the number of smart phones users brings endless opportunities and enormous challenges for mobile Internet applications. How to recommend applications in which users are interested draws attentions of the application stores. In this paper, the features of different categories applications are extracted by analyzing users behavior of downloading. Based on association rules, the recommendations of overall and different categories applications can be generated respectively, as well as the recommendations of applications that are most likely to be accepted by users based on collaborative filtering. In this method, two recommendation strategies are proposed: the triggered recommendation strategy which is based on the optimum number of the application in the user’s smart phone and the automatic recommendation strategy which is based on the evaluation of users’ historical performance. The experiment result demonstrates the feasibility and effectivity of these recommendation strategies.

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References

  1. Ai D (2013) Research on three-dimensional personalized recommendation approach for c2c e-commerce platform. New Technol Libr Inform Serv 717:714–719

    Google Scholar 

  2. Bao L et al (2017) Automated android application permission recommendation. Sci China Inform Sci 60(9):092,110

    Google Scholar 

  3. Ghoshal A, Menon S, Sarkar S (2015) Recommendations using information from multiple association rules: a probabilistic approach. INFORMS

    Google Scholar 

  4. Jin C, Zhang YP (2013) Agent-based simulation model of customer behavior and personalized recommendation. Sys Eng Theory Pract 33(2):463–472

    Google Scholar 

  5. Koohi H, Kiani K (2017) A new method to find neighbor users that improves the performance of collaborative filtering. Pergamon Press Inc

    Google Scholar 

  6. Lee WP et al (2017) A smartphone-based activity-aware system for music streaming recommendation. Knowl Based Syst

    Google Scholar 

  7. Lei W, Fang Q, Zhou J (2016) Improved personalized recommendation based on causal association rule and collaborative filtering. Int J Distance Educ Technol 14(3):21–33

    Article  Google Scholar 

  8. Liao SH, Chang HK (2016) A rough set-based association rule approach for a recommendation system for online consumers. Inform Process Manag 52(6):1142–1160

    Article  Google Scholar 

  9. Mihai G (2015) Recommendation system based on association rules for distributed e-learning management systems. Acta Univ Cibiniensis 67(1):99–104

    Article  Google Scholar 

  10. Nair BB et al (2015) A stock trading recommender system based on temporal association rule mining. Sage Open 5(2)

    Article  Google Scholar 

  11. Najafabadi MK et al (2017) Improving the accuracy of collaborative filtering recommendations using clustering and association rules mining on implicit data. Comput Hum Behav 67(C):113–128

    Article  Google Scholar 

  12. Rahman RM et al (2016) Association rule mining and audio signal processing for music discovery and recommendation. Int J Softw Innov 4(2):71–87

    Google Scholar 

  13. Rodrigues F, Ferreira B (2016) Product recommendation based on shared customer’s behaviour. Proc Comput Sci 100:136–146

    Article  Google Scholar 

  14. Selmane SA, Boussaid O, Bentayeb F (2015) Towards collaborative multidimensional query recommendation with triadic association rules. IGI Global

    Google Scholar 

  15. Shahmohammadi A, Khadangi E, Bagheri A (2016) Presenting new collaborative link prediction methods for activity recommendation in facebook. Neurocomputing 210:217–226

    Article  Google Scholar 

  16. Shi X et al (2017) Long-term performance of collaborative filtering based recommenders in temporally evolving systems. Neurocomputing

    Google Scholar 

  17. Tang X (2013) Research on the personalized recommendation system of online social networks based on blended graph. Inform Stud Theory Appl

    Google Scholar 

  18. Wu S, Xu L, Li Z (2011) Research on association rules based sns personalized recommendation. Math Pract Theory 41(23):47–52

    Google Scholar 

  19. Wu S, Wang S, Liu X (2010) A seller selection model study based on online credit analysis in c2c e-business environment. In: 2010 2nd International conference on e-business and information system security (EBISS), pp 1–4

    Google Scholar 

  20. Yan JW et al (2010) Personalized recommendation algorithm for user interest model based on ontology. Comput Integr Manuf Syst 16(12):2757–2762

    Google Scholar 

  21. Yuen KKF (2017) The fuzzy cognitive pairwise comparisons for ranking and grade clustering to build a recommender system: An application of smartphone recommendation. Eng Appl Artif Intell 61:136–151

    Article  Google Scholar 

  22. Zhang H (2009) E-commerce personalized recommender system based on web mining. J Liaoning Tech Univ

    Google Scholar 

  23. Zhao Y et al (2017) A novel approach for traffic signal control: A recommendation perspective. IEEE Intell Transp Syst Mag 9(3):127–135

    Article  Google Scholar 

  24. Zou C et al (2017) Using concept lattice for personalized recommendation system design. IEEE Syst J 11(1):305–314

    Article  Google Scholar 

Download references

Acknowledgements

The author would like to thank Lenovo China for providing the original data of smart phone users. The author would like to thank MathWorks for software of matlab2014, which helps implement the experiment.

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Correspondence to Xinrui Wang .

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Zhang, D., Wang, X., Wang, D., He, Y., He, C. (2019). Research on Personalized Recommendation of Smart Phones Applications Based on Association Rules and Collaborative Filtering Algorithms. In: Xu, J., Cooke, F., Gen, M., Ahmed, S. (eds) Proceedings of the Twelfth International Conference on Management Science and Engineering Management. ICMSEM 2018. Lecture Notes on Multidisciplinary Industrial Engineering. Springer, Cham. https://doi.org/10.1007/978-3-319-93351-1_31

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