Reliable Collaborative Filtering on Spatio-Temporal Privacy Data

Lots of multilayer information, such as the spatio-temporal privacy check-in data, is accumulated in the location-based social network (LBSN). When using the collaborative filtering algorithm for LBSN location recommendation, one of the core issues is how to improve recommendation performance by combining the traditional algorithm with the multilayer information. The existing approaches of collaborative filtering use only the sparse user-item rating matrix. It entails high computational complexity and inaccurate results. A novel collaborative filtering-based location recommendation algorithm called LGP-CF, which takes spatio-temporal privacy information into account, is proposed in this paper. By mining the users check-in behavior pattern, the dataset is segmented semantically to reduce the data size that needs to be computed. Then the clustering algorithm is used to obtain and narrow the set of similar users. User-location bipartite graph is modeled using the filtered similar user set. Then LGP-CF can quickly locate the location and trajectory of users through message propagation and aggregation over the graph. Through calculating users similarity by spatio-temporal privacy data on the graph, we can finally calculate the rating of recommendable locations. Experiments results on the physical clusters indicate that compared with the existing algorithms, the proposed LGP-CF algorithm can make recommendations more accurately.

[1]  Hua Fan,et al.  LBSNRank: personalized pagerank on location-based social networks , 2012, UbiComp.

[2]  Lina Yao,et al.  Context-aware Point-of-Interest Recommendation Using Tensor Factorization with Social Regularization , 2015, SIGIR.

[3]  Huan Liu,et al.  Modeling temporal effects of human mobile behavior on location-based social networks , 2013, CIKM.

[4]  Albert Y. Zomaya,et al.  OmniSuggest: A Ubiquitous Cloud-Based Context-Aware Recommendation System for Mobile Social Networks , 2014, IEEE Transactions on Services Computing.

[5]  Richang Hong,et al.  Augmented Collaborative Filtering for Sparseness Reduction in Personalized POI Recommendation , 2017, ACM Trans. Intell. Syst. Technol..

[6]  Reynold Xin,et al.  GraphX: Unifying Data-Parallel and Graph-Parallel Analytics , 2014, ArXiv.

[7]  Yu Zheng,et al.  Trajectory Data Mining , 2015, ACM Trans. Intell. Syst. Technol..

[8]  Tao Li,et al.  MAPS: A Multi Aspect Personalized POI Recommender System , 2016, RecSys.

[9]  Xin Liu,et al.  Exploring the Context of Locations for Personalized Location Recommendations , 2016, IJCAI.

[10]  Fengjiao Wang Data Analysis on Location-based Social Networks , 2017 .

[11]  Zhen Liu,et al.  Towards Efficient Collaborative Filtering Using Parallel Graph Model and Improved Similarity Measure , 2016, HPCC/SmartCity/DSS.

[12]  Roy Levin,et al.  Guided Walk: A Scalable Recommendation Algorithm for Complex Heterogeneous Social Networks , 2016, RecSys.

[13]  Yu Zheng,et al.  Travel time estimation of a path using sparse trajectories , 2014, KDD.

[14]  Huan Liu,et al.  Personalized location recommendation on location-based social networks , 2014, RecSys '14.

[15]  Cecilia Mascolo,et al.  A Random Walk around the City: New Venue Recommendation in Location-Based Social Networks , 2012, 2012 International Conference on Privacy, Security, Risk and Trust and 2012 International Confernece on Social Computing.

[16]  Young-Koo Lee,et al.  Dynamicity in Social Trends towards Trajectory Based Location Recommendation , 2013, ICOST.

[17]  Ke Wang,et al.  POI recommendation through cross-region collaborative filtering , 2015, Knowledge and Information Systems.

[18]  Xing Xie,et al.  GeoMF: joint geographical modeling and matrix factorization for point-of-interest recommendation , 2014, KDD.

[19]  Michael R. Lyu,et al.  A Unified Point-of-Interest Recommendation Framework in Location-Based Social Networks , 2016, ACM Trans. Intell. Syst. Technol..

[20]  Mohamed F. Mokbel,et al.  Recommendations in location-based social networks: a survey , 2015, GeoInformatica.

[21]  Jiawei Han,et al.  Bridging Collaborative Filtering and Semi-Supervised Learning: A Neural Approach for POI Recommendation , 2017, KDD.

[22]  Michael R. Lyu,et al.  A Survey of Point-of-interest Recommendation in Location-based Social Networks , 2016, ArXiv.

[23]  Panos Kalnis,et al.  Discovery of Path Nearby Clusters in Spatial Networks , 2015, IEEE Transactions on Knowledge and Data Engineering.

[24]  Jiuyong Li,et al.  Unifying Spatial, Temporal and Semantic Features for an Effective GPS Trajectory-Based Location Recommendation , 2015, ADC.