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Published in: Mobile Networks and Applications 4/2020

06-06-2020

Mining consuming Behaviors with Temporal Evolution for Personalized Recommendation in Mobile Marketing Apps

Authors: Honghao Gao, Li Kuang, Yuyu Yin, Bin Guo, Kai Dou

Published in: Mobile Networks and Applications | Issue 4/2020

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Abstract

Recently, more and more mobile apps are employed in the marketing field with technical advances. Mobile marketing apps have become a prevalent way for enterprise marketing. Therefore, it has been an important and urgent problem to provide personalized and accurate recommendation in mobile marketing, with a large number of items and limited capability of mobile devices. Recommendation have been investigated widely, however, most existing approaches fail to consider the stability or change of users’ behaviors over time. In this paper, we first propose to mine the periodic trends of users’ consuming behavior from historical records by KNN(K-nearest neighbor) and SVR (support vector regression) based time series prediction, and predict the next time when a user re-purchases the item, so that we can recommend the items which users have purchased before at proper time. Second, we aim to find the regularity of users’ purchasing behavior during different life stages and recommend the new items that are needed and proper for their current life stage. In order to solve this, we mine the mapping model from items to user’s life stage first. Based on the model, users’ current life stage can be estimated from their recent behaviors. Finally, users will be recommended with new items which are proper to their estimated life stage. Experimental results show that it has improved the effectiveness of recommendation obviously by mining users’ consuming behaviors with temporal evolution.

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Literature
2.
go back to reference Brusilovsky P, Kobsa A, Nejdl W (2007) The adaptive web: methods and strategies of web personalization [J]. Lect Notes Comput Sci Brusilovsky P, Kobsa A, Nejdl W (2007) The adaptive web: methods and strategies of web personalization [J]. Lect Notes Comput Sci
3.
go back to reference Jian C, Jian Y, Jin H (2005) Automatic Content-Based Recommendation in e-Commerce[M]// Automatic content-based recommendation in e-commerce. 748–753 Jian C, Jian Y, Jin H (2005) Automatic Content-Based Recommendation in e-Commerce[M]// Automatic content-based recommendation in e-commerce. 748–753
4.
go back to reference Linden G, Smith B, York J (2003) Amazon.com recommendations: item-to-item collaborative filtering[J]. IEEE Internet Comput 7(1):76–80CrossRef Linden G, Smith B, York J (2003) Amazon.com recommendations: item-to-item collaborative filtering[J]. IEEE Internet Comput 7(1):76–80CrossRef
5.
go back to reference Adomavicius G, Tuzhilin A (2005) Tuzhilin, a.: toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions. IEEE transactions on knowledge and data engineering 17(6), 734-749[J]. IEEE Transactions on Knowledge & Data Engineering 17(6):734–749CrossRef Adomavicius G, Tuzhilin A (2005) Tuzhilin, a.: toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions. IEEE transactions on knowledge and data engineering 17(6), 734-749[J]. IEEE Transactions on Knowledge & Data Engineering 17(6):734–749CrossRef
6.
go back to reference Da-Xue LI, Xie ML, Zhao XB (2010) Collaborative filtering recommendation algorithm based on naive Bayesian method[J]. Journal of Computer Applications 29(10):2403–2411 Da-Xue LI, Xie ML, Zhao XB (2010) Collaborative filtering recommendation algorithm based on naive Bayesian method[J]. Journal of Computer Applications 29(10):2403–2411
7.
go back to reference Yin Y, Chen L, Xu Y, Wan J, Zhang H, Mai Z (2019) QoS Prediction for Service Recommendation with Deep Feature Learning in Edge Computing Environment. Mobile Networks and Applications. https://doi.org/10.1007/s11036-019-01241-7, QoS Prediction for Service Recommendation with Deep Feature Learning in Edge Computing Environment Yin Y, Chen L, Xu Y, Wan J, Zhang H, Mai Z (2019) QoS Prediction for Service Recommendation with Deep Feature Learning in Edge Computing Environment. Mobile Networks and Applications. https://​doi.​org/​10.​1007/​s11036-019-01241-7, QoS Prediction for Service Recommendation with Deep Feature Learning in Edge Computing Environment
8.
