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Rcgminb <- function(par, fn, gr, lower, upper, bdmsk = NULL, control = list(), ...) {
## An R version of the conjugate gradient minimization
## using the Dai-Yuan ideas
#
# Input:
# par = a vector containing the starting point
# fn = objective function (assumed to be sufficeintly
# differentiable)
# gr = gradient of objective function
# lower = vector of lower bounds on parameters
# upper = vector of upper bounds on parameters
# Note: free parameters outside bounds will be adjusted to
# bounds.
# bdmsk = control vector for bounds and masks. Parameters
# for which bdmsk are 1
# are unconstrained or 'free', those with bdmsk 0 are
# masked i.e., fixed.
# For historical reasons, we use the same array as an
# indicator that a
# parameter is at a lower bound (-3) or upper bound (-1)
# control = list of control parameters
# maxit = a limit on the number of iterations (default 500)
# maximize = TRUE to maximize the function (default FALSE)
# trace = 0 (default) for no output,
# >0 for output (bigger => more output)
# eps=1.0e-7 (default) for use in computing numerical
# gradient approximations.
# dowarn=TRUE by default. Set FALSE to suppress warnings.
#
# Output:
# A list with components:
#
# par: The best set of parameters found.
#
# value: The value of 'fn' corresponding to 'par'.
#
# counts: A two-element integer vector giving the number of
# calls to
# 'fn' and 'gr' respectively. This excludes those calls
# needed
# to compute the Hessian, if requested, and any calls to
# 'fn'
# to compute a finite-difference approximation to the
# gradient.
#
# convergence: An integer code. '0' indicates successful
# convergence.
# Error codes are
# '0' converged
# '1' indicates that the function evaluation count
# 'maxfeval'
# was reached.
# '2' indicates initial point is infeasible
#
# message: A character string giving any additional
# information returned
# by the optimizer, or 'NULL'.
#
# bdmsk: Returned index describing the status of bounds and
# masks at the
# proposed solution. Parameters for which bdmsk are 1 are
# unconstrained
# or 'free', those with bdmsk 0 are masked i.e., fixed. For
# historical
# reasons, we indicate a parameter is at a lower bound
# using -3
# or upper bound using -1.
#
#
# Author: John C Nash
# Date: April 2, 2009; revised July 28, 2009
#################################################################
# control defaults -- idea from spg
ctrl <- list(maxit = 500, maximize = FALSE, trace = 0, eps = 1e-07,
dowarn = TRUE, tol=0)
namc <- names(control)
if (!all(namc %in% names(ctrl)))
stop("unknown names in control: ", namc[!(namc %in% names(ctrl))])
ctrl[namc] <- control
npar<-length(par)
if (ctrl$tol == 0) tol <- npar * (npar * .Machine$double.eps) # for gradient test. Note -- integer overflow if n*n*d.eps
else tol<-ctrl$tol
maxit <- ctrl$maxit # limit on function evaluations
maximize <- ctrl$maximize # TRUE to maximize the function
trace <- ctrl$trace # 0 for no output, >0 for output (bigger => more output)
if (trace > 2) cat("trace = ", trace, "\n")
eps <- ctrl$eps
fargs <- list(...) # the ... arguments that are extra function / gradient data
grNULL <- is.null(gr)
dowarn <- ctrl$dowarn #
#############################################
if (maximize) {
warning("Rcgmin no longer supports maximize 111121 -- see documentation")
msg<-"Rcgmin no longer supports maximize 111121"
ans <- list(par, NA, c(0, 0), 9999, msg, bdmsk)
return(ans)
}
#############################################
# gr MUST be provided
if (is.null(gr)) { # if gr function is not provided STOP (Rvmmin has definition)
stop("A gradient calculation (analytic or numerical) MUST be provided for Rcgminb")
}
if ( is.character(gr) ) {
# Convert string to function call, assuming it is a numerical gradient function
mygr<-function(par=par, userfn=fn, ...){
do.call(gr, list(par, userfn, ...))
