\name{T.Owen} \alias{T.Owen} \title{ Owen's function } \description{ Evaluates funtion T(h,a) studied by D.B.Owen } \usage{ T.Owen(h, a, jmax=50, cut.point=6) } \arguments{ \item{h}{ a numerical vector. Missing values (\code{NA}s) and \code{Inf} are allowed. } \item{a}{ a numerical scalar. \code{Inf} is allowed. } \item{jmax}{ an integer scalar value which regulates the accuracy of the result. See DETAILS below for explanation. } \item{cut.point}{ a scalar value which regulates the behaviour of the algorithm. See DETAILS below for explanation. }} \value{ a numerical vector } \details{ If \code{a>1} and \code{01} and \code{h>cut.point}, an asymptotic approximation is used. In the other cases, various reflection properties of the function are exploited. See the reference below for more information. } \section{BACKROUND}{ The function T(h,a) is useful for the computation of the bivariate normal distribution function and related quantities. See the reference below for more information. } \references{ Owen, D. B. (1956). Tables for computing bivariate normal probabilities. \emph{Ann. Math. Statist.} \bold{27}, 1075-1090. } \seealso{ \code{\link{pnorm2}}, \code{\link{psn}} } \examples{ owen <- T.Owen(1:10, 2) } \keyword{math} % Converted by Sd2Rd version 0.3-3.