DocumentCode :
83277
Title :
Recommending Nearby Strangers Instantly Based on Similar Check-In Behaviors
Author :
Xiuquan Qiao ; Wei Yu ; Jinsong Zhang ; Wei Tan ; Jianchong Su ; Wangli Xu ; Junliang Chen
Author_Institution :
State Key Lab. of Networking & Switching Technol., Beijing Univ. of Posts & Telecommun., Beijing, China
Volume :
12
Issue :
3
fYear :
2015
fDate :
Jul-15
Firstpage :
1114
Lastpage :
1124
Abstract :
Chatting with nearby interested strangers instantly in location-based mobile social network (LMSN) has become increasingly popular. Currently, friend recommendation relies only on the simple and limited user profiles, and is agnostic to users´ offline behaviors in the real world. For the first time, we focus on utilizing the user´s check-in behaviors in the real world, instead of the general acquaintance-based social circles, to instantly recommend nearby strangers to make friends. However, bridging nearby strangers with similar check-in behaviors instantly has some new characteristics, such as lack of common friends and interaction histories, temporal, spatial and user three-dimensional correlation, and sparseness of check-ins. Most existing work about friend recommendations mainly focuses on making friends within the acquaintance-based social circles, and has not fully considered these new characteristics mentioned above. Therefore, how to catch the ephemeral opportunity to recommend nearby interested strangers instantly remains a challenge. In this paper, we present to use “Encounter” probability to measure the behavior similarity of two strangers in the real world based on their check-in histories. To address the sparseness challenge of check-in data, a Kernel Density Estimation (KDE)-based user check-in probability estimation method considering the spatiotemporal dimensions is proposed to estimate each user´s check-in probability distribution with time at each spot. Finally, we use a large-scale user check-in dataset of Gowalla to validate the effectiveness of this approach. The experimental results show that our approach outperforms other commonly used similarity computation methods.
Keywords :
mobile computing; recommender systems; social networking (online); statistical analysis; Encounter probability; Gowalla dataset; KDE-based user check-in probability estimation method; LMSN; acquaintance-based social circles; friend recommendation; kernel density estimation; location-based mobile social network; nearby strangers recommendation; spatiotemporal dimensions; user check-in behaviors; user profiles; Correlation; Estimation; History; Kernel; Mobile communication; Social network services; Spatiotemporal phenomena; Find and chat; friend recommendation; kernel density estimation; location proximity; location-based mobile social network; strangers; user behavior similarity;
fLanguage :
English
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1545-5955
Type :
jour
DOI :
10.1109/TASE.2014.2369429
Filename :
6979278
Link To Document :
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