Quantiles are very important statistics information used to describe the distribution of datasets. Given the quantiles of a dataset, we can easily know the distribution of the dataset, which is a fundamental problem in data analysis. However, quite often, computing quantiles directly is inappropriate due to the memory limitations. Further, in many settings such as data streaming and sensor network model, even the data size is unpredictable. Although the quantiles computation has been widely studied, it was mostly in the sequential setting. In this paper, we study several quantile computation algorithms in the \emph{distributed} setting and compare them in terms of space usage, running time, and accuracy. Moreover, we provide detailed experi...
In order to deal with high-dimensional distributed data, this article develops a novel and communica...
We present a fast algorithm for computing approx-imate quantiles in high speed data streams with det...
Abstract—The need to estimate a particular quantile of a distribution is an important problem which ...
A fundamental problem in data management and analysis is to generate descriptions of the distributio...
A fundamental problem in data management and analysis is to gen-erate descriptions of the distributi...
We present new algorithms for computing approximate quantiles of large datasets in a single pass. Th...
The '-quantile of an ordered sequence of data values is the element with rank ' \Theta n, ...
A fundamental problem in data management and analysis is to generate descriptions of the distributio...
Sensor networks have been deployed in various environments, from battle field surveillance to weathe...
Skew is prevalentin many data sourcessuchas IP traffic streams. To continually summarize the distrib...
In a recent paper [MRL98], we had described a general framework for single pass approximate quantile...
Simulation output data analysis in performance evaluation studies of complex stochastic systems such...
We present lower bounds on the space required to estimate the quantiles of a stream of numerical val...
We consider distributed iterative algorithms for the averaging problem over time-varying topologies....
Part 10: Learning - IntelligenceInternational audienceThe goal of our research is to estimate the qu...
In order to deal with high-dimensional distributed data, this article develops a novel and communica...
We present a fast algorithm for computing approx-imate quantiles in high speed data streams with det...
Abstract—The need to estimate a particular quantile of a distribution is an important problem which ...
A fundamental problem in data management and analysis is to generate descriptions of the distributio...
A fundamental problem in data management and analysis is to gen-erate descriptions of the distributi...
We present new algorithms for computing approximate quantiles of large datasets in a single pass. Th...
The '-quantile of an ordered sequence of data values is the element with rank ' \Theta n, ...
A fundamental problem in data management and analysis is to generate descriptions of the distributio...
Sensor networks have been deployed in various environments, from battle field surveillance to weathe...
Skew is prevalentin many data sourcessuchas IP traffic streams. To continually summarize the distrib...
In a recent paper [MRL98], we had described a general framework for single pass approximate quantile...
Simulation output data analysis in performance evaluation studies of complex stochastic systems such...
We present lower bounds on the space required to estimate the quantiles of a stream of numerical val...
We consider distributed iterative algorithms for the averaging problem over time-varying topologies....
Part 10: Learning - IntelligenceInternational audienceThe goal of our research is to estimate the qu...
In order to deal with high-dimensional distributed data, this article develops a novel and communica...
We present a fast algorithm for computing approx-imate quantiles in high speed data streams with det...
Abstract—The need to estimate a particular quantile of a distribution is an important problem which ...