# one plot for 6 models

I have plotted six models each in a separate plot.

My question is: how can I combine them in one graphical plot using R?

The code I use is:

``````fitemax <- fitMod(dose, resp, data=biom, model="emax",bnds = c(0.00, 1))
plot(fitemax)

fitlinearlog <- fitMod(dose, resp, data=biom, model="linlog",bnds = c(0.00, 1))
plot(fitlinearlog)

fitlinear <- fitMod(dose, resp, data=biom, model="linear",bnds = c(0.00, 1))
plot(fitlinear)

fitquadratic <- fitMod(dose, resp, data=biom, model="quadratic",bnds = c(0.00, 1))
plot(fitquadratic)

fitexponential <- fitMod(dose, resp, data=biom, model="exponential",bnds = c(0.00,1))
plot(fitexponential)

fitlogistic <- fitMod(dose, resp, data=biom, model="logistic",defBnds(MaxEff,
logistic = matrix(c(0.0, 0.2, 0.4, 0.8)*MaxEff, 2)))
plot(fitlogistic)
``````

The data cabe be found in R in the `DoseFinding` Package

• What exactly is the desired output? What would this "one plot" look like? The code you've provided is essentially useless because you didn't provide any data so we could actually run it so we have no idea what those plots look like. Please create a truly reproducible example – MrFlick Sep 5 '14 at 1:12

## 1 Answer

Use par(mfrow=c(2,3)) to make the following plot be arranged in one 2 * 3 grid.

If you want fine control, keep reading here(layout), here(ggplot+gridExtra)

``````png(filename="C:\\Users\\datafireball.com\\Documents\\R\\stackoverflow_7144118.png")
par(mfrow=c(3,2))
plot(rnorm(10), rnorm(10))
plot(rnorm(10), rnorm(10))
plot(rnorm(10), rnorm(10))
plot(rnorm(10), rnorm(10))
plot(rnorm(10), rnorm(10))
plot(rnorm(10), rnorm(10))
dev.off()
``````

You can remove the first and last line so you can print it to the standout output. Update: In your case, looks like par(mfrow) won't work, because I don't think it is actually calling the base plot method, instead, the return object from the `fitMod` method is actually a type called "trellis", which belongs to the lattice package. If you want to know more about `trellis`, read here. However, if you just want to know how to get it work, I got it working with the `grid.arrange` method from `gridExtra`.

``````library(DoseFinding)
library(gridExtra)
data(biom)
# here, the bnds argument has been ignored so the default value from defBnds will be applied.
fitemax <- fitMod(dose, resp, data=biom, model="emax")
p1 <- plot(fitemax)
fitlinearlog <- fitMod(dose, resp, data=biom, model="linlog")
p2 <- plot(fitlinearlog)
fitlinear <- fitMod(dose, resp, data=biom, model="linear")
p3 <- plot(fitlinear)
fitquadratic <- fitMod(dose, resp, data=biom, model="quadratic")
p4 <- plot(fitquadratic)
fitexponential <- fitMod(dose, resp, data=biom, model="exponential")
p5 <- plot(fitexponential)
fitlogistic <- fitMod(dose, resp, data=biom, model="logistic")
p6 <- plot(fitlogistic)
grid.arrange(p1, p2, p3, p4, p5, p6)
# Message: Need bounds in "bnds" for nonlinear models, using default bounds from "defBnds".
`````` Is this the output you want?

• this does not really work with my data , the is stored in r under the dose finding package the data is ( biom) I tried every thing but still displayed individually – SAMA Sep 6 '14 at 9:09
• If this answer doesn't work with your specific dataset, then you should supply a reproducible (!) data example that resembles its most important features. – SimonG Sep 6 '14 at 13:35
• @SAMA See update and let me know if it is what you asked. – B.Mr.W. Sep 6 '14 at 17:38
• Yes this the one . But for the logistic model does not work – SAMA Sep 7 '14 at 1:13
• I used the following command ; fitlogistic <- fitMod(dose, resp, data=biom, model=="logistic",defBnds(MaxEff, logistic = matrix(c(0.0, 0.2, 0.4, 0.8)*MaxEff, 2))) plot(fitlogistic) , but its says this message ; Message: S argument ignored for type == "normal" Error in checkAnalyArgs(dose, resp, data, S, type, addCovars, placAdj, : S needs to be of class matrix > plot(fitlogistic) Error in plot(fitlogistic) : object 'fitlogistic' not found > – SAMA Sep 7 '14 at 1:15