Issues and Techniques of Spatio -Temporal Rule Mining for Location Based Services

Article ID

CSTSDE391R7

Issues and Techniques of Spatio -Temporal Rule Mining for Location Based Services

Mr. M.Jayakameswaraiah
Mr. M.Jayakameswaraiah SRI VENKATESWARA UNIVERSITY
Dr. S.Ramakrishna
Dr. S.Ramakrishna
DOI

Abstract

The Convergence of location-aware devices, wireless communication, such as the increasing accuracy of GPS technology and geographic information system functionalities enables the deployment of new services such as location-based services (LBS). Achieve high quality or such services, spatio–temporal data mining techniques are needed. Our work concentrates on the development of data mining techniques for knowledge discovery and delivery in LBS. First, a number of real world spatio–temporal data sets are described, leading to a taxonomy of spatio–temporal data. Second, the paper describes a general methodology that transforms the spatio–temporal rule mining task to the traditional market basket analysis task and applies it to the described data sets, enabling traditional association rule mining methods to discover spatio–temporal rules for LBS. Finally, unique issues in spatio–temporal rule mining are identified and discussed.

Issues and Techniques of Spatio -Temporal Rule Mining for Location Based Services

The Convergence of location-aware devices, wireless communication, such as the increasing accuracy of GPS technology and geographic information system functionalities enables the deployment of new services such as location-based services (LBS). Achieve high quality or such services, spatio–temporal data mining techniques are needed. Our work concentrates on the development of data mining techniques for knowledge discovery and delivery in LBS. First, a number of real world spatio–temporal data sets are described, leading to a taxonomy of spatio–temporal data. Second, the paper describes a general methodology that transforms the spatio–temporal rule mining task to the traditional market basket analysis task and applies it to the described data sets, enabling traditional association rule mining methods to discover spatio–temporal rules for LBS. Finally, unique issues in spatio–temporal rule mining are identified and discussed.

Mr. M.Jayakameswaraiah
Mr. M.Jayakameswaraiah SRI VENKATESWARA UNIVERSITY
Dr. S.Ramakrishna
Dr. S.Ramakrishna

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Mr. M.Jayakameswaraiah. 2013. “. Global Journal of Computer Science and Technology – C: Software & Data Engineering GJCST-C Volume 13 (GJCST Volume 13 Issue C7): .

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Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

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GJCST Volume 13 Issue C7
Pg. 25- 33
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Issues and Techniques of Spatio -Temporal Rule Mining for Location Based Services

Mr. M.Jayakameswaraiah
Mr. M.Jayakameswaraiah SRI VENKATESWARA UNIVERSITY
Dr. S.Ramakrishna
Dr. S.Ramakrishna

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