Ehancing Geo-Social Systems: Profiling, Ranking and Recommendation
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Date
2017-12-04
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Abstract
The global sharing of fine-grained geo-spatial footprints – via smart mobile devices
and social media services (e.g., Facebook, Twitter, Flickr) – is leading to the creation of
a new class of geo-social systems. These systems promise new insights into the dynamics
of human behavior and new intelligent location-aware applications, enabled by both
geographic and social characteristics of their users. Yet, we are just beginning to understand
these nascent systems. Indeed, there is a significant research gap in understanding,
modeling, and leveraging geo-tagged user activities and in identifying the key factors that
influence the success of new geo-social systems.
Hence, this dissertation research seeks to enhance existing and future geo-social systems
through a systematic study of the intrinsic mutual reinforcement relationship between
geography (geo) and user behaviors (social). In particular, we focus on three important
scenarios: geo-social profiling, ranking, and recommendation. In summary, this dissertation
makes three unique contributions:
The first contribution of this dissertation research lies in frameworks for profiling both
users and locations in geo-social systems. We propose a framework to identify conceptual
communities and a smoothing-based approach that collectively balances the information
from physical neighbors and conceptual community for estimating the hashtag
distribution at a particular location. We further propose a location-sensitive folksonomy
construction framework and build high-quality tag profiles for users by identifying
candidate tags from these location-sensitive folksonomies, and then employ a learningto-
rank approach for ordering these tags.
The second contribution of this dissertation research is a framework for location-sensitive
topical expert identification and ranking in social media. Three of the key features
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of the proposed approach are: (i) a learning-based framework for integrating multiple
user-based, content-based, list-based, and crowd-based factors impacting local expertise
that leverages the fine-grained GPS coordinates of millions of social media users;
(ii) a location-sensitive random walk that propagates crowd knowledge of a candidate’s
expertise; and (iii) a comprehensive controlled study over AMT-labeled local experts on
eight topics and in four cities.
In the third contribution, we create a new geo-social framework for effective personalized
image recommendation as part of the effort toward enhancing geo-social systems.
We propose Neural Personalized Ranking (NPR) – a personalized pairwise ranking
model over implicit feedback datasets – that is inspired by Bayesian Personalized
Ranking (BPR) and recent advances in neural networks. We further build an enhanced
model which significantly boosts performance by augmenting the basic NPR model
with multiple contextual preference clues derived from geographic features, user tags
and visual factors.
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Keywords
Geo-social System, Profiling, Ranking, Recommendation, User Profiling, Tag Distribution Estimation, Local Expert, Image Recommendation