Find Mean from Duplicate Entries

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Chris
Chris el 24 de Abr. de 2012
Comentada: John Yang el 17 de Nov. de 2013
Hello,
I have a matrix with 2 columns (X,Y) and a large number (hundreds or thousands) of rows. It's a time series, so the first column has year values and the second column, Y, corresponds to an observation at that time. However, some of the dates repeat with different values in Y (due to the fact that I did a "floor" function on the dates, some of which originally had monthly resolution).
What I want to do is locate all dates that are found more than once and take the mean of the corresponding Y values. For example, if I have
1900 8
1901 6
1902 4
1902 3
1903 5
.
.
.
I want the output to be,
1900 8
1901 6
1902 3.5
1903 5
.
.
.
Any help would be appreciated! Thanks.

Respuestas (2)

Walter Roberson
Walter Roberson el 24 de Abr. de 2012
[uyear, yearjunk, yearidx] = unique( Matrix(:,1) );
OutMatrix = [uyear(:), accumarray( yearidx, Matrix(:,2) ) ];
  3 comentarios
Walter Roberson
Walter Roberson el 25 de Abr. de 2012
OutMatrix = [uyear(:), accumarray( yearidx, Matrix(:,2), [], @mean ) ];
Chris
Chris el 25 de Abr. de 2012
Thanks!

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T. Guillod
T. Guillod el 13 de Mayo de 2013
Thanks for this solution. It helped me a lot.
The solution by Walter is OK but very slow (call to mean()). A better one:
Instead: accumarray( yearidx, Matrix(:,2), [], @mean )
Use: accumarray( yearidx, Matrix(:,2))./accumarray( yearidx, ones(size(Matrix,1),1))./
  2 comentarios
Sean de Wolski
Sean de Wolski el 13 de Mayo de 2013
You could skip the accumarray call in the denominator and instead use histc() on the yearidx with edges being uyear. histc() should be faster than accumarray()
John Yang
John Yang el 17 de Nov. de 2013
Find this old thread. Your solution is really fast, 10 times faster of using histc than calling @mean.
Just curious, why using histc so fast? In my eye, calling a basic function such as mean should use the same order of time as histc.

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