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I want to fit a function in the increase form of exponential decay (or asymptotic curve), such that:

Richness = C*(1-exp(k*Abundance))  # k < 0

I've read on this page about expn() function, but simply can't find it (or a nls package). All I found was a nlstools package, but it has no expn(). I tried with the usual nls and exp function, but I only get increasing exponentials...

I want to fit the graph like below (drawn in Paint), and I don't know where the curve should stabilize (Richness = C). Thanks in advance.

asymptotic curve

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1  
You don't need a fancy function (expn) to fit a relatively simple equation. The answers to this question should get you started with nls. –  Gregor Mar 6 '14 at 17:01

2 Answers 2

up vote 1 down vote accepted

This should get you started. Read the documentation on nls(...) (type ?nls at the command prompt). Also look up ?summary and ?predict.

set.seed(1)     # so the example is reproduceable
df <- data.frame(Abundance=sort(sample(1:70,30)))
df$Richness <- with(df, 20*(1-exp(-0.03*Abundance))+rnorm(30))  

fit <- nls(Richness ~ C*(1-exp(k*Abundance)),data=df, 
           algorithm="port",
           start=c(C=10,k=-1),lower=c(C=0,k=-Inf), upper=c(C=Inf,k=0))
summary(fit)
# Formula: Richness ~ C * (1 - exp(k * Abundance))
#
# Parameters:
#    Estimate Std. Error t value Pr(>|t|)    
# C 20.004173   0.726344   27.54  < 2e-16 ***
# k -0.030183   0.002334  -12.93  2.5e-13 ***
# ---
# Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1
#
# Residual standard error: 0.7942 on 28 degrees of freedom
#
# Algorithm "port", convergence message: relative convergence (4)

df$pred <- predict(fit)
plot(df$Abundance,df$Richness)
lines(df$Abundance,df$pred, col="blue",lty=2)

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Thanks, jlhoward. I've got to something similar after reading the link sent by shujaa.

R <- function(a, b, abT) a*(1 - exp(-b*abT))
form <- Richness ~ R(a,b,Abundance)
fit <- nls(form, data=d, start=list(a=20,b=0.01))
plot(d$Abundance,d$Richness, xlab="Abundance", ylab="Richness")
lines(d$Abundance, predict(fit,list(x=d$Abundance)))

I've found the initial values by trial and error, though. So your solution looks better :)

EDIT: The result:

enter image description here

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