Replace NaNs with previous values

Hello,
I have the following problem. I like to replace NaNs with the previous values.
A =
4 5 6 7 8
32 NaN NaN 21 NaN
12 NaN 12 NaN NaN
34 NaN NaN NaN NaN
B =
4 5 6 7 8
32 5 6 21 8
12 5 12 21 8
34 5 12 21 8
I sloved it like this:
for i = 2:5
[r,c] = find(isnan(A(:,i)));
while sum(isnan(A(:,i)))>0
A(r,i) = A(r-1,i);
end
end
I'm sure there is a way avoiding the for and the while statement. I search for an "elegant" solution.
Someone's able to help me?

2 comentarios

Matt Fig
Matt Fig el 9 de Oct. de 2012
What if a whole column is nan? Which value will fill it?
Johannes
Johannes el 9 de Oct. de 2012
If the first value is NaN, everything should be NaN untill a different value appears in the column.
Thanks, Johannes

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Respuestas (5)

Moshe Flam
Moshe Flam el 3 de Dic. de 2017
Editada: Moshe Flam el 4 de Dic. de 2017
Use `fillmissing` According to this matlab documentation (click here) on their website.
ROWBYROW = 2;
B = fillmissing(A,'previous',ROWBYROW);

2 comentarios

Rasoul Soufi Noughabi
Rasoul Soufi Noughabi el 16 de Sept. de 2020
nice!
Namrata Goswami
Namrata Goswami el 11 de Dic. de 2020
Editada: Namrata Goswami el 11 de Dic. de 2020
This worked for me partially, since I need to replace missing values withing group. How to use fillmising within a group, like with splitapply ?

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Matt Fig
Matt Fig el 9 de Oct. de 2012
Editada: Matt Fig el 9 de Oct. de 2012
Johannes, notice that your solution will fail if the first value in a column is nan. Rather than looking for a vectorized solution that may end up being rather convoluted (and being slower!), I would simply write a good FOR loop function that can handle all cases. For example, the following solution does not use the FIND function, and only uses simple loops and thus should be very fast:
function A = fill_nans(A)
% Replaces the nans in each column with
% previous non-nan values.
for ii = 1:size(A,2)
I = A(1,ii);
for jj = 2:size(A,1)
if isnan(A(jj,ii))
A(jj,ii) = I;
else
I = A(jj,ii);
end
end
end

7 comentarios

owr
owr el 9 de Oct. de 2012
This is really nice, readable and makes sense. I especially like the fact that you were able to implement it as an in-place function. In a couple quick tests, a "find" based solution doesnt seem to be any worse performance wise, but I still think I like this better because it is really clean. I may use it for myself, thanks for sharing!
Mohammad Sayeed
Mohammad Sayeed el 14 de En. de 2014
Hi I tried to apply your codes but it showed following error: Error using fill_nans (line 4) Not enough input arguments. Can you please tell me how can I correct it?
Jakob Hannibal
Jakob Hannibal el 16 de Nov. de 2014
This is a great little script! I want to replace with the next valid measurement instead of the previous... Any good ideas?
Jan
Jan el 16 de Nov. de 2014
@Jakob: Simply replace the loops, wuch that run the other way around:
for ii = size(A,2):-1:1
Jakob Hannibal
Jakob Hannibal el 16 de Nov. de 2014
Yes, I thought about that. But I tried to use flipud before the loop and then reverse the flip after the operation. I think it works too! Thanks for feedback!!
Timothy Jackson
Timothy Jackson el 1 de Abr. de 2016
Is there a way to do this both before and after values? For instance changing
A= NaN NaN 2 4 8 NaN NaN to A= 2 2 2 4 8 8 8 ?
Faez Alkadi
Faez Alkadi el 1 de Mayo de 2017
Good question Timothy Jackson. I hope someone can answer this

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Wayne King
Wayne King el 9 de Oct. de 2012
Editada: Wayne King el 9 de Oct. de 2012
How about:
A = [ 4 5 6 7 8
32 NaN NaN 21 NaN
12 NaN 12 NaN NaN
34 NaN NaN NaN NaN];
indices = isnan(A);
A(indices) = 0;
B = repmat([4 5 6 7 8],size(A,1),1);
A = A+B.*indices;

1 comentario

Johannes comments:
"Solution there:
A =
4 5 6 7 8
32 5 6 21 8
12 5 12 7 8
34 5 6 7 8
Not good, would need the following: 4 5 6 7 8 32 5 6 21 8 12 5 12 21 8 34 5 12 21 8
Still thanks for you help!"

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owr
owr el 9 de Oct. de 2012
I do this all the time, my code uses for loops, but I dont see anything wrong with for loops. Im sure there are more elegent solutions but this does the trick for me and is more than fast enough:
function datai = backfillnans(data)
% Dimensions
[numRow,numCol] = size(data);
% First, datai is copy of data
datai = data;
% For each column
for c = 1:numCol
% Find first non-NaN row
indxFirst = find(~isnan(data(:,c)),1,'first');
% Find all NaN rows
indxNaN = find(isnan(data(:,c)));
% Find NaN rows beyond first non-NaN
indx = indxNaN(indxNaN > indxFirst);
% For each of these, copy previous value
for r = (indx(:))'
datai(r,c) = datai(r-1,c);
end
end

2 comentarios

This seems to fail when a whole column of data is nan.
A = [25 NaN 54 99 20
3 NaN 92 74 89
7 NaN NaN NaN 82
75 NaN 43 65 77
NaN NaN 15 NaN 38]
owr
owr el 9 de Oct. de 2012
Ah, good catch Matt, thanks for that. Ive been using this for almost 2 years multiple times a day and thats never come up - I guess I never have a full column of nans. It can be fixed I guess by putting an:
if( ~isempty(indxFirst) )
after the line that calculates "indxFirst". Part of me would actually like the whole process to fail so I can figure out why I passed a full column of nans in the first place - that would be symptomatic of a much bigger issue...
Anyways, thanks for taking the time to run and test the code.

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Carlos Vladimir Rodriguez Caballero
Carlos Vladimir Rodriguez Caballero el 18 de Jul. de 2017

0 votos

I found your procedure much more elegant and efficient. It was very helpful man.

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el 11 de Dic. de 2020

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