Article ID Journal Published Year Pages File Type
6857667 Information Sciences 2015 23 Pages PDF
Abstract
Skyline queries have recently attracted considerable attention for their ability to return data points from a given dataset that are not dominated by any other points. This study extends the concept of skyline queries in the development of a σ-neighborhood skyline query (σ-N skyline query). In contrast to previous methods, the σ-N skyline query finds skyline points and points that are similar, i.e., close to the skyline points. The σ-N skyline points are useful to the user if a skyline point, compared to its σ-N skyline point, is less competitive. In applications such as decision making, market analysis, and business planning, σ-N skyline can provide more flexible answers. This study defines this problem and proposes a new index tree and efficient algorithms to resolve the problem. We conducted a set of simulations to demonstrate the effectiveness and efficiency of the proposed algorithm.
Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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