}
} else { mygr<-gr }
############# end test gr ####################
## Set working parameters (See CNM Alg 22)
if (trace > 0) {
cat("Rcgmin -- J C Nash 2009 - bounds constraint version of new CG\n")
cat("an R implementation of Alg 22 with Yuan/Dai modification\n")
}
bvec <- par # copy the parameter vector
n <- length(bvec) # number of elements in par vector
maxfeval <- round(sqrt(n + 1) * maxit) # change 091219
ig <- 0 # count gradient evaluations
ifn <- 1 # count function evaluations (we always make 1 try below)
stepredn <- 0.15 # Step reduction in line search
acctol <- 1e-04 # acceptable point tolerance
offset <- 100 # relative equality test
ceps <- .Machine$double.eps * offset
accpoint <- as.logical(FALSE) # so far do not have an acceptable point
cyclimit <- min(2.5 * n, 10 + sqrt(n)) #!! upper bound on when we restart CG cycle
fargs <- list(...) # function arguments
if (trace > 2) {
cat("Extra function arguments:")
print(fargs)
}
# set default masks if not defined
if (is.null(bdmsk)) {
bdmsk <- rep(1, n)
}
if (trace > 2) {
cat("bdmsk:")
print(bdmsk)
}
# Routine should NOT be called directly without bounds.
# Still do checks to get nolower, noupper, bounds
if (is.null(lower) || !any(is.finite(lower)))
nolower = TRUE
else nolower = FALSE
if (is.null(upper) || !any(is.finite(upper)))
noupper = TRUE
else noupper = FALSE
if (nolower && noupper && all(bdmsk == 1))
bounds = FALSE
else bounds = TRUE
if (trace > 2)
cat("Bounds: nolower = ", nolower, " noupper = ", noupper,
" bounds = ", bounds, "\n")
if (nolower)
lower <- rep(-Inf, n)
if (noupper)
upper <- rep(Inf, n)
######## check bounds and masks #############
## NOTE: do this inline to avoid call to external routine
if (bounds) {
# Make sure to expand lower and upper
if (!nolower & (length(lower) < n))
{
## tmp<-readline('Check length lower ')
if (length(lower) == 1) {
lower <- rep(lower, n)
}
else {
stop("1<length(lower)<n")
}
} # else lower OK
if (!noupper & (length(upper) < n))
{
if (length(upper) == 1) {
upper <- rep(upper, n)
}
else {
stop("1<length(upper)<n")
}
} # else upper OK
# At this point, we have full bounds in play
# This implementation as a loop, but try later to vectorize
for (i in 1:n) {
# cat('i = ',i,'\n')
if (bdmsk[i] == 0) {
# NOTE: we do not change masked parameters, even if out of bounds
if (!nolower) {
if (bvec[i] < lower[i]) {
wmsg <- paste(bvec[i], " = MASKED x[", i,
"] < lower bound = ", lower[i], sep = "")
if (dowarn)
warning(wmsg)
}
}
if (!noupper) {
if (bvec[i] > upper[i]) {
wmsg <- paste(bvec[i], " = MASKED x[", i,
"] > upper bound = ", upper[i], sep = "")
if (dowarn)
warning(wmsg)
}
}
}
else {
# not masked, so must be free or active constraint
if (!nolower) {
if (bvec[i] <= lower[i]) {
# changed 090814 to ensure bdmsk is set
wmsg <- paste("x[", i, "], set ", bvec[i],
" to lower bound = ", lower[i], sep = "")
if (dowarn && (bvec[i] != lower[i]))
warning(wmsg)
bvec[i] <- lower[i]
bdmsk[i] <- -3 # active lower bound
}
}
if (!noupper) {
if (bvec[i] >= upper[i]) {
# changed 090814 to ensure bdmsk is set
wmsg <- paste("x[", i, "], set ", bvec[i],
" to upper bound = ", upper[i], sep = "")
if (dowarn && (bvec[i] != upper[i]))
warning(wmsg)
bvec[i] <- upper[i]
bdmsk[i] <- -1 # active upper bound
}
}
} # end not masked
} # end loop for bound/mask check
} else stop("Do not call Rcgminb without bounds")
############## end bounds check #############
# Initial function value -- may NOT be at initial point
# specified by user.
if (trace > 2) {
cat("Try function at initial point:")
print(bvec)
}
f <- try(fn(bvec, ...), silent = TRUE) # Compute the function at initial point.
