Summarization is an important task in data mining. A major challenge over the past years has been the efficient construction of fixed-space synopses that provide a deterministic quality guarantee, often expressed in terms of a maximum-error metric. Histograms and several hierarchical techniques have been proposed for this problem. However, their time and/or space complexities remain impractically high and depend not only on the data set size n, but also on the space budget B. These handicaps stem from a requirement to tabulate all allocations of synopsis space to different regions of the data. In this paper we develop an alternative methodology that dispels these deficiencies, thanks to a fruitful application of the solution to the dual pro...
In this paper, we solve the following data summarization prob-lem: given a multi-dimensional data se...
Despite the surge of interest in data reduction techniques over the past years, no method has been p...
Summarizing topological relations is fundamental to many spatial applications including spatial quer...
Hierarchical synopsis structures offer a viable alternative in terms of efficiency and flexibility i...
Existing hierarchical summarization techniques fail to pro-vide synopses good in terms of relative-e...
Data summarization is an important data mining task which aims to find a compact description of a da...
In this paper we investigate algorithms and lower bounds for summarization problems over a single ...
Histograms and Wavelet synopses have been found to be useful in query optimization, approximate qu...
Data summarization is the process of producing interpretable and representative subsets of an input ...
We study the mergeability of data summaries. Informally speaking, mergeability requires that, given ...
In processing large quantities of data, a fundamental problem is to obtain a summary which supports ...
International audienceData summarization is the process of producing interpretable and representativ...
Summarization: The wavelet decomposition is a proven tool for constructing concise synopses of large...
The need to compress data into synopses of summarized in-formation often arises in many application ...
We study the mergeability of data summaries. Informally speaking, mergeability requires that, given ...
In this paper, we solve the following data summarization prob-lem: given a multi-dimensional data se...
Despite the surge of interest in data reduction techniques over the past years, no method has been p...
Summarizing topological relations is fundamental to many spatial applications including spatial quer...
Hierarchical synopsis structures offer a viable alternative in terms of efficiency and flexibility i...
Existing hierarchical summarization techniques fail to pro-vide synopses good in terms of relative-e...
Data summarization is an important data mining task which aims to find a compact description of a da...
In this paper we investigate algorithms and lower bounds for summarization problems over a single ...
Histograms and Wavelet synopses have been found to be useful in query optimization, approximate qu...
Data summarization is the process of producing interpretable and representative subsets of an input ...
We study the mergeability of data summaries. Informally speaking, mergeability requires that, given ...
In processing large quantities of data, a fundamental problem is to obtain a summary which supports ...
International audienceData summarization is the process of producing interpretable and representativ...
Summarization: The wavelet decomposition is a proven tool for constructing concise synopses of large...
The need to compress data into synopses of summarized in-formation often arises in many application ...
We study the mergeability of data summaries. Informally speaking, mergeability requires that, given ...
In this paper, we solve the following data summarization prob-lem: given a multi-dimensional data se...
Despite the surge of interest in data reduction techniques over the past years, no method has been p...
Summarizing topological relations is fundamental to many spatial applications including spatial quer...