Title of article :
Efficient Processing of Skyline Group Queries over a Data Stream
Author/Authors :
Guo, Xi Engineering for Materials Science - University of Science and Technology Beijing , Li, Hailing Engineering for Materials Science - University of Science and Technology Beijing , Wulamu, Aziguli Engineering for Materials Science - University of Science and Technology Beijing , Xie, Yonghong Engineering for Materials Science - University of Science and Technology Beijing , Fu, Yajing Engineering for Materials Science - University of Science and Technology Beijing
Abstract :
In this paper, we study the skyline group problem over a data stream. An object can dominate another object if it is not worse than the other object on all attributes and is better than the other object on at least one attribute. If an object cannot be dominated by any other object, it is a skyline object. The skyline group problem involves finding k-item groups that cannot be dominated by any other k-item group. Existing algorithms designed to find skyline groups can only process static data. However, data changes as a stream with time in many applications,
and algorithms should be designed to support skyline group queries on dynamic data. In this paper, we propose new algorithms to find skyline groups over a data stream. We use data structures, namely a hash table, dominance graph, and matrix, to store dominance information and update results incrementally. We conduct experiments on
synthetic datasets to evaluate the performance of the proposed algorithms. The experimental results show that our
algorithms can efficiently find skyline groups over a data stream
Keywords :
query processing , data streams , skyline group , skyline
Journal title :
Astroparticle Physics