In Divide & Recombine (D&R), data are divided into subsets, analytic methodsare applied to each subset independently, with no communication between processes;then the subset outputs for each method are recombined. For big data, this providesalmost all of the analytic tasking needed when data are analyzed. It also provideshigh computational performance because typically most of the computation is em-barrassingly parallel, the simplest parallel computation.Another kind of tasking must address computational performance and numericaccuracy: the computing of functions of all of the data, or “statistics”. For data bigand small, it is often important to compute such statistics for all of the data, whichcan be summaries of the data, su...
The fast and accurate computation of quantile functions (the inverse of cumulative distribution func...
In big data context, traditional MCMC methods, such as Metropolis-Hastings algorithms and hybrid Mon...
Emerging many-core computer architectures provide an incentive for computational methods to exhibit ...
The growth in the use of computationally intensive statistical procedures, especially with big data,...
As technology progresses, the processors used for statistical computation are not getting faster: th...
AbstractI borrow themes from statistics—epsecially the Bayesian ideas underlying average-case analys...
Theoretically, many modern statistical procedures are trivial to parallelize. However, practical de...
We develop a generic divide and conquer algorithm for a parallel tree machine. From the generic algo...
Parallel computation has a long history in econometric computing, but is not at all wide spread. We ...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Designing scalable estimation algorithms is a core challenge in modern statistics. Here we introduce...
The full-text of this book chapter is not available in ORA at this time. Citation: Doornik, J. A., H...
We present a novel parallel algorithm for drawing balanced samples from large populations. When auxi...
This paper presents two complementary statistical computing frameworks that address challenges in pa...
Dr. Henry Neeman, Director OU Supercomputing Center for Education & Research University of Oklahom...
The fast and accurate computation of quantile functions (the inverse of cumulative distribution func...
In big data context, traditional MCMC methods, such as Metropolis-Hastings algorithms and hybrid Mon...
Emerging many-core computer architectures provide an incentive for computational methods to exhibit ...
The growth in the use of computationally intensive statistical procedures, especially with big data,...
As technology progresses, the processors used for statistical computation are not getting faster: th...
AbstractI borrow themes from statistics—epsecially the Bayesian ideas underlying average-case analys...
Theoretically, many modern statistical procedures are trivial to parallelize. However, practical de...
We develop a generic divide and conquer algorithm for a parallel tree machine. From the generic algo...
Parallel computation has a long history in econometric computing, but is not at all wide spread. We ...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Designing scalable estimation algorithms is a core challenge in modern statistics. Here we introduce...
The full-text of this book chapter is not available in ORA at this time. Citation: Doornik, J. A., H...
We present a novel parallel algorithm for drawing balanced samples from large populations. When auxi...
This paper presents two complementary statistical computing frameworks that address challenges in pa...
Dr. Henry Neeman, Director OU Supercomputing Center for Education & Research University of Oklahom...
The fast and accurate computation of quantile functions (the inverse of cumulative distribution func...
In big data context, traditional MCMC methods, such as Metropolis-Hastings algorithms and hybrid Mon...
Emerging many-core computer architectures provide an incentive for computational methods to exhibit ...