go back to reference Yin Y, Chen L, Xu Y, Wan J (2018) Location-Aware Service Recommendation With Enhanced Probabilistic Matrix Factorization. IEEE Access 6:62815–62825CrossRef Yin Y, Chen L, Xu Y, Wan J (2018) Location-Aware Service Recommendation With Enhanced Probabilistic Matrix Factorization. IEEE Access 6:62815–62825CrossRef
9.
go back to reference Yin Y, Xu W, Xu Y, Li H, Yu L (2017) Collaborative QoS Prediction for Mobile Service with Data Filtering and SlopeOne Model. Mobile Information Systems 2017: 7356213:1–7356213:14 Yin Y, Xu W, Xu Y, Li H, Yu L (2017) Collaborative QoS Prediction for Mobile Service with Data Filtering and SlopeOne Model. Mobile Information Systems 2017: 7356213:1–7356213:14
10.
go back to reference Adomavicius G, Tuzhilin A (2008) Context-aware recommender systems[C]// ACM conference on recommender systems. ACM, 2175–2178 Adomavicius G, Tuzhilin A (2008) Context-aware recommender systems[C]// ACM conference on recommender systems. ACM, 2175–2178
11.
go back to reference Wang S, Zheng Z, Wu Z, Sun Q, Zou H, Yang F (2014) Context-aware mobile service adaptation via a co-evolution eXtended classifier system in mobile network environments[J]. Mob Inf Syst 10(2):197–215 Wang S, Zheng Z, Wu Z, Sun Q, Zou H, Yang F (2014) Context-aware mobile service adaptation via a co-evolution eXtended classifier system in mobile network environments[J]. Mob Inf Syst 10(2):197–215
12.
go back to reference Rosa PMP, Rodrigues JJPC, Basso F (2013) A weight-aware recommendation algorithm for mobile multimedia systems[J]. Mob Inf Syst 9(2):139–155 Rosa PMP, Rodrigues JJPC, Basso F (2013) A weight-aware recommendation algorithm for mobile multimedia systems[J]. Mob Inf Syst 9(2):139–155
13.
go back to reference Gao H, Zhang K, Yang J, Wu F, Liu H (2018) Applying improved particle swarm optimization for dynamic service composition focusing on quality of service evaluations under hybrid networks. International Journal of Distributed Sensor Networks(IJDSN) 14(2):1–14 Gao H, Zhang K, Yang J, Wu F, Liu H (2018) Applying improved particle swarm optimization for dynamic service composition focusing on quality of service evaluations under hybrid networks. International Journal of Distributed Sensor Networks(IJDSN) 14(2):1–14
14.
go back to reference Gao H, Chu D, Duan Y (2017) The probabilistic model checking based service selection method for business process modeling. Journal of Software Engineering and Knowledge Engineering 27(6):897–923CrossRef Gao H, Chu D, Duan Y (2017) The probabilistic model checking based service selection method for business process modeling. Journal of Software Engineering and Knowledge Engineering 27(6):897–923CrossRef
15.
go back to reference Gao H, Mao S, Huang W, Yang X (2018) Applying Probabilistic Model Checking to Financial Production Risk Evaluation and Control: A Case Study of Alibaba's Yu'e Bao. IEEE Transactions on Computational Social Systems(TCSS) 5(3):785–795CrossRef Gao H, Mao S, Huang W, Yang X (2018) Applying Probabilistic Model Checking to Financial Production Risk Evaluation and Control: A Case Study of Alibaba's Yu'e Bao. IEEE Transactions on Computational Social Systems(TCSS) 5(3):785–795CrossRef
16.
go back to reference Safar M (2005) K nearest neighbor search in navigation systems[J]. Mob Inf Syst 1(3):207–224 Safar M (2005) K nearest neighbor search in navigation systems[J]. Mob Inf Syst 1(3):207–224
17.
go back to reference Lin K, Lin Q, Zhou C, et al. (2007) Time Series Prediction Based on Linear Regression and SVR[C]// International Conference on Natural Computation. 688–691 Lin K, Lin Q, Zhou C, et al. (2007) Time Series Prediction Based on Linear Regression and SVR[C]// International Conference on Natural Computation. 688–691
18.
