# Why do column names get concatenated into the row output of a linear model summary?

I've never noticed this behavior before, but I'm surprised at the output naming conventions for linear model summaries. My question, essentially, is why row names in a linear model summary always seem to carry the name of the column they came from.

## An example

Suppose you had some data for 300 movie audience members from three different cities:

• Chicago
• Milwaukee
• Dayton

And suppose all of them were subjected to the stinking pile of confusing, contaminated waste that was Spider-Man 3. After enduring the entirety of that cinematic abomination, they were asked to rate the movie on a 100-point scale.

Because all of the audience members were reasonable human beings, the ratings were all below zero. (Naturally. Anyone who's seen the movie would agree.)

Here's what that might look like in R:

``````> score <- rnorm(n = 300, mean = -50, sd = 10)
> city  <- rep(c("Chicago", "Milwaukee", "Dayton"), times = 100)
> spider.man.3.sucked <- data.frame(score, city)
score      city
1 -64.57515   Chicago
2 -50.51050 Milwaukee
3 -56.51409    Dayton
4 -45.55133   Chicago
5 -47.88686 Milwaukee
6 -51.22812    Dayton
``````

Great. So let's run a quick linear model, assign it to `lm1`, and get its summary output:

``````> lm1 <- lm(score ~ city, data = spider.man.3.sucked)
> summary(lm1)

Call:
lm(formula = score ~ city, data = spider.man.3.sucked)

Residuals:
Min       1Q   Median       3Q      Max
-29.8515  -6.1090  -0.4745   6.0340  26.2616

Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept)   -51.3621     0.9630 -53.337   <2e-16 ***
cityDayton      1.1892     1.3619   0.873    0.383
cityMilwaukee   0.8288     1.3619   0.609    0.543
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Residual standard error: 9.63 on 297 degrees of freedom
Multiple R-squared: 0.002693,   Adjusted R-squared: -0.004023
F-statistic: 0.4009 on 2 and 297 DF,  p-value: 0.6701
``````

## What's bugging me

The part I want to highlight is this:

``````cityDayton      1.1892     1.3619   0.873    0.383
cityMilwaukee   0.8288     1.3619   0.609    0.543
``````

It looks like R sensibly concatenated the column name (`city`, if you remember from above) with the distinct value (in this case either `Dayton` or `Milwaukee`). If I don't want R to output in that format, is there any way to override it? For example, in my case all I'd need is simply:

``````Dayton      1.1892     1.3619   0.873    0.383
Milwaukee   0.8288     1.3619   0.609    0.543
``````

## Two questions in one

So,

1. What's controlling the format of the output for linear model summary rows, and
2. Can/should I change it?
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You might instead find it easier to generate model predictions –  hadley Aug 13 '11 at 23:33

The extractor function for that component of a summary object is `coef`. Does this provide the means to control your output acceptably:

``````summ <- summary(lm1)
csumm <- coef(summ)
rownames(csumm) <- sub("^city", "", rownames(csumm))
print(csumm[-1,], digits=4)
#           Estimate Std. Error t value Pr(>|t|)
# Dayton      0.8133      1.485  0.5478   0.5842
# Milwaukee   0.3891      1.485  0.2621   0.7934
``````

(No random seed was set so cannot match your values.)

-
Sorry! I almost always set a random seed. Forgot this time :-( –  briandk Aug 14 '11 at 2:01
Hey. That's alright; I just noticed I forgot to put in the extractor funcitn invocation. (Fixed) –  BondedDust Aug 14 '11 at 4:54
`coef` is definitely helpful, and I'd forgotten about it. And yes, that totally works as a solution. What do people typically do if they're trying to generate a polished report? Would this summary get converted to a fancy TeX/Sweave table anyway, thus rendering the naming point moot? –  briandk Aug 14 '11 at 5:02
There are a variety of pretty printing mechanisms. They don't happen automatically, though. Hmisc has `latex` and other formatted functions. Look at `xtable::xtable` for html or latex output. –  BondedDust Aug 14 '11 at 6:08

For 1) it appears to happen inside `model.matrix.default()` and inside internal R compiled code for that matter.

It might be difficult to change this easily - the obvious way would be to write your own `model.matrix.default()` that calls `model.matrix.default()` and updates the names afterwards. But this isn't tested or tried.

-

Here is a hack

``````# RUN REGRESSION
require(ggplot2)
lm1 = lm(tip ~ total_bill + sex + day, data = tips)

# FUNCTION TO REMOVE FACTOR NAMES FROM MODEL SUMMARY
remove_factors = function(mod){
mydf = mod\$model
# PREPARE VECTOR OF VARIABLES WITH REPETITIONS = UNIQUE FACTOR LEVELS
vars  = names(mod\$model)[-1]
eachlen = sapply(mydf[,vars,drop=F], function(x)
ifelse(is.numeric(x), 1, length(unique(x)) - 1))
vars = rep(vars, eachlen)

# REPLACE COEF NAMES WITH VARIABLE NAME WHEN APPROPRIATE
coefs = names(lm1\$coefficients)[-1]
coefs2 = stringr::str_replace(coefs, vars, "")
names(mod\$coefficients)[-1] = ifelse(coefs2 == "", coefs, coefs2)

return(mod)
}

summary(remove_factors(lm1))
``````

This gives

``````              Estimate Std. Error t value Pr(>|t|)
(Intercept)  0.95588    0.27579    3.47  0.00063 ***
total_bill   0.10489    0.00758   13.84  < 2e-16 ***
Male        -0.03844    0.14215   -0.27  0.78706
Sat         -0.08088    0.26226   -0.31  0.75806
Sun          0.08282    0.26741    0.31  0.75706
Thur        -0.02063    0.26975   -0.08  0.93910
``````

However, it is not always advisable to do this, as you can see from running the same hack for a different regression. It is not clear what the `Yes` variable in the last name stands for. R by default writes it as `smokerYes` to make its meaning clear. So use with caution.

``````lm2 = lm(tip ~ total_bill + sex + day + smoker, data = tips)
summary(remove_factors(lm2))

Estimate Std. Error t value Pr(>|t|)
(Intercept)  1.05182    0.29315    3.59  0.00040 ***
total_bill   0.10569    0.00763   13.86  < 2e-16 ***
Male        -0.03769    0.14217   -0.27  0.79114
Sat         -0.12636    0.26648   -0.47  0.63582
Sun          0.00407    0.27959    0.01  0.98841
Thur        -0.09283    0.27994   -0.33  0.74048
Yes         -0.13935    0.14422   -0.97  0.33489
``````
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