Grid-PPPS: A Skyline Method for Efficiently Handling Top-k Queries in Internet of Things
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초록

A rapid development in wireless communication and radio frequency technology has enabled the Internet of Things (IoT) to enter every aspect of our life. However, as more and more sensors get connected to the Internet, they generate huge amounts of data. Thus, widespread deployment of IoT requires development of solutions for analyzing the potentially huge amounts of data they generate. A top-k query processing can be applied to facilitate this task. The top-k queries retrieve.. tuples with the lowest or the highest scores among all of the tuples in the database. There are many methods to answer top-k queries, where skyline methods are efficient when considering all attribute values of tuples. The representative skyline methods are soft-filter-skyline (SFS) algorithm, angle-based space partitioning (ABSP), and plane-project-parallel-skyline (PPPS). Among them, PPPS improves ABSP by partitioning data space into a number of spaces using hyperplane projection. However, PPPS has a high index building time in high-dimensional databases. In this paper, we propose a new skyline method (called Grid-PPPS) for efficiently handling top-k queries in IoT applications. The proposed method first performs grid-based partitioning on data space and then partitions it once again using hyperplane projection. Experimental results show that our method improves the index building time compared to the existing state-of-the-art methods.

키워드

INDEX
제목
Grid-PPPS: A Skyline Method for Efficiently Handling Top-k Queries in Internet of Things
저자
Ihm, Sun-YoungNasridinov, AzizPark, Young-Ho
DOI
10.1155/2014/401618
발행일
2014-05
유형
Article
저널명
Journal of Applied Mathematics
2014