if (trace > 0) {
cat("Initial function value=", f, "\n")
}
if (inherits(f, "try-error") ) {
msg <- "Initial point is infeasible."
if (trace > 0)
cat(msg, "\n")
ans <- list(par, NA, c(ifn, 0), 2, msg, bdmsk)
names(ans) <- c("par", "value", "counts", "convergence",
"message", "bdmsk")
return(ans)
}
fmin <- f
if (trace > 0)
cat("Initial fn=", f, "\n")
if (trace > 2)
print(bvec)
# Start the minimization process
keepgoing <- TRUE
msg <- "not finished" # in case we exit somehow
oldstep <- 0.8 #!! 2/3 #!!?? WHY?
####################################################################
fdiff <- NA # initially no decrease
cycle <- 0 # !! cycle loop counter
while (keepgoing) {
# main loop -- must remember to break out of it!!
t <- as.vector(rep(0, n)) # zero step vector
c <- t # zero 'last' gradient
while (keepgoing && (cycle < cyclimit)) {
## cycle loop
cycle <- cycle + 1
if (trace > 0)
cat(ifn, " ", ig, " ", cycle, " ", fmin, " last decrease=",
fdiff, "\n")
if (trace > 2) {
print(bvec)
cat("\n")
}
if (ifn > maxfeval) {
msg <- paste("Too many function evaluations (> ",
maxfeval, ") ", sep = "")
if (trace > 0)
cat(msg, "\n")
ans <- list(par, fmin, c(ifn, ig), 1, msg, bdmsk) # 1 indicates not converged in function limit
names(ans) <- c("par", "value", "counts", "convergence",
"message", "bdmsk")
return(ans)
}
par <- bvec # save best parameters
ig <- ig + 1
if (ig > maxit) {
msg <- paste("Too many gradient evaluations (> ",
maxit, ") ", sep = "")
if (trace > 0)
cat(msg, "\n")
ans <- list(par, fmin, c(ifn, ig), 1, msg, bdmsk) # 1 indicates not converged in function or gradient limit
names(ans) <- c("par", "value", "counts", "convergence",
"message", "bdmsk")
return(ans)
}
g <- mygr(bvec, ...)
if (bounds)
{
## Bounds and masks adjustment of gradient ##
## first try with looping -- later try to vectorize
if (trace > 2) {
cat("bdmsk:")
print(bdmsk)
}
for (i in 1:n) {
if ((bdmsk[i] == 0)) {
# masked, so gradient component is zero
g[i] <- 0
}
else {
if (bdmsk[i] == 1) {
if (trace > 1)
cat("Parameter ", i, " is free\n")
}
else {
if ((bdmsk[i] + 2) * g[i] < 0) {
# test for -ve gradient at upper bound, +ve at lower bound
g[i] <- 0 # in which case active mask or constraint and zero gradient component
}
else {
bdmsk[i] <- 1 # freeing parameter i
if (trace > 1)
cat("freeing parameter ", i, "\n")
}
}
}
} # end masking loop on i
if (trace > 2) {
cat("bdmsk adj:\n")
print(bdmsk)
cat("proj-g:\n")
print(g)
}
} # end if bounds
## end bounds and masks adjustment of gradient
g1 <- sum(g * (g - c)) # gradient * grad-difference
g2 <- sum(t * (g - c)) # oldsearch * grad-difference
gradsqr <- sum(g * g)
if (trace > 1) {
cat("Gradsqr = ", gradsqr, " g1, g2 ", g1, " ",
g2, " fmin=", fmin, "\n")
}
c <- g # save last gradient
g3 <- 1 # !! Default to 1 to ensure it is defined -- t==0 on first cycle
if (gradsqr > tol * (abs(fmin) + offset)) {
if (g2 > 0) {
betaDY <- gradsqr/g2
betaHS <- g1/g2
g3 <- max(0, min(betaHS, betaDY)) # g3 is our new 'beta' !! Dai/Yuan 2001, (4.2)
}
}
else {
msg <- paste("Very small gradient -- gradsqr =",
gradsqr, sep = " ")
if (trace > 0)
cat(msg, "\n")
keepgoing <- FALSE # done loops -- should we break ??
