Skyline analysis is important for multi-criteria decision making applications. The data in some of these applications are inherently uncertain due to various factors. Although a considerable amount of research has been dedicated separately to efficient skyline computation, as well as modeling uncertain data and answering some types of queries on uncertain data, how to conduct skyline analysis on uncertain data remains an open problem at large. In this thesis, we tackle the problem of skyline analysis on uncertain data. We propose a novel probabilistic skyline model where an uncertain object may take a probability to be in the skyline, and a p-skyline contains all the objects whose skyline probabilities are at least p.Computing probabilistic...
Skyline computation has many applications including multi-criteria decision making. In this paper, w...
In many applications involving the multiple criteria optimal decision making, users may often want t...
Uncertainty is inherent in data collected from many important, novel applications such as large sens...
Uncertain data are inherent in some important applications. Although a considerable amount of resear...
Many recent applications involve processing and analyzing uncertain data. In this paper, we combine ...
In this paper, we introduce the notion of -skyline as an alternative representation for uncertain sk...
Skyline analysis is a key in a wide spectrum of real applications involving multi-criteria optimal d...
In this paper, we introduce the notion of τ-skyline as an alternative representation for uncertain s...
Abstract—With the rapid increase in the amount of uncertain data available, probabilistic skyline co...
Given a set of points with uncertain locations, we consider the problem of computing the probability...
Skyline operator is a useful tool in multi-criteria decision making in various applications. Uncerta...
Data uncertainty inherently exists in a large number of applications due to factors such as limitati...
In many applications involving the multiple criteria optimal decision making, users may often want t...
the date of receipt and acceptance should be inserted later Abstract Skyline operator is a useful to...
Uncertain data are inevitable in many applications due to various factors such as the limitations of...
Skyline computation has many applications including multi-criteria decision making. In this paper, w...
In many applications involving the multiple criteria optimal decision making, users may often want t...
Uncertainty is inherent in data collected from many important, novel applications such as large sens...
Uncertain data are inherent in some important applications. Although a considerable amount of resear...
Many recent applications involve processing and analyzing uncertain data. In this paper, we combine ...
In this paper, we introduce the notion of -skyline as an alternative representation for uncertain sk...
Skyline analysis is a key in a wide spectrum of real applications involving multi-criteria optimal d...
In this paper, we introduce the notion of τ-skyline as an alternative representation for uncertain s...
Abstract—With the rapid increase in the amount of uncertain data available, probabilistic skyline co...
Given a set of points with uncertain locations, we consider the problem of computing the probability...
Skyline operator is a useful tool in multi-criteria decision making in various applications. Uncerta...
Data uncertainty inherently exists in a large number of applications due to factors such as limitati...
In many applications involving the multiple criteria optimal decision making, users may often want t...
the date of receipt and acceptance should be inserted later Abstract Skyline operator is a useful to...
Uncertain data are inevitable in many applications due to various factors such as the limitations of...
Skyline computation has many applications including multi-criteria decision making. In this paper, w...
In many applications involving the multiple criteria optimal decision making, users may often want t...
Uncertainty is inherent in data collected from many important, novel applications such as large sens...