In R I use nls to do a nonlinear leastsquares fit. How then do I plot the model function using the values of the coefficients that the fit provided?
(Yes, this is a very naive question from an R relative newbie.)
Using the first example from
The
and pass Or if you want a "smooth" curve, what you do is to simply repeat this but evaluate the function at more points:



I know what you want (I'm a Scientist). This isn't it, but at least shows how to use 'curve' to plot your fitting function over any range, and the curve will be smooth. Using the same data set as above:
or,
or,
or whatever (without setting up a sequence of evaluation points first). I'm a rudimentary R programmer, so I don't know how to implement (elegantly) something like ReplaceAll ( /. ) in Mathematica that one would use to replace occurrences of the symbolic parameters in the model, with the fitted parameters. This first step works although it looks horrible:
It leaves you with a separate 'model' (as a character string), that you might be able to make use of with the fitted parameters ... cleanly (NOT digging out a, b, c) would simply use nonlinFit ... not sure how though. 


The function "curve" will plot functions for you. 


coef(x) returns the coefficients for regression results x.
For example. 


?nls
and there's an example for you. – joran Mar 29 '12 at 3:48xy
, with componentsx
andy
, and hasdim(xy)
being17 2
. And I've namedfitted
the result of the nls call. How do I plot the model function for the found values of the coefficients, along with the original data points? – murray Mar 29 '12 at 13:22lines(x, predict(nlmod), col=2)
. This works becausepredict
knows how to calculate the predicted yvalues from the output ofnls
. Alternatively, take a little time to sift through all the components of yourfitted
object, find the coefficients, and use them to write your own fitfunction. That will give you some confidence thatnls
did what you want. – Carl Witthoft Mar 29 '12 at 14:03