# Scale a series between two points

How do I scale a series such that the first number in the series is 0 and last number is 1. I looked into 'approx', 'scale' but they do not achieve this objective.

``````# generate series from exponential distr
s = sort(rexp(100))

# scale/interpolate 's' such that it starts at 0 and ends at 1?
# approx(s)
# scale(s)
``````

The `scales` package has a function that will do this for you: `rescale`.

``````library("scales")
rescale(s)
``````

By default, this scales the given range of `s` onto 0 to 1, but either or both of those can be adjusted. For example, if you wanted it scaled from 0 to 10,

``````rescale(s, to=c(0,10))
``````

or if you wanted the largest value of `s` scaled to 1, but 0 (instead of the smallest value of `s`) scaled to 0, you could use

``````rescale(s, from=c(0, max(s)))
``````

It's straight-forward to create a small function to do this using basic arithmetic:

``````s = sort(rexp(100))

range01 <- function(x){(x-min(x))/(max(x)-min(x))}

range01(s)

[1] 0.000000000 0.003338782 0.007572326 0.012192201 0.016055006 0.017161145
[7] 0.019949532 0.023839810 0.024421602 0.027197168 0.029889484 0.033039408
[13] 0.033783376 0.038051265 0.045183382 0.049560233 0.056941611 0.057552543
[19] 0.062674982 0.066001242 0.066420884 0.067689067 0.069247825 0.069432174
[25] 0.070136067 0.076340460 0.078709590 0.080393512 0.085591881 0.087540132
[31] 0.090517295 0.091026499 0.091251213 0.099218526 0.103236344 0.105724733
[37] 0.107495340 0.113332392 0.116103438 0.124050331 0.125596034 0.126599323
[43] 0.127154661 0.133392300 0.134258532 0.138253452 0.141933433 0.146748798
[49] 0.147490227 0.149960293 0.153126478 0.154275371 0.167701855 0.170160948
[55] 0.180313542 0.181834891 0.182554291 0.189188137 0.193807559 0.195903010
[61] 0.208902645 0.211308713 0.232942314 0.236135220 0.251950116 0.260816843
[67] 0.284090255 0.284150541 0.288498370 0.295515143 0.299408623 0.301264703
[73] 0.306817872 0.307853369 0.324882091 0.353241217 0.366800517 0.389474449
[79] 0.398838576 0.404266315 0.408936260 0.409198619 0.415165553 0.433960390
[85] 0.440690262 0.458692639 0.464027428 0.474214070 0.517224262 0.538532221
[91] 0.544911543 0.559945121 0.585390414 0.647030109 0.694095422 0.708385079
[97] 0.736486707 0.787250428 0.870874773 1.000000000
``````
• Neat. This is what I've been missing out as a biologist in math classes. Commented Mar 29, 2011 at 6:07
• Additionally, if you didn't want to scale between 0 and 1 you could do `range02 <- function(x){ (x - min(x))/(max(x)-min(x)) * (newMax - newMin) + newMin }` Commented Jun 19, 2015 at 14:32
• @Optimus how do you unscale it using the scaled values? Commented Jul 15, 2020 at 22:52

Alternatively:

``````scale(x,center=min(x),scale=diff(range(x)))
``````

(untested)

This has the feature that it attaches the original centering and scaling factors to the output as attributes, so they can be retrieved and used to un-scale the data later (if desired). It has the oddity that it always returns the result as a (columnwise) matrix, even if it was passed a vector; you can use `drop(scale(...))` if you want a vector instead of a matrix (this usually doesn't matter but the matrix format can occasionally cause trouble downstream ... in my experience more often with tibbles/in tidyverse, although I haven't stopped to examine exactly what's going wrong in these cases).

This should do it:

``````reshape::rescaler.default(s, type = "range")
``````

EDIT

I was curious about the performance of the two methods

``````> system.time(replicate(100, range01(s)))
user  system elapsed
0.56    0.12    0.69
> system.time(replicate(100, reshape::rescaler.default(s, type = "range")))
user  system elapsed
0.53    0.18    0.70
``````

Extracting the raw code from `reshape::rescaler.default`

``````range02 <- function(x) {
(x - min(x, na.rm=TRUE)) / diff(range(x, na.rm=TRUE))
}

> system.time(replicate(100, range02(s)))
user  system elapsed
0.56    0.12    0.68
``````

Yields similar result.

You can also make use of the caret package which will provide you the preProcess function which is just simple like this:

``````preProcValues <- preProcess(yourData, method = "range")
dataScaled <- predict(preProcValues, yourData)
``````

More details on the package help.

I created following function in r:

``````ReScale <- function(x,first,last){(last-first)/(max(x)-min(x))*(x-min(x))+first}
``````

Here, first is start point, last is end point.