# increase vector resolution in R

I am trying to figure out a method to increase the number of elements of vectors, in order to remove the angular effect visible when I plot the values of these vectors. For instance, let's say I got two vectors containing 10 elements each:

``````a = c(4,2,10,5,3,4,8,9,6,2)
b = seq(0,4.5, by=0.5)
``````

They are subject to data smoothing, but I would like to increase their "resolution" to obtain more prediction points than 10 (its length). So, in other words, take the vector a and double (for example) its number of elements, while keeping its consistency. The resulting vector should be something like:

``````a = c(4,3,2,6,10,7,5,4,3,4,6,8,8.5,9,7.5,6,4,2,2)
``````

Of course, in this particular case, I can easily compute the average of the elements pair-wise. But I would like to have a generalized method for an arbitrary length. I have tried with:

``````seq(a[1],a[10], length.out=20)
``````

but of course this does not do the job as only the first and last element of the vector are taken in consideration. It is suitable for the second vector b though (which contains the abscissa values). Any help would be appreciated. Thanks. Marius.

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It's not quite clear what you consider "keeping its consistency" to mean? Just fit within the min and max values of a? –  Hansi Apr 10 '12 at 12:15
You may like either `splinefun` or `approxfun` –  Carl Witthoft Apr 10 '12 at 12:28
No, to get any two consecutive elements of vector a and add between them another 2 or 3 or..whatever elements that are evenly distributed, but respect the trend of the vector. For instance if initially a[5]=4 and a[6]=7 and a[7]=5, and I add another 2 elements between a[5] and a[6] and between a[6] and a[7] that piece of a vector should be a1[5]=4; a1[6]=5, a1[7]=6, a1[8]=7, a1[9]=6.34, a1[10]=5.68, a1[11]=5 with the initial a[5]=a1[5], a[6]=a1[8] and a[7]=a1[11] –  Marius Apr 10 '12 at 12:32
@CarlWitthoft I have created a spline function also, but I would like to increase the number of predicted values so the resulting line defining the trend of the data points (i.e., my vector elements) is not that angular. –  Marius Apr 10 '12 at 12:34

Do you just want linear interpolation based on the `b` sequence?

`````` f <- approxfun(b, a)
f(seq(b[1], b[length(b)], length = 20))
[1] 4.000000 3.052632 2.105263 5.368421 9.157895 8.157895 5.789474 4.368421 3.421053 3.263158 3.736842 4.842105 6.736842 8.157895 8.631579 8.684211 7.263158 5.789474
[19] 3.894737 2.000000
``````

See `?approx` for other options and its `See also` for other forms of interpolation, also `?round` for rounding out the values in various ways.

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No, I already obtained a linear interpolation using the seq() function, but most of my data describes a quadratic curve, that's why I specified that I would like to keep the consistency of the vector. But I will take a look at the approx and round. –  Marius Apr 10 '12 at 12:38
You might be surprised how nicely approxfun or splinefun match your data just with default settings, especially if you increase the number of points - not sure what else you mean by "consistency". –  mdsumner Apr 10 '12 at 12:53
From what I see the approxfun does the deal. Thank you for your quick reply. I have used also splinefun, but I needed a custom behavior for a spline function that is why I have created my own. Again, approxfun produces the wanted results. Thank you! –  Marius Apr 10 '12 at 12:56
In that case, I claim first authorship of `approxfun` and will be suing mdsumner for plagiarism, copyright infringement, and theft of IP. (This is parody, for those otten-ray ownvoters-day out there) –  Carl Witthoft Apr 10 '12 at 17:10