This book covers the major fundamentals of and the latest research on
next-generation spatio-temporal recommendation systems in social media.
It begins by describing the emerging characteristics of social media in
the era of mobile internet, and explores the limitations to be found in
current recommender techniques. The book subsequently presents a series
of latent-class user models to simulate users' behaviors in
decision-making processes, which effectively overcome the challenges
arising from temporal dynamics of users' behaviors, user interest drift
over geographical regions, data sparsity and cold start. Based on these
well designed user models, the book develops effective multi-dimensional
index structures such as Metric-Tree, and proposes efficient top-k
retrieval algorithms to accelerate the process of online recommendation
and support real-time recommendation. In addition, it offers
methodologies and techniques for evaluating both the effectiveness and
efficiency of spatio-temporal recommendation systems in social media.
The book will appeal to a broad readership, from researchers and
developers to undergraduate and graduate students.