break # to leave inner loop
}
if (trace > 2)
cat("Betak = g3 = ", g3, "\n")
if (g3 == 0 || cycle >= cyclimit) {
# we are resetting to gradient in this case
if (trace > 0) {
if (cycle < cyclimit)
cat("Yuan/Dai cycle reset\n")
else cat("Cycle limit reached -- reset\n")
}
fdiff <- NA
cycle <- 0
break #!!
}
else {
# drop through if not Yuan/Dai cycle reset
t <- t * g3 - g # t starts at zero, later is step vector
gradproj <- sum(t * g) # gradient projection
if (trace > 1)
cat("Gradproj =", gradproj, "\n")
if (bounds)
{
## Adjust search direction for masks
if (trace > 2) {
cat("t:\n")
print(t)
}
t[which(bdmsk <= 0)] <- 0 # apply mask constraint
if (trace > 2) {
cat("adj-t:\n")
print(t)
}
## end adjust search direction for masks
} # end if bounds
# ?? Why do we not check gradproj size??
########################################################
#### Line search ####
OKpoint <- FALSE
if (trace > 2)
cat("Start linesearch with oldstep=", oldstep,
"\n")
steplength <- oldstep * 1.5 #!! try a bit bigger
f <- fmin
changed <- TRUE # Need to set so loop will start
while ((f >= fmin) && changed) {
if (bounds)
{
# Box constraint -- adjust step length
for (i in 1:n) {
# loop on parameters -- vectorize??
if ((bdmsk[i] == 1) && (t[i] != 0))
{
# only concerned with free parameters and non-zero search
# dimension
if (t[i] < 0) {
# going down. Look at lower bound
trystep <- (lower[i] - par[i])/t[i] # t[i] < 0 so this is positive
}
else {
# going up, check upper bound
trystep <- (upper[i] - par[i])/t[i] # t[i] > 0 so this is positive
}
if (trace > 2)
cat("steplength, trystep:", steplength,
trystep, "\n")
steplength <- min(steplength, trystep) # reduce as necessary
} # end steplength reduction
} # end loop on i to reduce step length
if (trace > 1)
cat("reset steplegth=", steplength, "\n")
# end box constraint adjustment of step length
} # end if bounds
bvec <- par + steplength * t
changed <- (!identical((bvec + offset), (par + offset)))
if (changed) {
# compute newstep, if possible
f <- fn(bvec, ...) # Because we need the value for linesearch, don't use try()
# instead preferring to fail out, which will hopefully be
# unlikely.
ifn <- ifn + 1
if (is.na(f) || (!is.finite(f))) {
warning("Rcgmin - undefined function")
f <- .Machine$double.xmax
}
if (f < fmin) {
f1 <- f # Hold onto value
}
else {
savestep<-steplength
steplength <- steplength * stepredn
if (steplength >=savestep) changed<-FALSE
if (trace > 0)
cat("*")
}
}
} # end while
changed1 <- changed # Change in parameters occured in step reduction
if (changed1)
{
## ?? should we check for reduction? or is this done in if
# (newstep >0) ?
newstep <- 2 * (f - fmin - gradproj * steplength) # JN 081219 change
if (newstep > 0) {
newstep = -(gradproj * steplength * steplength/newstep)
}
if (bounds)
