Piecewise regression with R: plotting the segments

I have 54 points. They represent offer and demand for products. I would like to show there is a break point in the offer.

First, I sort the x-axis (offer) and remove the values that appears twice. I have 47 values, but I remove the first and last ones (doesn't make sense to consider them as break points). Break is of length 45:

``````Break<-(sort(unique(offer))[2:46])
``````

Then, for each of these potential break points, I estimate a model and I keep in "d" the residual standard error (sixth element in model summary object).

``````d<-numeric(45)
for (i in 1:45) {
model<-lm(demand~(offer<Break[i])*offer + (offer>=Break[i])*offer)
d[i]<-summary(model)[[6]] }
``````

Plotting d, I notice that my smaller residual standard error is 34, that corresponds to "Break[34]": 22.4. So I write my model with my final break point:

``````model<-lm(demand~(offer<22.4)*offer + (offer>=22.4)*offer)
``````

Finally, I'm happy with my new model. It's significantly better than the simple linear one. And I want to draw it:

``````plot(demand~offer)
i <- order(offer)
lines(offer[i], predict(model,list(offer))[i])
``````

But I have a warning message:

``````Warning message:
In predict.lm(model, list(offer)) :
prediction from a rank-deficient fit may be misleading
``````

And more important, the lines are really strange on my plot.

Here are my data:

``````demand  offer
1155    39.3
362 23.5
357 22.4
111 6.1
703 35.9
494 35.5
410 23.2
63  9.1
616 27.5
468 28.6
973 41.3
235 16.9
180 18.2
69  9
305 28.6
106 12.7
155 11.8
422 27.9
44  21.6
1008    45.9
225 11.4
321 16.6
1001    40.7
531 22.4
143 17.4
251 14.3
216 14.6
57  6.6
146 10.6
226 14.3
169 3.4
32  5.1
75  4.1
102 4.1
4   1.7
68  7.5
102 7.8
462 22.6
295 8.6
196 7.7
50  7.8
739 34.7
287 15.6
226 18.5
706 35
127 16.5
85  11.3
234 7.7
153 14.8
4   2
373 12.4
54  9.2
81  11.8
18  3.9
``````
-
54 points does not seem a very large amount of points to detect such a transistion. You could opt to also post this in stats.stackexchange.com with the specfic question if this is enough points to detect the break in the data. Just my 2 ct. –  Paul Hiemstra Jan 6 '12 at 20:04
I think this is pretty statistically dubious. Better to estimate the breakpoint in the model itself (although that makes it non linear). You can't trust the p-vals or standard errors from the current informal estimation process. –  hadley Jan 7 '12 at 20:35
54 points isn't a large amount, I agree, but both my linear and my piecewise linear regressions are significant. And moreover, the residual standard error of the piecewise linear model is 103.9 compared to 121.3 for the linear model with two less degrees of freedom. The piecewise model is significantly better. –  Antonin Jan 9 '12 at 10:52

Here is an easier approach using `ggplot2`.

``````require(ggplot2)
qplot(offer, demand, group = offer > 22.4, geom = c('point', 'smooth'),
method = 'lm', se = F, data = dat)
``````

EDIT. I would also recommend taking a look at this package `segmented` which supports automatic detection and estimation of segmented regression models.

UPDATE:

Here is an example that makes use of the R package segmented to automatically detect the breaks

``````library(segmented)
set.seed(12)
xx <- 1:100
zz <- runif(100)
yy <- 2 + 1.5*pmax(xx - 35, 0) - 1.5*pmax(xx - 70, 0) + 15*pmax(zz - .5, 0) +
rnorm(100,0,2)
dati <- data.frame(x = xx, y = yy, z = zz)
out.lm <- lm(y ~ x, data = dati)
o <- segmented(out.lm, seg.Z = ~x, psi = list(x = c(30,60)),
control = seg.control(display = FALSE)
)
dat2 = data.frame(x = xx, y = broken.line(o)\$fit)

library(ggplot2)
ggplot(dati, aes(x = x, y = y)) +
geom_point() +
geom_line(data = dat2, color = 'blue')
``````

-
Thank you for the idea about using the "segmented" package. "Muggeo, V.M.R. (2003) Estimating regression models with unknown break-points. Statistics inMedicine 22, 3055–3071" is an interesting paper to understand what's going on in the package. –  Antonin Jan 10 '12 at 12:19
In particular, it has an advantage to the code I used: the two segments are connected! In "The R Book", the author is not mentioning his segments are not connected and is even showing a plot with connected segments... –  Antonin Jan 10 '12 at 14:39
Where is an example of using ggplot() with segmented()? I cannot seem to find one anywhere. –  Adam Erickson Sep 18 at 22:20
I have added an example that uses `ggplot` with `segmented`. –  Ramnath Sep 20 at 3:05

Vincent has you on the right track. The only thing "weird" about the lines in your resulting plot is that `lines` draws a line between each successive point, which means that "jump" you see if it simply connecting the two ends of each line.

If you don't want that connector, you have to split the `lines` call into two separate pieces.

Also, I feel like you can simplify your regression a bit. Here's what I did:

``````#After reading your data into dat
Break <- 22.4
dat\$grp <- dat\$offer < Break

#Note the addition of the grp variable makes this a bit easier to read
m <- lm(demand~offer*grp,data = dat)
dat\$pred <- predict(m)

plot(dat\$offer,dat\$demand)
dat <- dat[order(dat\$offer),]
with(subset(dat,offer < Break),lines(offer,pred))
with(subset(dat,offer >= Break),lines(offer,pred))
``````

which produces this plot:

-

The weird lines are simply due to the order in which the points are plotted. The following should look better:

``````i <- order(offer)
lines(offer[i], predict(model,list(offer))[i])
``````

The warning comes from the fact that the `*` character is interpreted by `lm`.

``````> lm(demand~(offer<22.4)*offer + (offer>=22.4)*offer)
Call:
lm(formula = demand ~ (offer < 22.4) * offer + (offer >= 22.4) * offer)
Coefficients:
(Intercept)         offer < 22.4TRUE                    offer
-309.46                   356.08                    29.86
offer >= 22.4TRUE   offer < 22.4TRUE:offer  offer:offer >= 22.4TRUE
NA                   -20.79                       NA
``````

In addition, `(offer<22.4)*offer` is a discontinuous function: this is where the discontinuity comes from.

The following should be closer to what you want.

``````model <- lm(
demand ~ ifelse(offer<22.4,offer-22.4,0)
+ ifelse(offer>=22.4,offer-22.4,0) )
``````
-
Thanks for answer! I still have the warning message: "Warning message: In predict.lm(model2, list(offer)) : prediction from a rank-deficient fit may be misleading". The result is a bit better: I've only one piecewise segment, but I don't understand why there are 3 segments (i.e., my two segments are not connected naturally...) –  Antonin Jan 6 '12 at 14:21
I edited the question with your answer and the results. –  Antonin Jan 6 '12 at 14:28