### Helical Valley Function ### Page 362 Dennis + Schnabel require(stats); require(graphics) theta <- function(x1,x2) (atan(x2/x1) + (if(x1 <= 0) pi else 0))/ (2*pi) ## but this is easier : theta <- function(x1,x2) atan2(x2, x1)/(2*pi) f <- function(x) { f1 <- 10*(x[3] - 10*theta(x[1],x[2])) f2 <- 10*(sqrt(x[1]^2+x[2]^2)-1) f3 <- x[3] return(f1^2+f2^2+f3^2) } ## explore surface {at x3 = 0} x <- seq(-1, 2, length=50) y <- seq(-1, 1, length=50) z <- apply(as.matrix(expand.grid(x, y)), 1, function(x) f(c(x, 0))) contour(x, y, matrix(log10(z), 50, 50)) str(nlm.f <- nlm(f, c(-1,0,0), hessian = TRUE)) points(rbind(nlm.f$estim[1:2]), col = "red", pch = 20) ### the Rosenbrock banana valley function fR <- function(x) { x1 <- x[1]; x2 <- x[2] 100*(x2 - x1*x1)^2 + (1-x1)^2 } ## explore surface fx <- function(x) { ## `vectorized' version of fR() x1 <- x[,1]; x2 <- x[,2] 100*(x2 - x1*x1)^2 + (1-x1)^2 } x <- seq(-2, 2, length=100) y <- seq(-0.5, 1.5, length=100) z <- fx(expand.grid(x, y)) op <- par(mfrow = c(2,1), mar = 0.1 + c(3,3,0,0)) contour(x, y, matrix(log10(z), length(x))) str(nlm.f2 <- nlm(fR, c(-1.2, 1), hessian = TRUE)) points(rbind(nlm.f2$estim[1:2]), col = "red", pch = 20) ## Zoom in : rect(0.9, 0.9, 1.1, 1.1, border = "orange", lwd = 2) x <- y <- seq(0.9, 1.1, length=100) z <- fx(expand.grid(x, y)) contour(x, y, matrix(log10(z), length(x))) mtext("zoomed in");box(col = "orange") points(rbind(nlm.f2$estim[1:2]), col = "red", pch = 20) par(op) fg <- function(x) { gr <- function(x1, x2) { c(-400*x1*(x2 - x1*x1)-2*(1-x1), 200*(x2 - x1*x1)) } x1 <- x[1]; x2 <- x[2] res<- 100*(x2 - x1*x1)^2 + (1-x1)^2 attr(res, "gradient") <- gr(x1, x2) return(res) } nlm(fg, c(-1.2, 1), hessian = TRUE) ## or use deriv to find the derivatives fd <- deriv(~ 100*(x2 - x1*x1)^2 + (1-x1)^2, c("x1", "x2")) fdd <- function(x1, x2) {} body(fdd) <- fd nlm(function(x) fdd(x[1], x[2]), c(-1.2,1), hessian = TRUE) fgh <- function(x) { gr <- function(x1, x2) c(-400*x1*(x2 - x1*x1) - 2*(1-x1), 200*(x2 - x1*x1)) h <- function(x1, x2) { a11 <- 2 - 400*x2 + 1200*x1*x1 a21 <- -400*x1 matrix(c(a11, a21, a21, 200), 2, 2) } x1 <- x[1]; x2 <- x[2] res<- 100*(x2 - x1*x1)^2 + (1-x1)^2 attr(res, "gradient") <- gr(x1, x2) attr(res, "hessian") <- h(x1, x2) return(res) } nlm(fgh, c(-1.2,1), hessian = TRUE)