{
# Box constraint -- adjust step length
for (i in 1:n) {
# loop on parameters -- vectorize??
if ((bdmsk[i] == 1) && (t[i] != 0))
{
# only concerned with free parameters and non-zero search dimension
if (t[i] < 0) {
# going down. Look at lower bound
trystep <- (lower[i] - par[i])/t[i] # t[i] < 0 so this is positive
}
else {
# going up, check upper bound
trystep <- (upper[i] - par[i])/t[i] # t[i] > 0 so this is positive
}
if (trace > 2)
cat("newstep, trystep:", newstep,
trystep, "\n")
newstep <- min(newstep, trystep) # reduce as necessary
} # end newstep reduction
} # end loop on i to reduce step length
if (trace > 2)
cat("reset newstep=", newstep, "\n")
# end box constraint adjustment of step length
} # end if bounds
bvec <- par + newstep * t
changed <- (!identical((bvec + offset),
(par + offset)))
if (changed) {
f <- fn(bvec, ...)
ifn <- ifn + 1
}
if (trace > 2)
cat("fmin, f1, f: ", fmin, f1, f, "\n")
if (isTRUE(f < min(fmin, f1))) {
# success
OKpoint <- TRUE
accpoint <- (f <= fmin + gradproj * newstep *
acctol)
fdiff <- (fmin - f) # check decrease
fmin <- f
oldstep <- newstep # !! save it
}
else {
if (f1 < fmin) {
bvec <- par + steplength * t # reset best point
accpoint <- (f1 <= fmin + gradproj *
steplength * acctol)
OKpoint <- TRUE # Because f1 < fmin
fdiff <- (fmin - f1) # check decrease
fmin <- f1
oldstep <- steplength #!! save it
}
else {
# no reduction
fdiff <- NA
accpoint <- FALSE
} # f1<?fmin
} # f < min(f1, fmin)
if (trace > 1)
cat("accpoint = ", accpoint, " OKpoint = ",
OKpoint, "\n")
if (!accpoint) {
msg <- "No acceptable point -- exit loop"
if (trace > 0)
cat("\n", msg, "\n")
keepgoing <- FALSE
break #!!
}
} # changed1
else {
# not changed on step redn
if (cycle == 1) {
msg <- " Converged -- no progress on new CG cycle"
if (trace > 0)
cat("\n", msg, "\n")
keekpgoing <- FALSE
break #!!
}
} # end else
} # end of test on Yuan/Dai condition
#### End line search ####
if (bounds)
{
## Reactivate constraints?? -- should check for infinite
# bounds
for (i in 1:n) {
if (bdmsk[i] == 1)
{
# only interested in free parameters
if (is.finite(lower[i])) {
# JN091020 -- need to use abs in case bounds negative
if ((bvec[i] - lower[i]) < ceps * (abs(lower[i]) +
1))
{
# are we near or lower than lower bd
if (trace > 2)
cat("(re)activate lower bd ",
i, " at ", lower[i], "\n")
bdmsk[i] <- -3
} # end lower bd reactivate
}
if (is.finite(upper[i])) {
# JN091020 -- need to use abs in case bounds negative
if ((upper[i] - bvec[i]) < ceps * (abs(upper[i]) +
1))
{
# are we near or above upper bd
if (trace > 2)
cat("(re)activate upper bd ",
i, " at ", upper[i], "\n")
bdmsk[i] <- -1
} # end lower bd reactivate
}
} # end test on free params
} # end reactivate constraints
} # end if bounds
} # end of inner loop (cycle)
if (oldstep < acctol) {
oldstep <- acctol
}
# steplength
if (oldstep > 1) {
oldstep <- 1
}
if (trace > 1)
cat("End inner loop, cycle =", cycle, "\n")
} # end of outer loop
msg <- "Rcgmin seems to have converged"
if (trace > 0)
cat(msg, "\n")
# par: The best set of parameters found.
# value: The value of 'fn' corresponding to 'par'.
# counts: number of calls to 'fn' and 'gr' (2 elements)
# convergence: An integer code. '0' indicates successful
# convergence.
# message: A character string or 'NULL'.
# if (maximize)
# fmin <- -fmin
ans <- list(par, fmin, c(ifn, ig), 0, msg, bdmsk)
names(ans) <- c("par", "value", "counts", "convergence",
"message", "bdmsk")
return(ans)
} ## end of Rcgmin
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