We present a novel parallel algorithm for drawing balanced samples from large populations. When auxiliary variables about the population units are known, balanced sampling improves the quality of the estimations obtained from the sample. Available algorithms, e.g., the cube method, are inherently sequential, and do not scale to large populations. Our parallel algorithm is based on a variant of the cube method for stratified populations. It has the same sample quality as sequential algorithms, and almost ideal parallel speedup
This paper presents a review and assessment of the use of balanced sampling by means of the cube met...
As technology progresses, the processors used for statistical computation are not getting faster: th...
In this paper we propose a state-dependent importance sampling heuristic to estimate the probability...
Balanced sampling is a very efficient sampling design when the variable of interest is correlated to...
Balanced sampling is a random method for sample selection, the use of which is preferable when auxil...
We describe an algorithm for perfect weighted-random sampling of a population with time complexity O...
Sequential sampling occurs when the entire population is not known in advance and data are obtained ...
We discuss the role of parallel computing in the design and analysis of adaptive sampling procedures...
Sampling is important for a variety of graphics applications include rendering, imaging, and geometr...
Sampling is important for a variety of graphics applications include rendering, imaging, and geometr...
This article introduces the method of balanced sampling and explains how to apply it to the selecti...
Data structures for efficient sampling from a set of weighted items are an important building block ...
In the numerical treatment of population dynamic models a great number of large linear systems must ...
We proposed a new algorithm to preprocess huge and imbalanced data.This algorithm, based on distance...
In big data context, traditional MCMC methods, such as Metropolis-Hastings algorithms and hybrid Mon...
This paper presents a review and assessment of the use of balanced sampling by means of the cube met...
As technology progresses, the processors used for statistical computation are not getting faster: th...
In this paper we propose a state-dependent importance sampling heuristic to estimate the probability...
Balanced sampling is a very efficient sampling design when the variable of interest is correlated to...
Balanced sampling is a random method for sample selection, the use of which is preferable when auxil...
We describe an algorithm for perfect weighted-random sampling of a population with time complexity O...
Sequential sampling occurs when the entire population is not known in advance and data are obtained ...
We discuss the role of parallel computing in the design and analysis of adaptive sampling procedures...
Sampling is important for a variety of graphics applications include rendering, imaging, and geometr...
Sampling is important for a variety of graphics applications include rendering, imaging, and geometr...
This article introduces the method of balanced sampling and explains how to apply it to the selecti...
Data structures for efficient sampling from a set of weighted items are an important building block ...
In the numerical treatment of population dynamic models a great number of large linear systems must ...
We proposed a new algorithm to preprocess huge and imbalanced data.This algorithm, based on distance...
In big data context, traditional MCMC methods, such as Metropolis-Hastings algorithms and hybrid Mon...
This paper presents a review and assessment of the use of balanced sampling by means of the cube met...
As technology progresses, the processors used for statistical computation are not getting faster: th...
In this paper we propose a state-dependent importance sampling heuristic to estimate the probability...