Alan Genz


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Person Info

NAME

Alan

SURNAME

Genz

Publications in SciGraph latest 50 shown

  • 2016-05 A Look at Multiplicity Through Misclassification in SANKHYA B
  • 2016 Numerical Computation of Multivariate Normal Probabilities Using Bivariate Conditioning in MONTE CARLO AND QUASI-MONTE CARLO METHODS
  • 2015-09 Bivariate conditioning approximations for multivariate normal probabilities in STATISTICS AND COMPUTING
  • 2014-09 The Supremum of Chi-Square Processes in METHODOLOGY AND COMPUTING IN APPLIED PROBABILITY
  • 2013-12 Computation of the Distribution of the Maximum of Stationary Gaussian Processes in METHODOLOGY AND COMPUTING IN APPLIED PROBABILITY
  • 2012 QMC Computation of Confidence Intervals for a Sleep Performance Model in MONTE CARLO AND QUASI-MONTE CARLO METHODS 2010
  • 2009 Computation of Multivariate Normal and t Probabilities in NONE
  • 2008 MCQMC Methods for Multivariate Statistical Distributions in MONTE CARLO AND QUASI-MONTE CARLO METHODS 2006
  • 2004-08 Numerical computation of rectangular bivariate and trivariate normal and t probabilities in STATISTICS AND COMPUTING
  • 1994-09 DECUHR: an algorithm for automatic integration of singular functions over a hyperrectangular region in NUMERICAL ALGORITHMS
  • 1994 Computation of Statistics Integrals using Subregion Adaptive Numerical Integration in COMPSTAT
  • 1993 Subdivision Methods for Adaptive Integration over Hyperspheres in NUMERICAL INTEGRATION IV
  • 1992 Statistics Applications of Subregion Adaptive Multiple Numerical Integration in NUMERICAL INTEGRATION
  • 1991 An adaptive numerical integration algorithm for simplices in COMPUTING IN THE 90'S
  • 1987 The Numerical Evaluation of Multiple Integrals on Parallel Computers in NUMERICAL INTEGRATION
  • 1987 A Package for Testing Multiple Integration Subroutines in NUMERICAL INTEGRATION
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