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Ranking strategies and threats: a cost-based pareto optimization approach SCIE SCOPUS

Title
Ranking strategies and threats: a cost-based pareto optimization approach
Authors
Kim, YYou, GWHwang, SW
Date Issued
2009-08
Publisher
SPRINGER
Abstract
Skyline queries have gained attention as an effective way to identify desirable objects that are "not dominated" by another object in the dataset. From market perspective, such objects are favored as pareto-optimal choices, as each of such objects has at least one competitive edge against all other objects, or not dominated. In other words, non-skyline objects have room for pareto-optimal improvements for more favorable positioning in the market. The goal of this paper is, for such non-skyline objects, to identify the cost-minimal pareto-optimal improvement strategy. More specifically, we abstract this problem as a mixed integer programming problem and develop a novel algorithm for efficiently identifying the optimal solution. In addition, the problem can be reversed to identify, for a skyline product, top-k threats that can be competitors after pareto-optimal improvements with the k lowest costs. Through extensive experiments using synthetic and real-life datasets, we show that our proposed framework is both efficient and scalable.
Keywords
Preference; Linear programming; MIP; Pareto-optimal; SKYLINE
URI
https://oasis.postech.ac.kr/handle/2014.oak/26284
DOI
10.1007/S10619-009-7042-Y
ISSN
0926-8782
Article Type
Article
Citation
DISTRIBUTED AND PARALLEL DATABASES, vol. 26, no. 1, page. 127 - 150, 2009-08
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황승원HWANG, SEUNG WON
Dept of Computer Science & Enginrg
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