Top-k query processing is a fundamental building block for efficient ranking in a large number of applications. Efficiency is a central issue, especially for distributed settings, when the data is spread across different nodes in a network. This paper introduces novel optimization methods for top-k aggregation queries in such distributed environments that can be applied to all algorithms that fall into the frameworks of the prior TPUT and KLEE methods. The optimizations address 1) hierarchically grouping input lists into top-k operator trees and optimizing the tree structure, and 2) computing data-adaptive scan depths for different input sources. The paper presents comprehensive experiments with two different real-life datasets, using the n...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
We consider the problem of query optimization in distributed data stream systems where multiple cont...
Top-k query processing is a fundamental building block for efficient ranking in a large number of ap...
Top-k query processing is a fundamental building block for efficient ranking in a large number of ap...
Top-$k$ query processing is a fundamental building block for efficient ranking in a large number of ...
Top-$k$ query processing is a fundamental building block for efficient ranking in a large number of...
We consider distributed top-k queries in wide-area networks where the index lists for the attribute...
Distributed top-$k$ query processing is increasingly becoming an essential functionality in a large...
Distributed top-k query processing is increasingly becoming an essential functionality in a large nu...
This paper presents a new algorithm to answer top-k queries (e.g. “find the k objects with the highe...
This paper addresses the efficient processing of top-k queries in wide-area distributed data reposit...
Supporting queries over dispersed data stored in large-scale distributed systems, such as peer-to-pe...
Query processing in traditional information management systems has moved from an exact match model t...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
We consider the problem of query optimization in distributed data stream systems where multiple cont...
Top-k query processing is a fundamental building block for efficient ranking in a large number of ap...
Top-k query processing is a fundamental building block for efficient ranking in a large number of ap...
Top-$k$ query processing is a fundamental building block for efficient ranking in a large number of ...
Top-$k$ query processing is a fundamental building block for efficient ranking in a large number of...
We consider distributed top-k queries in wide-area networks where the index lists for the attribute...
Distributed top-$k$ query processing is increasingly becoming an essential functionality in a large...
Distributed top-k query processing is increasingly becoming an essential functionality in a large nu...
This paper presents a new algorithm to answer top-k queries (e.g. “find the k objects with the highe...
This paper addresses the efficient processing of top-k queries in wide-area distributed data reposit...
Supporting queries over dispersed data stored in large-scale distributed systems, such as peer-to-pe...
Query processing in traditional information management systems has moved from an exact match model t...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
We consider the problem of query optimization in distributed data stream systems where multiple cont...