# Approximate lookup in R

I have the following lookup table:

``````lkp <- data.frame(
x=c(0,0.2,0.65,0.658,1.3,1.76,2.7),
y=c(1,1,1,0.942,0.942, 0.92, 0.89)
)
``````

I would like to get the value of Y of a given X value.

If the X value exists in the table then the exact Y of the table should be returned. If the X value does not exist, then the Y value should be returned as linear interpolation of the 2 nearest neighbors (only the 2 nearest neighbors). I would not like to fit a model to the overall data.

for the above table

``````for X=0.2 Y=1 (exact lookup)
for X=2 Y=0.91 (linear interpolation between the last 2 rows of the data frame)
``````

Is there any ready function to do this?

-

Yes, it's called `approx`.

``````> with(lkp, approx(x, y, xout=c(0.2, 2)))
\$x
[1] 0.2 2.0

\$y
[1] 1.0000000 0.9123404
``````

See `?approx` for more information.

-
Wow, that is cool (+1)! Thanks for pointing my attention to this useful function, I'll have to definitely read an introduction to R in full at last :) Anyway, I will not delete my answer, let it be there as a basic example for writing small functions like this. –  daroczig Oct 9 '11 at 15:04
Perfect! Thank you! Does the data frame need to be sorted or something? Nothing is stated in the help file about it. –  ECII Oct 9 '11 at 15:05
@ECII Much to my surprise, no it doesn't have to be sorted. Try it: `lkp <- lkp[sample(1:7), ]` –  Andrie Oct 9 '11 at 15:25
If you think that is cool wait till you try approxfun ;) –  mdsumner Oct 9 '11 at 21:35
approx is cool, approxfun is ice cold –  mdsumner Oct 12 '11 at 10:19
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I do not think there is a ready function for this, but you could build one quite easily. E.g.:

A function for getting "neighbourgs" (the name is a bit misleading, but the function works):

``````get.neighbourgs <- function(vector, x) {
diff <- vector-x
if (any(diff==0)) {
return(which(diff==0))
} else {
lower <- tail(which(diff<0), 1)
return((lower-1):lower)
}
}
``````

It will return the exact "ID" if a value is found in `vector`, otherways it will return two "IDs" (two smaller values before that). It requires that your data is ordered! If not, you have to tweak it a bit. Examples of usage:

``````> get.neighbourgs(lkp\$x,1.3)
[1] 5
> get.neighbourgs(lkp\$x,2)
[1] 5 6
``````

Using this, a simple function can be built to get the mean of required`y` values, like:

``````get.y <- function(df, x) {
mean(df\$y[get.neighbourgs(df\$x, x)])
}
``````

Examples:

``````> get.y(lkp, 1.2)
[1] 0.971
> get.y(lkp, 2)
[1] 0.931
``````

Hope that helps.

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