With the pervasive use of GPS-enabled smart phones, location-based services, e.g., Location Based Social Networking (LBSN) have emerged . Point-of-Interests (POIs) Recommendation, as a typical component in LBSN, provides additional values to both customers and merchants in terms of user experience and business turnover. Existing POI recommendation systems mainly adopt Collaborative Filtering (CF), which only exploits user given ratings (i.e., user overall evaluation) about a merchant while regardless of the user preference difference across multiple aspects, which exists commonly in real scenarios. Meanwhile, besides ratings, most LBSNs also provide the review function to allow customers to give their opinions when dealing with merchants, which is often overlooked in these recommender systems. In this demo, we present MARS, a novel POI recommender system based on multi-aspect user preference learning from reviews by using utility theory. We first introduce the organization of our system, and then show how the user preferences across multiple aspects are integrated into our system alongside several case studies of mining user preference and POI recommendations.
[1]
Yifan Hu,et al.
Collaborative Filtering for Implicit Feedback Datasets
,
2008,
2008 Eighth IEEE International Conference on Data Mining.
[2]
Kai Zheng,et al.
A crowd-based route recommendation system-CrowdPlanner
,
2014,
2014 IEEE 30th International Conference on Data Engineering.
[3]
Steve Francia.
MongoDB and PHP - Document-Oriented Data for Web Developers
,
2012
.
[4]
Yehuda Koren,et al.
Matrix Factorization Techniques for Recommender Systems
,
2009,
Computer.
[5]
E. Rowland.
Theory of Games and Economic Behavior
,
1946,
Nature.
[6]
Moni Naor,et al.
Optimal aggregation algorithms for middleware
,
2001,
PODS '01.
[7]
Yue Lu,et al.
Latent aspect rating analysis on review text data: a rating regression approach
,
2010,
KDD.