go back to reference Zeng W, Zhu YX, Lü L et al (2011) Negative ratings play a positive role in information filtering[J]. Physica A Statistical Mechanics & Its Applications 390(s 23–24):4486–4493MathSciNetCrossRef Zeng W, Zhu YX, Lü L et al (2011) Negative ratings play a positive role in information filtering[J]. Physica A Statistical Mechanics & Its Applications 390(s 23–24):4486–4493MathSciNetCrossRef
19.
go back to reference Barnard T, Prügel-Bennett A (2011) Experiments in Bayesian recommendation[J]. Advances in Intelligent & Soft Computing 86:39–48CrossRef Barnard T, Prügel-Bennett A (2011) Experiments in Bayesian recommendation[J]. Advances in Intelligent & Soft Computing 86:39–48CrossRef
20.
go back to reference Linden G, Smith B, York J (2003) Amazon.com recommendations: item-to-item collaborative filtering[J]. IEEE Internet Comput 7(1):76–80CrossRef Linden G, Smith B, York J (2003) Amazon.com recommendations: item-to-item collaborative filtering[J]. IEEE Internet Comput 7(1):76–80CrossRef
21.
go back to reference Das AS, Datar M, Garg A et al. (2007) Google news personalization: scalable online collaborative filtering[J]. Www, 271–280 Das AS, Datar M, Garg A et al. (2007) Google news personalization: scalable online collaborative filtering[J]. Www, 271–280
22.
go back to reference Park ST, Pennock DM (2007) Applying collaborative filtering techniques to movie search for better ranking and browsing[C]// Acm Sigkdd International Conference on Knowledge Discovery & Data Mining. 550–559 Park ST, Pennock DM (2007) Applying collaborative filtering techniques to movie search for better ranking and browsing[C]// Acm Sigkdd International Conference on Knowledge Discovery & Data Mining. 550–559
23.
go back to reference Liu B, Bennett J, Elkan C et al (2007) KDD cup and workshop 2007[J]. Acm Sigkdd Explorations Newsletter 9(2):51–52CrossRef Liu B, Bennett J, Elkan C et al (2007) KDD cup and workshop 2007[J]. Acm Sigkdd Explorations Newsletter 9(2):51–52CrossRef
24.
go back to reference Schafer JB, Dan F, Herlocker J et al (2007) Collaborative filtering. Recommender system[J]. Lect Notes Comput Sci 9(3):46–45 Schafer JB, Dan F, Herlocker J et al (2007) Collaborative filtering. Recommender system[J]. Lect Notes Comput Sci 9(3):46–45
25.
go back to reference Adomavicius G, Tuzhilin A (2005) Tuzhilin, a.: toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions. IEEE transactions on knowledge and data engineering[J]. IEEE Transactions on Knowledge & Data Engineering 17(6):734–749CrossRef Adomavicius G, Tuzhilin A (2005) Tuzhilin, a.: toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions. IEEE transactions on knowledge and data engineering[J]. IEEE Transactions on Knowledge & Data Engineering 17(6):734–749CrossRef
26.
go back to reference Yin J, Lo W, Deng SG, Li Y, Wu Z, Xiong N (2014) Colbar: a collaborative location-based regularization framework for QoS prediction. Inf Sci 265(68–84):68–84MathSciNetCrossRef Yin J, Lo W, Deng SG, Li Y, Wu Z, Xiong N (2014) Colbar: a collaborative location-based regularization framework for QoS prediction. Inf Sci 265(68–84):68–84MathSciNetCrossRef
27.
go back to reference Yin Y, Aihua S, Gao M, Xu Y (2016) Wang Shuoping:QoS prediction for web service recommendation with network location-aware neighbor selection. Int J Softw Eng Knowl Eng 26(4):611–632CrossRef Yin Y, Aihua S, Gao M, Xu Y (2016) Wang Shuoping:QoS prediction for web service recommendation with network location-aware neighbor selection. Int J Softw Eng Knowl Eng 26(4):611–632CrossRef
28.
