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The nls function works normally like the following:

 x <- 1:10
 y <- 2*x + 3                            # perfect fit
 yeps <- y + rnorm(length(y), sd = 0.01) # added noise
 nls(yeps ~ a + b*x, start = list(a = 0.12345, b = 0.54321))#

Because the model I use have a lot of parameters or I don't know beforehand what will be included in the parameter list, I want something like following

tmp <- function(x,p) { p["a"]+p["b"]*x }
p0 <- c(a = 0.12345, b = 0.54321)
nls(yeps ~ tmp(x,p), start = list(p=p0))

Does anyone know how to modify the nls function so that it can accept a parameter vector argument in the formula instead of many seperate parameters?

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up vote 3 down vote accepted

You can give a vector of init coefficients like this :

tmp  <- function(x, coef){
       a <- coef[1]
       b <- coef[2]
       a +b*x
     }

x <- 1:10
yeps <- y + rnorm(length(y), sd = 0.01)  # added noise
nls(yeps ~ a + b*x, start = list(a = 0.12345, b = 0.54321))#                     
nls(yeps ~ tmp(x,coef), start = list(coef = c(0.12345, 0.54321)))

Nonlinear regression model
  model:  yeps ~ tmp(x, coef) 
   data:  parent.frame() 
coef1 coef2 
    3     2 
 residual sum-of-squares: 0.0016

Number of iterations to convergence: 2 
Achieved convergence tolerance: 3.47e-08 

PS:

 example(nls)

Should be a good start to understand how to play with nls.

share|improve this answer
    
Thanks @agstudy, I didn't know the answer is so simple. – Zhenglei Mar 1 '13 at 12:16

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