The increasing popularity and complexity of random number intensive methods such as simulation and bootstrapping in econometrics requires researchers to have a good grasp of random number generation in general, and the specific generators that they employ in particular. Here, we discuss the random number generation options, their specifications, and their implementations in gretl. We also assess the performance and the reliability of gretl in this department by conducting extensive empirical testing using the TestU01 library. Our results show that the available alternatives are soundly implemented and should be sufficient for most econometric applications
An increasing number of practitioners and applied researchers started using the R programming system...
Simulations and experiments frequently demand the generation of random numbera that have specific di...
The term random number has been used by many scholars to explain the behaviour of a stochastic syste...
In many applications, for example cryptography and Monte Carlo simulation, there is need for random ...
As simulation arid Monte Carlo continue to play an increasing role in statistical research, careful ...
The current state of the art in computer random number generation uses a method developed over thirt...
Simulation experiments with the help of random numbers are increasing in various Defence application...
Random numbers are essential ingredients in a statistical analysis, They can be generated easily th...
Use of empirical studies based on computer-generated random numbers has become a common practice in ...
Abstract: A variety of software packages, such as Excel, Access, ACL, and RAT-STATS are used in bus...
Rapid generation of high quality Gaussian random numbers is a key capability for simulations across ...
Random number generators (RNGs) are widely used in conducting Monte Carlo simulation studies, which ...
We briefly overview the design principles, implementation techniques, and empirical testing of unifo...
Includes bibliographical references (pages 91-93)This paper is an examination of the generation of r...
Winner, ScienceGood random number generators (RNGs) are required for many applications in science an...
An increasing number of practitioners and applied researchers started using the R programming system...
Simulations and experiments frequently demand the generation of random numbera that have specific di...
The term random number has been used by many scholars to explain the behaviour of a stochastic syste...
In many applications, for example cryptography and Monte Carlo simulation, there is need for random ...
As simulation arid Monte Carlo continue to play an increasing role in statistical research, careful ...
The current state of the art in computer random number generation uses a method developed over thirt...
Simulation experiments with the help of random numbers are increasing in various Defence application...
Random numbers are essential ingredients in a statistical analysis, They can be generated easily th...
Use of empirical studies based on computer-generated random numbers has become a common practice in ...
Abstract: A variety of software packages, such as Excel, Access, ACL, and RAT-STATS are used in bus...
Rapid generation of high quality Gaussian random numbers is a key capability for simulations across ...
Random number generators (RNGs) are widely used in conducting Monte Carlo simulation studies, which ...
We briefly overview the design principles, implementation techniques, and empirical testing of unifo...
Includes bibliographical references (pages 91-93)This paper is an examination of the generation of r...
Winner, ScienceGood random number generators (RNGs) are required for many applications in science an...
An increasing number of practitioners and applied researchers started using the R programming system...
Simulations and experiments frequently demand the generation of random numbera that have specific di...
The term random number has been used by many scholars to explain the behaviour of a stochastic syste...