Given a set of multi-dimensional points, the skyline contains the best points according to any preference function that is monotone on all axes. In practice, applications that require skyline analysis usually provide numerous candidate attributes, and various users depending on their interests may issue queries regarding different (small) subsets of the dimensions. Formally, given a relation with a large number (e.g.,> 10) of attributes, a query aims at finding the skyline in an arbitrary subspace with a low dimensionality (e.g., 2). The existing algorithms do not support subspace skyline retrieval efficiently because they (i) require scanning the entire database at least once, or (ii) are optimized for one particular subspace but incur ...
Abstract. Skyline queries have gained much attention as alternative query semantics with pros (e.g.l...
The skyline operator is important for multicriteria decision-making applications. Although many rece...
The skyline of a d-dimensional dataset contains the points that are not dominated by any other point...
The skyline operator of a $d$-dimensional dataset, which returns the points that are not dominated b...
Skyline queries have attracted considerable attention to assist multicriteria analysis of large-scal...
Skyline queries return a set of objects, or a skyline, that are not dominated by any other objects. ...
Skyline computation is important in applications that involve multi-criteria decision making. In thi...
Given a set of k-dimensional objects, the skyline query finds the objects that are not dominated by ...
Skyline query processing has recently received a lot of attention in database community. Given a set...
International audienceSkyline queries represent a powerful tool for multidimensional data analysis a...
The skyline of a set of d-dimensional points contains the points that are not dominated by any other...
Skyline has been proposed as an important operator for many applications, such as multi-criteria dec...
The skyline of a set of d-dimensional points contains the points that are not dominated by any other...
The skyline of a set of d-dimensional points contains the points that are not dominated by any other...
The skyline operator returns from a set of multi-dimensional objects a subset of superior objects th...
Abstract. Skyline queries have gained much attention as alternative query semantics with pros (e.g.l...
The skyline operator is important for multicriteria decision-making applications. Although many rece...
The skyline of a d-dimensional dataset contains the points that are not dominated by any other point...
The skyline operator of a $d$-dimensional dataset, which returns the points that are not dominated b...
Skyline queries have attracted considerable attention to assist multicriteria analysis of large-scal...
Skyline queries return a set of objects, or a skyline, that are not dominated by any other objects. ...
Skyline computation is important in applications that involve multi-criteria decision making. In thi...
Given a set of k-dimensional objects, the skyline query finds the objects that are not dominated by ...
Skyline query processing has recently received a lot of attention in database community. Given a set...
International audienceSkyline queries represent a powerful tool for multidimensional data analysis a...
The skyline of a set of d-dimensional points contains the points that are not dominated by any other...
Skyline has been proposed as an important operator for many applications, such as multi-criteria dec...
The skyline of a set of d-dimensional points contains the points that are not dominated by any other...
The skyline of a set of d-dimensional points contains the points that are not dominated by any other...
The skyline operator returns from a set of multi-dimensional objects a subset of superior objects th...
Abstract. Skyline queries have gained much attention as alternative query semantics with pros (e.g.l...
The skyline operator is important for multicriteria decision-making applications. Although many rece...
The skyline of a d-dimensional dataset contains the points that are not dominated by any other point...