Skip to main navigation
Skip to search
Skip to main content
KAUST PORTAL FOR RESEARCHERS AND STUDENTS Home
Home
Profiles
Research units
Research output
Press/Media
Prizes
Courses
Equipment
Student theses
Datasets
Search by expertise, name or affiliation
Introduction to spatio-temporal data driven urban computing
Shuo Shang, Kai Zheng,
Panos Kalnis
Computer Science
Computer, Electrical and Mathematical Sciences and Engineering
Research output
:
Contribution to journal
›
Article
›
peer-review
1
Scopus citations
Overview
Fingerprint
Fingerprint
Dive into the research topics of 'Introduction to spatio-temporal data driven urban computing'. Together they form a unique fingerprint.
Sort by
Weight
Alphabetically
Keyphrases
Temporal Analytics
71%
Social-aware
28%
Parallel Optimization Algorithm
28%
Spatio-temporal Data Mining
28%
Group Query
28%
Data Filling
14%
Region Detection
14%
Shared Bicycle
14%
Recommendation Framework
14%
Social-spatial
14%
Algorithm Strategy
14%
Traffic Congestion Alleviation
14%
Hybrid Index
14%
XGBoost
14%
Car Price Prediction
14%
Location Trajectory
14%
Test Case Prioritization
14%
Sales Forecasting
14%
Spatial Keyword Query
14%
Parallel Database
14%
Vehicle Sales
14%
Location-based Recommender Systems
14%
Filling Algorithm
14%
Computer Science
Spatiotemporal Data
100%
Data Analytics
45%
Transfer Learning
18%
Long Short-Term Memory Network
18%
Temporal Data Mining
18%
Deep Learning
18%
Privacy Preserving
9%
Research Problem
9%
User Privacy
9%
Recommender Systems
9%
Efficient Algorithm
9%
Prediction Accuracy
9%
Keyword Search
9%
Textual Information
9%
Prediction Model
9%
Multiobjective
9%
Software Testing
9%
Expansion Algorithm
9%
Detection Region
9%
Parallel Database
9%
Distributed Database
9%
Traffic Region
9%
XGBoost
9%
Domain Knowledge
9%
Potential Application
9%
Spatial Information
9%
Social Information
9%