# Create function to automatically create plots from summary(fit <- lm( y ~ x1 + x2 +… xn))

I am running the same regression with small alterations of x variables several times. My aim is after having determined the fit and significance of each variable for this linear regression model to view all all major plots. Instead of having to create each plot one by one, I want a function to loop through my variables (x1...xn) from the following list.

fit <-lm( y ~ x1 + x2 +... xn))

The plots I want to create for all x are 1) 'x versus y' for all x in the function above 2) 'x versus predicted y 3) x versus residuals 4) x versus time, where time is not a variable used in the regression but provided in the dataframe the data comes from.

I know how to access the coefficients from fit, however I am not able to use the coefficient names from the summary and reuse them in a function for creating the plots, as the names are characters.

I hope my question has been clearly described and hasn't been asked already.

Thanks!

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Create some mock data

``````dat <- data.frame(x1=rnorm(100), x2=rnorm(100,4,5), x3=rnorm(100,8,27),
x4=rnorm(100,-6,0.1), t=(1:100)+runif(100,-2,2))
dat <- transform(dat, y=x1+4*x2+3.6*x3+4.7*x4+rnorm(100,3,50))
``````

Make the fit

``````fit <- lm(y~x1+x2+x3+x4, data=dat)
``````

Compute the predicted values

``````dat\$yhat <- predict(fit)
``````

Compute the residuals

``````dat\$resid <- residuals(fit)
``````

Get a vector of the variable names

``````vars <- names(coef(fit))[-1]
``````

A plot can be made using this character representation of the name if you use it to build a string version of a formula and translate that. The four plots are below, and the are wrapped in a loop over all the vars. Additionally, this is surrounded by setting `ask` to `TRUE` so that you get a chance to see each plot. Alternatively you arrange multiple plots on the screen, or write them all to files to review later.

``````opar <- par(ask=TRUE)
for (v in vars) {
plot(as.formula(paste("y~",v)), data=dat)
plot(as.formula(paste("yhat~",v)), data=dat)
plot(as.formula(paste("resid~",v)), data=dat)
plot(as.formula(paste("t~",v)), data=dat)
}
par(opar)
``````
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Thank you Brian. The problem I didn't know how to address, was the solved by 'as.formula(paste("y~",v)), data=dat)'. I basically attempted to pass on to plot the characters from your variable vars directly and the data behind the variable is not passed on. Thank you for your help it was spot on. –  fette_hehne Oct 13 '11 at 10:03

The coefficients are stored in the fit objects as you say, but you can access them generically in a function by referring to them this way:

``````x <- 1:10
y <- x*3 + rnorm(1)
plot(x,y)

fit <- lm(y~x)
fit\$coefficient[1] # intercept
fit\$coefficient[2] # slope
str(fit) # a lot of info, but you can see how the fit is stored
``````

My guess is when you say you know how to access the coefficients you are getting them from summary(fit) which is a bit harder to access than taking them directly from the fit. By using fit\$coeff[1] etc you don't have to have the name of the variable in your function.

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Thank you Bryan for your answer. The code from Brian Diggs address the problem of how to pass on the variable to the plot. Thanks for pointing out str(fit). It was so much I had to swollow first, but I will start looking at it as well. 'plot(as.formula(paste("y~",v)), data=dat)' –  fette_hehne Oct 13 '11 at 10:07

Three options to directly answer what I think was the question: How to access the coefficients using character arguments:

``````x <- 1:10
y <- x*3 + rnorm(1)
fit <- lm(y~x)
# 1
fit\$coefficient["x"]
# 2
coefname <- "x"
fit\$coefficient[coefname]
#3
coef(fit)[coefname]
``````

If the question was how to plot the various functions then you should supply a sufficiently complex construction (in R) to allow demonstration of methods with a well-specified set of objects.

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