Towards Efficient Dissemination of Linked Data in the Internet of Things (bibtex)
by Yongrui Qin, Quan Z. Sheng, Nickolas J.G. Falkner, Ali Shemshadi, Edward Curry
Abstract:
The Internet of Things (IoT) envisions smart objects col- lecting and sharing data at a global scale via the Internet. One challenging issue is how to disseminate data to rele- vant data consumers efficiently. In this paper, we lever- age semantic technologies which can facilitate machine-to- machine communications, such as Linked Data, to build an efficient information dissemination system for semantic IoT. The system integrates Linked Data streams generated from various data collectors and disseminates matched data to relevant data consumers based on Basic Graph Patterns (BGPs) registered in the system by those consumers. To efficiently match BGPs against Linked Data streams, we in- troduce two types of matching, namely semantic matching and pattern matching, by considering whether the matching process supports semantic relatedness computation. Two new data structures, namely MVR-tree and TP-automata, are introduced to suit these types of matching respectively. Experiments show that an MVR-tree designed for semantic matching can achieve a twofold increase in throughput com- pared with the naive R-tree based method. TP-automata, as the first approach designed for pattern matching over Linked Data streams, also provides two to three orders of magni- tude improvements on throughput compared with semantic matching approaches.
Reference:
Yongrui Qin, Quan Z. Sheng, Nickolas J.G. Falkner, Ali Shemshadi, Edward Curry, "Towards Efficient Dissemination of Linked Data in the Internet of Things", In 23rd ACM International Conference on Information and Knowledge Management (CIKM 2014), ACM, Shanghai, China, pp. 1779-1782, 2014.
Bibtex Entry:
@inproceedings{Qin2014,
abstract = {The Internet of Things (IoT) envisions smart objects col- lecting and sharing data at a global scale via the Internet. One challenging issue is how to disseminate data to rele- vant data consumers efficiently. In this paper, we lever- age semantic technologies which can facilitate machine-to- machine communications, such as Linked Data, to build an efficient information dissemination system for semantic IoT. The system integrates Linked Data streams generated from various data collectors and disseminates matched data to relevant data consumers based on Basic Graph Patterns (BGPs) registered in the system by those consumers. To efficiently match BGPs against Linked Data streams, we in- troduce two types of matching, namely semantic matching and pattern matching, by considering whether the matching process supports semantic relatedness computation. Two new data structures, namely MVR-tree and TP-automata, are introduced to suit these types of matching respectively. Experiments show that an MVR-tree designed for semantic matching can achieve a twofold increase in throughput com- pared with the naive R-tree based method. TP-automata, as the first approach designed for pattern matching over Linked Data streams, also provides two to three orders of magni- tude improvements on throughput compared with semantic matching approaches.},
address = {Shanghai, China},
author = {Qin, Yongrui and Sheng, Quan Z. and Falkner, Nickolas J.G. and Shemshadi, Ali and Curry, Edward},
booktitle = {23rd ACM International Conference on Information and Knowledge Management (CIKM 2014)},
doi = {10.1145/2661829.2661889},
file = {:Users/ed/Library/Application Support/Mendeley Desktop/Downloaded/Qin et al. - 2014 - Towards Efficient Dissemination of Linked Data in the Internet of Things.pdf:pdf},
keywords = {Linked data,information dissemination,query index},
pages = {1779--1782},
publisher = {ACM},
title = {{Towards Efficient Dissemination of Linked Data in the Internet of Things}},
url = {http://www.edwardcurry.org/publications/db1460p-qinA.pdf},
year = {2014}
}
Powered by bibtexbrowser