Generating random variables from a specific distribution, whether symmetric or asymmetric, is a concern of investigators involved in Monte Carlo studies. Of particular interest to those concerned with robustness is the generation of contaminated symmetric distributions such as those used in the Princeton Robustness Study. A reliable composite uniform U(0,1) generator is described and algorithms for transforming U(0,1) to symmetric long-tailed and contaminated symmetric distributions are given. Goodness-of-fit tests and graphical illustrations demonstrate the adequacy of the empirical distributions
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Generating random variables from a specific distribution, whether symmetric or asymmetric, is a conc...
Generating random variables from a specific distribution, whether symmetric or asymmetric, is a conc...
Reliable methods for generating pseudo-random numbers from specific distributions are increasingly i...
Reliable methods for generating pseudo-random numbers from specific distributions are increasingly i...
Reliable methods for generating pseudo-random numbers from specific distributions are increasingly i...
Reliable methods for generating pseudo-random numbers from specific distributions are increasingly i...
Generating random variables from specific bounded or unbounded distributions is a problem frequently...
Generating random variables from specific bounded or unbounded distributions is a problem frequently...
Generating random variables from specific bounded or unbounded distributions is a problem frequently...
A new symmetric univariate probability distribution is proposed. Several properties are derived, and...
A method of constructing consistent and effective algorithms for robust parametric generators of ran...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Generating random variables from a specific distribution, whether symmetric or asymmetric, is a conc...
Generating random variables from a specific distribution, whether symmetric or asymmetric, is a conc...
Reliable methods for generating pseudo-random numbers from specific distributions are increasingly i...
Reliable methods for generating pseudo-random numbers from specific distributions are increasingly i...
Reliable methods for generating pseudo-random numbers from specific distributions are increasingly i...
Reliable methods for generating pseudo-random numbers from specific distributions are increasingly i...
Generating random variables from specific bounded or unbounded distributions is a problem frequently...
Generating random variables from specific bounded or unbounded distributions is a problem frequently...
Generating random variables from specific bounded or unbounded distributions is a problem frequently...
A new symmetric univariate probability distribution is proposed. Several properties are derived, and...
A method of constructing consistent and effective algorithms for robust parametric generators of ran...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...
Monte Carlo techniques are often the only practical way to evaluate difficult integrals or to sample...