# Nonlinear regression in R / S

I have a R / S / Nonlinear regression related issue and i am not a R programmer, so i kinda need help.

I have two arrays - tt and td.

I need to find the parameters a,b and c so the sum of least squares is minimal for a non linear function:

``````td / tt - a * exp( b * tt ) + c
``````

I have no idea how to do this. I tried `nls()` function, `nls2()` nad had no luck...

Thanks in advance.

EDIT:

My data:

``````td <-as.array(0.2, 0.4, 0.8, 1.5, 3);

tt <-as.array(0.016, 0.036, 0.0777, 0.171, 0.294);
``````

With the method from the answer below, i get ok values for random data, but the data i am using returns the Missing value or an infinity produced when evaluating the model message.

Sorry for not providing data sooner.

-
Questions are easier to answer if you give us sample data, and sample code that you have tried. –  Richie Cotton Jul 27 '11 at 13:18
Please edit your question to be reproducible. Thanks, and welcome to SO. stackoverflow.com/questions/5963269/… –  Ari B. Friedman Jul 27 '11 at 13:22
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## 1 Answer

Your data:

``````n <- 100
td <- runif(n)
tt <- runif(n)
data <- data.frame(td = td, tt = tt)
``````

A made up result of function

``````a <- 0.5
b <- 2
c <- 5
y <- jitter(td / tt - a * exp( b * tt ) + c)
``````

(In practice, you won't know what a, b and c are until afterwards. Here we use them to compare with the answer.)

The fitting:

``````nls(
y ~ td / tt - a * exp( b * tt ) + c,
data = data,
start = list(a = 1, b = 1, c = 1)
)
``````

The answer:

``````Nonlinear regression model
model:  y ~ td/tt - a * exp(b * tt) + c
data:  data
a      b      c
0.4996 2.0008 4.9994
residual sum-of-squares: 0.0001375

Number of iterations to convergence: 7
Achieved convergence tolerance: 1.604e-06
``````
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Thank you very, very much! –  Nemanja Jul 27 '11 at 13:37
I am sorry, but once i replace the first three rows with random data: n <- 100 td <- runif(n) tt <- runif(n) with my data: td <-as.array(0.2, 0.4, 0.8, 1.5, 3); tt <-as.array(0.016, 0.036, 0.0777, 0.171, 0.294); I get a message Error in numericDeriv(form[[3L]], names(ind), env) : Missing value or an infinity produced when evaluating the model Where am i going wrong? –  Nemanja Jul 27 '11 at 13:56
Fitting a 3-parameter nonlinear model to 5 data points is always going to be kind of a pain in the butt. You need good starting values. –  Ben Bolker Jul 27 '11 at 14:44
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