Title
CO-STAR: A collaborative prediction service for short-term trends on continuous spatio-temporal data
Abstract
Over various sensory data of Internet of Things, not only the current situation but also the future trends of many fields are required instantly to promote the business. As a typical requirement, the short-term prediction on spatio-temporal data stream is imperative, but challenges still remain due to the inherent limitation of long calculative time and insufficient predictive precision. In this paper, a novel prediction service CO-STAR is proposed in the highway domain. On the continuous toll data of the whole highway network, the service employs non-parametric regression model to predict the traffic volume of all the stations periodically. Considering both spatial and temporal business characteristics, a collaborative paradigm of online stream computing and offline batch processing is adopted to balance the efficiency and precision. On the real data of one Chinese provincial highway and the simulated data, our service can hold minute-level executive latency with nearly 10 percent improvement for the predictive precision in extensive experiments.
Year
DOI
Venue
2020
10.1016/j.future.2019.08.026
Future Generation Computer Systems
Keywords
Field
DocType
Data stream,Sensory data,Spatio-temporal data,Short-term trends,Trend prediction,Collaborative computing paradigm,Internet of Things,Non-parametric regression
Toll,Data stream,Latency (engineering),Regression analysis,Computer science,Internet of Things,Stream,Real-time computing,Temporal database,Batch processing,Distributed computing
Journal
Volume
ISSN
Citations 
102
0167-739X
1
PageRank 
References 
Authors
0.36
0
3
Name
Order
Citations
PageRank
Weilong Ding195.09
Xuefei Wang210.36
Zhuofeng Zhao321.06