go back to reference Fouss F, Pirotte A, Renders JM, Saerens M (2007) Random-walk computation of similarities between nodes of a graph with application to collaborative recommendation[J]. Knowledge & Data Engineering IEEE Transactions on 19(3):355–369CrossRef Fouss F, Pirotte A, Renders JM, Saerens M (2007) Random-walk computation of similarities between nodes of a graph with application to collaborative recommendation[J]. Knowledge & Data Engineering IEEE Transactions on 19(3):355–369CrossRef
29.
go back to reference Sarwar B, Karypis G, Konstan J, et al. (2001) Item-based collaborative filtering recommendation algorithms[C]// proceedings of the 10th international conference on world wide web. ACM, 285–295 Sarwar B, Karypis G, Konstan J, et al. (2001) Item-based collaborative filtering recommendation algorithms[C]// proceedings of the 10th international conference on world wide web. ACM, 285–295
30.
go back to reference Zhou D, Zhang C, Liu L, et al. (2004) Taxonomy-driven Computation of Product Recommendations[C]// Thirteenth Acm International Conference on Information & Knowledge Management. 406–415 Zhou D, Zhang C, Liu L, et al. (2004) Taxonomy-driven Computation of Product Recommendations[C]// Thirteenth Acm International Conference on Information & Knowledge Management. 406–415
31.
go back to reference Schein AI, Popescul A, Ungar LH, et al. (2002)Methods and metrics for cold-start recommendations[C]// proceedings of the 25th annual international ACM SIGIR conference on research and development in information retrieval. ACM, 253–260 Schein AI, Popescul A, Ungar LH, et al. (2002)Methods and metrics for cold-start recommendations[C]// proceedings of the 25th annual international ACM SIGIR conference on research and development in information retrieval. ACM, 253–260
32.
go back to reference Koren Y (2010) Collaborative filtering with temporal dynamics[J]. Commun ACM 53(4):89–97CrossRef Koren Y (2010) Collaborative filtering with temporal dynamics[J]. Commun ACM 53(4):89–97CrossRef
33.
go back to reference Khoshneshin M, Street WN (2010) Incremental collaborative filtering via evolutionary co-clustering.[C]// In Proc. of the Fourth ACM Conf. on Recommender Systems. 325–328 Khoshneshin M, Street WN (2010) Incremental collaborative filtering via evolutionary co-clustering.[C]// In Proc. of the Fourth ACM Conf. on Recommender Systems. 325–328
34.
go back to reference Li B, Zhu X, Li R, et al. (2011) Cross-Domain Collaborative Filtering over Time.[C]// Twenty-second International Joint Conference on Artificial Intelligence-volumethree. 2293–2298 Li B, Zhu X, Li R, et al. (2011) Cross-Domain Collaborative Filtering over Time.[C]// Twenty-second International Joint Conference on Artificial Intelligence-volumethree. 2293–2298
35.
go back to reference Ren Y, Zhu T, Li G, et al. (2013) Top-N recommendations by learning user preference dynamics[M]// advances in knowledge discovery and data mining. Springer Berlin Heidelberg, 390–401 Ren Y, Zhu T, Li G, et al. (2013) Top-N recommendations by learning user preference dynamics[M]// advances in knowledge discovery and data mining. Springer Berlin Heidelberg, 390–401
36.
go back to reference Xiang L, Yuan Q, Zhao S, et al. (2010) Temporal recommendation on graphs via long- and short-term preference fusion[C]// proceedings of the 16th ACM SIGKDD international conference on knowledge discovery and data mining. ACM, 723–732 Xiang L, Yuan Q, Zhao S, et al. (2010) Temporal recommendation on graphs via long- and short-term preference fusion[C]// proceedings of the 16th ACM SIGKDD international conference on knowledge discovery and data mining. ACM, 723–732
37.
go back to reference Rendle S, Freudenthaler C, Schmidt-Thieme L (2010) Factorizing personalized Markov chains for next-basket recommendation.[C]// International Conference on World Wide Web. 811–820 Rendle S, Freudenthaler C, Schmidt-Thieme L (2010) Factorizing personalized Markov chains for next-basket recommendation.[C]// International Conference on World Wide Web. 811–820
38.
