Abstract
POI (point-of-interest) recommendation as one of the efficient information filtering techniques has been widely utilized in helping people find places they are likely to visit, and many related methods have been proposed. Although the methods that exploit geographical information for POI recommendation have been studied, few of these studies have addressed the implicit feedback problem. In fact, in most location-based social networks, the user’s negative preferences are not explicitly observable. Consequently, it is inappropriate to treat POI recommendation as traditional recommendation problem. Moreover, previous studies mainly explore the geographical information from a user perspective and the methods that model them from a location perspective are not well explored. Hence, this work concentrates on exploiting the geographical characteristics from a location perspective for implicit feedback, where a neighborhood aware Bayesian personalized ranking method (NBPR) is proposed. To be specific, the weighted Bayesian framework that was proposed for personalized ranking is first introduced as our basic POI recommendation method. To exploit the geographical characteristics from a location perspective, we then constrain the ranking loss by using a regularization term derived from locations, and assume nearest neighboring POIs are more inclined to be visited by similar users. Finally, several experiments are conducted on two real-world social networks to evaluate the NBPR method, where we can find that our NBPR method has better performance than other related recommendation algorithms. This result also demonstrates the effectiveness of our method with neighborhood information and the importance of the geographical characteristics.
Highlights
The development of location positioning technology and smart mobile phones has boosted the appearance of LBSNs, e.g., Yelp, Foursquare and Gowalla.User in LBSNs can express his/her preferences by checking in different POIs, which resulting a huge amount of mobile data
To evaluate our proposed method, we conduct experiments on the datasets that from two real-world LBSNs, and the results indicate that our proposed method can outperform other related POI recommendation approaches, which demonstrates the importance of the geographical characteristics and the effectiveness of our ranking-based method
We first evaluate our method with other related POI recommendation algorithms in two location-based social networks, and several experiments are conducted to investigate the impact of the parameters to our method
Summary
User in LBSNs can express his/her preferences by checking in different POIs (e.g., hotels, restaurants and shopping mall), which resulting a huge amount of mobile data. These check-in data provides us the opportunities to analyze users’ mobile patterns and recommend possible visiting places to them. Ye et al [1] utilized the power-law probabilistic method to model the geographical influence, and proposed a unified recommendation framework for POI recommendation, which fused geographical influence, social influence and user preferences together. Cheng et al [2] first utilized a multi-center Gaussian method to model the influence of the geographical information, and further investigated it in a fused matrix factorization method
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