Part 10: Learning - IntelligenceInternational audienceThe goal of our research is to estimate the quantiles of a distribution from a large set of samples that arrive sequentially. We propose a novel quantile estimator that requires a finite memory and is simple to implement. Furthermore, the estimator falls under the family of incremental estimators, i.e., it utilizes the previously-computed estimates and only resorts to the last sample for updating these estimates. The estimator estimates the quantile on a set of discrete values. Choosing a low resolution results in fast convergence and low precision of the current estimate after convergence, while a high resolution results in slower convergence, but higher precision. The convergence resul...
Managing telecommunication networks involves collecting and analyzing large amounts of statistical d...
The '-quantile of an ordered sequence of data values is the element with rank ' \Theta n, ...
In a recent paper [MRL98], we had described a general framework for single pass approximate quantile...
The goal of our research is to estimate the quantiles of a distribution from a large set of samples ...
We present a novel lightweight incremental quantile estimator which possesses far less complexity th...
The estimation of the quantiles is pertinent when one is mining data streams. However, the complexit...
In this paper, we present two new stochastic approximation algorithms for the problem of quantile es...
Suppose that $X\sb1,X\sb2,\cdots$ are independent observations from a distribution F, and that one w...
The need to estimate a particular quantile of a distribution is an important problem which frequentl...
We present new algorithms for computing approximate quantiles of large datasets in a single pass. Th...
The traditional estimator ˆξp,n for the p-quantile ξp of a random variable X, given n observations f...
© 2020, Springer-Verlag GmbH Germany, part of Springer Nature. The widespread use of quantile regres...
The aim of the paper is to study the problem of estimating the quantile function of a finite populat...
The aim of the paper is to study the problem of estimating the quantile function of a finite populati...
We consider estimation of a quantile from a discrete distribution. This gives rise to three new idea...
Managing telecommunication networks involves collecting and analyzing large amounts of statistical d...
The '-quantile of an ordered sequence of data values is the element with rank ' \Theta n, ...
In a recent paper [MRL98], we had described a general framework for single pass approximate quantile...
The goal of our research is to estimate the quantiles of a distribution from a large set of samples ...
We present a novel lightweight incremental quantile estimator which possesses far less complexity th...
The estimation of the quantiles is pertinent when one is mining data streams. However, the complexit...
In this paper, we present two new stochastic approximation algorithms for the problem of quantile es...
Suppose that $X\sb1,X\sb2,\cdots$ are independent observations from a distribution F, and that one w...
The need to estimate a particular quantile of a distribution is an important problem which frequentl...
We present new algorithms for computing approximate quantiles of large datasets in a single pass. Th...
The traditional estimator ˆξp,n for the p-quantile ξp of a random variable X, given n observations f...
© 2020, Springer-Verlag GmbH Germany, part of Springer Nature. The widespread use of quantile regres...
The aim of the paper is to study the problem of estimating the quantile function of a finite populat...
The aim of the paper is to study the problem of estimating the quantile function of a finite populati...
We consider estimation of a quantile from a discrete distribution. This gives rise to three new idea...
Managing telecommunication networks involves collecting and analyzing large amounts of statistical d...
The '-quantile of an ordered sequence of data values is the element with rank ' \Theta n, ...
In a recent paper [MRL98], we had described a general framework for single pass approximate quantile...