This function carries out a minimization of the function f
using a Newton-type algorithm. See the references for details.
nlm(f, p, …, hessian = FALSE, typsize = rep(1, length(p)),
fscale = 1, print.level = 0, ndigit = 12, gradtol = 1e-6,
stepmax = max(1000 * sqrt(sum((p/typsize)^2)), 1000),
steptol = 1e-6, iterlim = 100, check.analyticals = TRUE)
the function to be minimized, returning a single numeric
value. This should be a function with first argument a vector of
the length of p
followed by any other arguments specified by
the …
argument.
If the function value has an attribute called gradient
or
both gradient
and hessian
attributes, these will be
used in the calculation of updated parameter values. Otherwise,
numerical derivatives are used. deriv
returns a
function with suitable gradient
attribute and optionally a
hessian
attribute.
starting parameter values for the minimization.
additional arguments to be passed to f
.
if TRUE
, the hessian of f
at the minimum is returned.
an estimate of the size of each parameter at the minimum.
an estimate of the size of f
at the minimum.
this argument determines the level of printing
which is done during the minimization process. The default
value of 0
means that no printing occurs, a value of 1
means that initial and final details are printed and a value
of 2 means that full tracing information is printed.
the number of significant digits in the function f
.
a positive scalar giving the tolerance at which the
scaled gradient is considered close enough to zero to
terminate the algorithm. The scaled gradient is a
measure of the relative change in f
in each direction
p[i]
divided by the relative change in p[i]
.
a positive scalar which gives the maximum allowable
scaled step length. stepmax
is used to prevent steps which
would cause the optimization function to overflow, to prevent the
algorithm from leaving the area of interest in parameter space, or to
detect divergence in the algorithm. stepmax
would be chosen
small enough to prevent the first two of these occurrences, but should
be larger than any anticipated reasonable step.
A positive scalar providing the minimum allowable relative step length.
a positive integer specifying the maximum number of iterations to be performed before the program is terminated.
a logical scalar specifying whether the analytic gradients and Hessians, if they are supplied, should be checked against numerical derivatives at the initial parameter values. This can help detect incorrectly formulated gradients or Hessians.
A list containing the following components:
the value of the estimated minimum of f
.
the point at which the minimum value of
f
is obtained.
the gradient at the estimated minimum of f
.
the hessian at the estimated minimum of f
(if
requested).
an integer indicating why the optimization process terminated.
relative gradient is close to zero, current iterate is probably solution.
successive iterates within tolerance, current iterate is probably solution.
last global step failed to locate a point lower than
estimate
. Either estimate
is an approximate local
minimum of the function or steptol
is too small.
iteration limit exceeded.
maximum step size stepmax
exceeded five consecutive
times. Either the function is unbounded below,
becomes asymptotic to a finite value from above in
some direction or stepmax
is too small.
the number of iterations performed.
Note that arguments after …
must be matched exactly.
If a gradient or hessian is supplied but evaluates to the wrong mode
or length, it will be ignored if check.analyticals = TRUE
(the
default) with a warning. The hessian is not even checked unless the
gradient is present and passes the sanity checks.
The C code for the “perturbed” cholesky, choldc()
has
had a bug in all R versions before 3.4.1.
From the three methods available in the original source, we always use method “1” which is line search.
The functions supplied should always return finite (including not
NA
and not NaN
) values: for the function value itself
non-finite values are replaced by the maximum positive value with a warning.
Dennis, J. E. and Schnabel, R. B. (1983). Numerical Methods for Unconstrained Optimization and Nonlinear Equations. Prentice-Hall, Englewood Cliffs, NJ.
Schnabel, R. B., Koontz, J. E. and Weiss, B. E. (1985). A modular system of algorithms for unconstrained minimization. ACM Transactions on Mathematical Software, 11, 419--440. 10.1145/6187.6192.
constrOptim
for constrained optimization,
optimize
for one-dimensional
minimization and uniroot
for root finding.
deriv
to calculate analytical derivatives.
For nonlinear regression, nls
may be better.
# NOT RUN {
f <- function(x) sum((x-1:length(x))^2)
nlm(f, c(10,10))
nlm(f, c(10,10), print.level = 2)
utils::str(nlm(f, c(5), hessian = TRUE))
f <- function(x, a) sum((x-a)^2)
nlm(f, c(10,10), a = c(3,5))
f <- function(x, a)
{
res <- sum((x-a)^2)
attr(res, "gradient") <- 2*(x-a)
res
}
nlm(f, c(10,10), a = c(3,5))
## more examples, including the use of derivatives.
# }
# NOT RUN {
demo(nlm)
# }
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