go back to reference Wang J, Zhang Y, Wang J, et al. (2013) Opportunity model for e-commerce recommendation[C]// proceedings of the 36th international ACM SIGIR conference on research and development in information retrieval. ACM, 303–312 Wang J, Zhang Y, Wang J, et al. (2013) Opportunity model for e-commerce recommendation[C]// proceedings of the 36th international ACM SIGIR conference on research and development in information retrieval. ACM, 303–312
39.
go back to reference Jiang P,Zhu Y,Zhang Y, Yuan Q (2015) Life-stage Prediction for Product Recommendation in E-commerce[J]. Proceedings of the 21th ACM SIGKDD international conference on Knowledge discovery and data mining. ACM, 1879–1888 Jiang P,Zhu Y,Zhang Y, Yuan Q (2015) Life-stage Prediction for Product Recommendation in E-commerce[J]. Proceedings of the 21th ACM SIGKDD international conference on Knowledge discovery and data mining. ACM, 1879–1888
40.
go back to reference Wu SF, Lee SJ (2015) Employing local modeling in machine learning based methods for time-series prediction[J]. Expert Syst Appl 42(1):341–354CrossRef Wu SF, Lee SJ (2015) Employing local modeling in machine learning based methods for time-series prediction[J]. Expert Syst Appl 42(1):341–354CrossRef
41.
go back to reference Martínez-Rego D (2011) Efficiency of local models ensembles for time series prediction.[J]. Expert Syst Appl 38(6):6884–6894CrossRef Martínez-Rego D (2011) Efficiency of local models ensembles for time series prediction.[J]. Expert Syst Appl 38(6):6884–6894CrossRef
42.
go back to reference Sapankevych NI, Sankar R (2009) Time series prediction using support vector machines: a survey[J]. IEEE Comput Intell Mag 4(2):24–38CrossRef Sapankevych NI, Sankar R (2009) Time series prediction using support vector machines: a survey[J]. IEEE Comput Intell Mag 4(2):24–38CrossRef
43.
go back to reference Thissen U, Brakel RV, Weijer APD et al (2015) Using support vector machines for time series prediction[J]. Chemometrics & Intelligent Laboratory Systems 69(1–2):35–49 Thissen U, Brakel RV, Weijer APD et al (2015) Using support vector machines for time series prediction[J]. Chemometrics & Intelligent Laboratory Systems 69(1–2):35–49
44.
go back to reference Huang Z, Shyu M L (2010) k-NN based LS-SVM framework for long-term time series prediction[C]// IEEE International Conference on Information Reuse and Integration. IEEE, :69–74 Huang Z, Shyu M L (2010) k-NN based LS-SVM framework for long-term time series prediction[C]// IEEE International Conference on Information Reuse and Integration. IEEE, :69–74
45.
go back to reference Zhang L, Zhou WD, Chang PC, Yang JW, Li FZ (2013) Iterated time series prediction with multiple support vector regression models[J]. Neurocomputing 99(1):411–422CrossRef Zhang L, Zhou WD, Chang PC, Yang JW, Li FZ (2013) Iterated time series prediction with multiple support vector regression models[J]. Neurocomputing 99(1):411–422CrossRef
46.
go back to reference Guo B, Dou K, Kuang L. Life stage based recommendation in e-commerce. International Joint Conference on Neural Networks (IJCNN). 3461–3468 Guo B, Dou K, Kuang L. Life stage based recommendation in e-commerce. International Joint Conference on Neural Networks (IJCNN). 3461–3468
47.
go back to reference Fisher RA (1958) Statistical methods for research workers[M]// statistical methods for research workers.. Госстатиздат, 66–70 Fisher RA (1958) Statistical methods for research workers[M]// statistical methods for research workers.. Госстатиздат, 66–70
Metadata
Title
Mining consuming Behaviors with Temporal Evolution for Personalized Recommendation in Mobile Marketing Apps
Authors
Honghao Gao
Li Kuang
Yuyu Yin
Bin Guo
Kai Dou
Publication date
06-06-2020
Publisher
Springer US
Published in
Mobile Networks and Applications / Issue 4/2020
Print ISSN: 1383-469X
Electronic ISSN: 1572-8153
DOI
https://doi.org/10.1007/s11036-020-01535-1

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