# Calculate percent change from a baseline year (t0) to a subsequent BUT LIMITED series of years (t1, …, tk)

Imagine you have yearly data for some sort of expenses. You are interested in the percent difference between the first value (t0) and each subsequent value (t1, ... -> tx) BUT only for a specific group of observations, i.e. with the next group, a new series of subsequent years starts.

Example:

``````    value <- c(10225,10287,10225,10087,10344,10387,10387,14567,13992,15432)
case <- c(A,A,A,B,B,B,B,B,C,C)

year    value   case   change
1989    10225   A      0.00
1990    10287   A      0.61 # ((100/10225)*10287)-100
1991    10262   A      0.36
1995    10087   B      0.00
1996    10344   B      2.55 # ((100/10087)*10344)-100
1997    10387   B      2.97
1978    10387   B      2.97
1979    14567   B      ...
1980    13992   C
1981    15432   C
``````

How can I calculate the percent change in R?

The answers to my earlier post and similar posts (e.g., this post on calculating relative difference) were very helpful. Thanks again!

However, I had to realize that my case is more complex and edited my question accordingly. The problem is that I do not have ONE series of subsequent years but A NUMBER of limited series of subsequent years, one per group of cases.

Any ideas are highly appreciated!

Many thanks.

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## 3 Answers

To answer your expanded question, use `transform` combined with `ddply` from the plyr package:

``````ddply(df, .(case), transform, change = ((100 / value[1]) * value) - 100)
``````

In regard to your comment on the NA and Inf values, this is expected behavior as you are dividing by zero, making the change meaningless. You could delete those entries.

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Thanks, Paul! Very much appreciated. –  TiF Nov 13 '12 at 16:01
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What about this?

``````((value[-1]/value[1])-1)*100
[1]  0.6063570  0.0000000 -1.3496333  1.1638142  1.5843521  0.7334963
``````

Another alternative

``````((value - value[1]) / value[1]) * 100
[1]  0.0000000  0.6063570  0.0000000 -1.3496333  1.1638142  1.5843521  0.7334963
``````

For your updated question, here's two R base solutions:

``````transform(df, Change = unlist(sapply(split(value, case), function(x) ((x - x[1]) / x[1]) * 100)))
value case    Change
A1 10225    A  0.000000
A2 10287    A  0.606357
A3 10225    A  0.000000
B1 10087    B  0.000000
B2 10344    B  2.547834
B3 10387    B  2.974125
B4 10387    B  2.974125
B5 14567    B 44.413602
C1 13992    C  0.000000
C2 15432    C 10.291595

transform(df, Change = unlist(aggregate(value ~ case, function(x) ((x - x[1]) / x[1]) * 100, data=df)\$value))
value case    Change
01 10225    A  0.000000
02 10287    A  0.606357
03 10225    A  0.000000
11 10087    B  0.000000
12 10344    B  2.547834
13 10387    B  2.974125
14 10387    B  2.974125
15 14567    B 44.413602
21 13992    C  0.000000
22 15432    C 10.291595
``````
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Beautiful! Thanks a lot. Sometimes the solution is easier than you first think ;- ) Great. –  TiF Nov 10 '12 at 22:06
Dear Jilber, I had to realize that my problem is more difficult than the one I posted. I edited the question accordingly and would highly appreciate if you could have another look. Many many thanks! –  TiF Nov 13 '12 at 14:10
@TiF,sorry for being late, you can see my edit, but I'm too late, you uncheck my answer :( –  Jilber Nov 13 '12 at 17:13
I am terribly sorry, Jilber! Your answer is still correct, it was just my fault as I edited my question. Many many thanks for answering the question nevertheless! –  TiF Nov 13 '12 at 17:45
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If your data frame is called, say, `df`, try something like this:

``````transform(df, change = 100*(value/value[year==1989] - 1))
``````

noting that this will give a value of `0` for 1989 not `NA`:

``````#   year value     change
# 1 1989 10225  0.0000000
# 2 1990 10287  0.6063570
# 3 1991 10225  0.0000000
# 4 1992 10087 -1.3496333
# 5 1993 10344  1.1638142
# 6 1994 10387  1.5843521
# 7 1995 10300  0.7334963
``````

If you know you want the first record to be the base you can simply use

``````transform(df, change = 100*(value/value[1] - 1))
``````
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Thanks Sean. Your solution works very well, too. Very much appreciated! –  TiF Nov 10 '12 at 22:06
Dear Sean, as I also wrote to Jilber, my problem with the calculation of percent change is actually more complex than originally posted. Would you might having another look? That would be fantastic!! Many many thanks. –  TiF Nov 13 '12 at 14:11
Just combine `transform` (or `mutate`) with `ddply` in order to solve your more complex problem: `ddply(df, .(case), transform, change = ((100 / value[1]) * value) - 100)`. –  Paul Hiemstra Nov 13 '12 at 14:45
I see Paul has sorted you out! –  seancarmody Nov 17 '12 at 6:17
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