# regr1.plot

##### plot x and y, with optional straight line fit and display of squared residuals

Plot `x`

and `y`

,
with optional fitted line and display of squared residuals.
By default the least squares line is calculated and used.
Any other straight line
can be specified by placing its coefficients in `coef.model`

.
Any other fitted model can be calculated by specifying the `model`

argument.
Any other function of one variable can be specified in the
`alt.function`

argument. At most one of the arguments
`model`

, `coef.model`

, `alt.function`

can be specified.

- Keywords
- models, regression

##### Usage

```
regr1.plot(x, y,
model=lm(y~x),
coef.model,
alt.function,
main="put a useful title here",
xlab=deparse(substitute(x)),
ylab=deparse(substitute(y)),
jitter.x=FALSE,
resid.plot=FALSE,
points.yhat=TRUE,
pch=16,
..., length.x.set=51,
x.name,
pch.yhat=16,
cex.yhat=par()$cex*.7,
err=-1)
```

##### Arguments

- x
- x variable
- y
- y variable
- model
- Defaults to the simple linear model
`lm(y ~ x)`

. Any model object with one`x`

variable, such as the quadratic`lm(y ~ x + I(x^2))`

can be used. - coef.model
- Defaults to the coefficients of the
`model`

argument. Other intercept and slope coefficients for a straight line (for example,`c(3,5)`

) can be entered to illustrate the sense in which they are not "least squares". - alt.function
- Any function of a single argument can be placed
here. For example,
`alt.function=function(x) {3 + 2*x + 3*x^2}`

. All coefficients must be specified. - main, xlab, ylab
- arguments to
`plot`

. - jitter.x
- logical. If
`TRUE`

, the x is jittered before plotting. Jittering is often helpful when there are multiple y-values at the same level of x. - resid.plot
- If
`FALSE`

, then do not plot the residuals. If`"square"`

, then call`resid.squares`

to plot the squared residuals. If`TRUE`

(or anything else), then call`resid.squares`

to plot - points.yhat
- logical. If
`TRUE`

, the predicted values are plotted. - ...
- other arguments.
- length.x.set
- number of points used to plot the predicted values.
- x.name
- If the
`model`

argument used a different name for the independent variable, you might need to specify it. - pch
- Plotting character for the observed points.
- pch.yhat
- Plotting character for the fitted points.
- cex.yhat
`cex`

for the fitted points.- err
- Thedefault
`-1`

suppresses warnings about out of bound points.

##### Note

This plot is designed as a pedagogical example for introductory courses.
When `resid.plot=="square"`

, then we actually see the set of squares
for which the sum of their areas is minimized by the method of "least squares".

##### References

Heiberger, Richard~M. and Holland, Burt (2004b).
*Statistical Analysis and Data Display: An Intermediate Course
with Examples in S-Plus, R, and SAS*.
Springer Texts in Statistics. Springer.
ISBN 0-387-40270-5.
Smith, W. and Gonick, L. (1993).
*The Cartoon Guide to Statistics*.
HarperCollins.

##### See Also

##### Examples

```
data(hardness)
## linear and quadratic regressions
hardness.lin.lm <- lm(hardness ~ density, data=hardness)
hardness.quad.lm <- lm(hardness ~ density + I(density^2), data=hardness)
anova(hardness.quad.lm) ## quadratic term has very low p-value
par(mfrow=c(1,2))
regr1.plot(hardness$density, hardness$hardness,
resid.plot="square",
main="squared residuals for linear fit",
xlab="density", ylab="hardness",
points.yhat=FALSE,
xlim=c(20,95), ylim=c(0,3400))
regr1.plot(hardness$density, hardness$hardness,
model=hardness.quad.lm,
resid.plot="square",
main="squared residuals for quadratic fit",
xlab="density", ylab="hardness",
points.yhat=FALSE,
xlim=c(20,95), ylim=c(0,3400))
par(mfrow=c(1,1))
```

*Documentation reproduced from package HH, version 2.3-42, License: GPL (>= 2)*