# Calculating the percent change between two values in R and off by one issue

I am trying to calculate the percent change between two points in R in the form of:

``````(X_(i+1) - X_(i))/(X_(i))
``````

Here is what I have come up with so far:

``````#x is a vector from the dataframe
#lag is distance between two points being compared
percent_change = function(x,lag = 1)
{
n = length(x)
pchange = c((x[(1+lag):n] - x[1:(n-lag)])/x[1:(n-lag)],NA)
return(pchange)
}
``````

However, in order to accomplish this task in R I had to bind an NA to avoid:

``````Error in \`\$<-.data.frame\`(\`*tmp*\`, "Change", value = c(0.00248221082243916,  :
replacement has 4616 rows, data has 4617
``````

With this addition, the operation occurs and aligns to what I've calculate it should be on paper.

Is there a way where I do not have to append an NA?

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you don't appear to be using a data frame at all - is that in the code that calls this function? –  Alex Brown Sep 9 '12 at 20:29
If you don't store it back to the data frame then you don't need the NA. –  Alex Brown Sep 9 '12 at 20:41

You do need the `NA` if you want to store the `pc_change` result back in the original data frame:

Since the last element of your array does not have an `x+1` to compare to it will produce a vector 1 (or lag) shorter than the original.

Warning: Note that you have one `NA` added - this is correct for the case `lag=1` but more generally you need need `lag` × `NA` elements.

Try replacing `NA` with `rep(NA,lag)`.

Here's a more compact version of your function using the built-in `diff` function:

``````pcchange=function(x,lag=1) c(diff(x,lag),rep(NA,lag))/x
``````
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Ahh! That is far more compact than what I came up with. One question: Syntax wise can any operation (+,-,*,%, ..) be performed on c(diff(x,lag),rep(NA,lag), ..)? –  Coatless Sep 9 '12 at 22:28
Diff is obviously the subtract operation. Apart from that, no you should synthesize your own as above. You could always look at the source to diff: type `diff.default` at your terminal. –  Alex Brown Sep 10 '12 at 22:23

To me, adding the NA seems like a valid solution. However, there are functions to perform this kind of operations. Take a look at `lag` function to get lagged timeseries. In general for timeseries analysis, look at the the `xts` and `zoo` packages for handeling of timeseries. The CRAN TaskView dedicated to timeseries is also a valueable source of information.

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Thanks! I'll definitely it out. I didn't realize there was such a centralized location for this information. –  Coatless Sep 9 '12 at 20:53