Histograms and Wavelet synopses provide useful tools in query optimization and approximate query answering. Traditional histogram construction algorithms, e.g., V-Optimal, use error measures which are the sums of a suitable function, e.g., square, of the error at each point. Although the best-known algorithms for solving these problems run in quadratic time, a sequence of results have given us a linear time approximation scheme for these algorithms. In recent years, there have been many emerging applications where we are interested in measuring the maximum (absolute or relative) error at a point. We show that this problem is fundamentally different from the other traditional nonl∞ error measures and provide an optimal algorithm that runs in...
We have solved the following problem using Pattern Classijication Techniques (PCT): Given two histog...
Given a time series data stream, the generation of error-bounded Piecewise Linear Representation (er...
Constructing Haar wavelet synopses with guaranteed maximum error on data approximations has many rea...
Histograms and Wavelet synopses provide useful tools in query optimization and approximate query ans...
Summarization: Several studies have demonstrated the effectiveness of the wavelet decomposition as a...
AbstractIn recent years wavelets were shown to be effective data synopses. We are concerned with the...
Histograms have long been used to capture attribute value distribution statistics for query optimize...
In this paper, we study the problem of computing the maxima of a set of n points in three dimensions...
This paper develops two probabilistic methods that allow the analysis of the maximum data structure ...
Summarization: Many current relational database systems use some form of histograms to approximate t...
In this paper we introduce the notion of approximate data structures, in which a small amount of er...
We have solved the following problem using pattern classification techniques (PCT): given two histog...
Dedicated to Stanley Osher on the occasion of his 70-th birthday with much admiration Abstract. Adap...
We study a lossy compression scheme linked to the biological problem of founder reconstruction: The ...
We study the problem of computing wavelet-based synopses for massive data sets in static and streami...
We have solved the following problem using Pattern Classijication Techniques (PCT): Given two histog...
Given a time series data stream, the generation of error-bounded Piecewise Linear Representation (er...
Constructing Haar wavelet synopses with guaranteed maximum error on data approximations has many rea...
Histograms and Wavelet synopses provide useful tools in query optimization and approximate query ans...
Summarization: Several studies have demonstrated the effectiveness of the wavelet decomposition as a...
AbstractIn recent years wavelets were shown to be effective data synopses. We are concerned with the...
Histograms have long been used to capture attribute value distribution statistics for query optimize...
In this paper, we study the problem of computing the maxima of a set of n points in three dimensions...
This paper develops two probabilistic methods that allow the analysis of the maximum data structure ...
Summarization: Many current relational database systems use some form of histograms to approximate t...
In this paper we introduce the notion of approximate data structures, in which a small amount of er...
We have solved the following problem using pattern classification techniques (PCT): given two histog...
Dedicated to Stanley Osher on the occasion of his 70-th birthday with much admiration Abstract. Adap...
We study a lossy compression scheme linked to the biological problem of founder reconstruction: The ...
We study the problem of computing wavelet-based synopses for massive data sets in static and streami...
We have solved the following problem using Pattern Classijication Techniques (PCT): Given two histog...
Given a time series data stream, the generation of error-bounded Piecewise Linear Representation (er...
Constructing Haar wavelet synopses with guaranteed maximum error on data approximations has many rea...