In this paper we consider the problem of tracking multiple quantiles of dynamicallyvarying data stream distributions. The method is based on making incremental updates ofthe quantile estimates every time a new sample is received. The method is memory andcomputationally efficient since it only stores one value for each quantile estimate and onlyperforms one operation per quantile estimate when a new sample is received from the datastream. The estimates are realistic in the sense that the monotone property of quantiles issatisfied in every iteration. Experiments show that the method efficiently tracks multiplequantiles and outperforms state of the art methods
The goal of our research is to estimate the quantiles of a distribution from a large set of samples ...
Data availability statement: The data that support the findings of this study are openly available i...
We address the problem of estimating the running quantile of a data stream when the memory for stori...
The estimation of quantiles is one of the most fundamental data mining tasks. As most real-time data...
A fundamental problem in data management and analysis is to gen-erate descriptions of the distributi...
A fundamental problem in data management and analysis is to generate descriptions of the distributio...
We present a novel lightweight incremental quantile estimator which possesses far less complexity th...
In this paper we propose new method for simultaneous generating multiple quantiles corresponding to ...
The Exponentially Weighted Average (EWA) of observations is known to be state-of-art estimator for t...
The need to estimate a particular quantile of a distribution is an important problem which frequentl...
We present UDDSketch (Uniform DDSketch), a novel sketch for fast and accurate tracking of quantiles ...
Abstract—The need to estimate a particular quantile of a distribution is an important problem which ...
The need to estimate a particular quantile of a distribution is an important problem that frequently...
The need to estimate a particular quantile of a distribution is an important problem that frequently...
Concept drift is a well-known issue that arises when working with data streams. In this paper, we pr...
The goal of our research is to estimate the quantiles of a distribution from a large set of samples ...
Data availability statement: The data that support the findings of this study are openly available i...
We address the problem of estimating the running quantile of a data stream when the memory for stori...
The estimation of quantiles is one of the most fundamental data mining tasks. As most real-time data...
A fundamental problem in data management and analysis is to gen-erate descriptions of the distributi...
A fundamental problem in data management and analysis is to generate descriptions of the distributio...
We present a novel lightweight incremental quantile estimator which possesses far less complexity th...
In this paper we propose new method for simultaneous generating multiple quantiles corresponding to ...
The Exponentially Weighted Average (EWA) of observations is known to be state-of-art estimator for t...
The need to estimate a particular quantile of a distribution is an important problem which frequentl...
We present UDDSketch (Uniform DDSketch), a novel sketch for fast and accurate tracking of quantiles ...
Abstract—The need to estimate a particular quantile of a distribution is an important problem which ...
The need to estimate a particular quantile of a distribution is an important problem that frequently...
The need to estimate a particular quantile of a distribution is an important problem that frequently...
Concept drift is a well-known issue that arises when working with data streams. In this paper, we pr...
The goal of our research is to estimate the quantiles of a distribution from a large set of samples ...
Data availability statement: The data that support the findings of this study are openly available i...
We address the problem of estimating the running quantile of a data stream when the memory for stori...