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Azzera filtri

How to find the total value by category in a table

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Risposta accettata

Cris LaPierre
Cris LaPierre il 2 Gen 2019
Modificato: Cris LaPierre il 2 Gen 2019
G = findgroups(Table.Clase);
Result = splitapply(@sum,Table.Monto,G);
Result = table(categories(Table.Clase),Result,'VariableNames',{'Clase','Monto'})
  7 Commenti
Cris LaPierre
Cris LaPierre il 4 Gen 2019
Ah, you are in 2017a. It looks like reordercats did not yet support the string data type.
Update the line that uses string to use cellstr instead
[cats,ia,~] = unique(cellstr(Table.Clase));
julios
julios il 4 Gen 2019
That's right !!!, the final result has a initial order. Thank you very much !!

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Più risposte (2)

Peter Perkins
Peter Perkins il 23 Gen 2019
The problem with Chris' solution is that by going through findgroups in that way, you lose all the categoricalness of your grouping variable. You can work around that in splitapply in a few ways, one of which Chris shows, but here's something more direct:
>> Clase = categorical({'w'; 'w'; 'w'; 'b'; 'b'; 'y'},{'w' 'b' 'y'});
>> Monto = [1;2;3;4;5;6];
>> t = table(Clase,Monto)
t =
6×2 table
Clase Monto
_____ _____
w 1
w 2
w 3
b 4
b 5
y 6
>> tsum = varfun(@mean,t,'GroupingVariable','Clase')
tsum =
3×3 table
Clase GroupCount mean_Monto
_____ __________ __________
w 3 2
b 2 4.5
y 1 6
>> categories(tsum.Clase)
ans =
3×1 cell array
{'w'}
{'b'}
{'y'}
In (very) recent versions of MATLAB, there's also groupsummary:
>> groupsummary(t,"Clase","mean")
ans =
3×3 table
Clase GroupCount mean_Monto
_____ __________ __________
w 3 2
b 2 4.5
y 1 6
varfun only works for tables, whereas groupsummary is more widel applicable.
  1 Commento
Cris LaPierre
Cris LaPierre il 23 Gen 2019
Not sure what you mean by losing its categoricalness.
>> summary(Result)
Variables:
Clase: 3×1 categorical
Values:
White 1
Black 1
Yellow 1
Monto: 3×1 double
Values:
Min 4
Median 5
Max 6

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Image Analyst
Image Analyst il 2 Gen 2019
You can use grpstats() to get the stats by group, if you have the Statistics and Machine Learning Toolbox. It doesn't have sum but it has count and mean so you can multiply those to get the sum. Attach your table in a .mat file, and your expected results if you need more guidance.
  3 Commenti
Image Analyst
Image Analyst il 3 Gen 2019
OK, no problem. You accepted it so it looks like it's solved your problem. Or maybe not?
julios
julios il 4 Gen 2019
Tank you for your interest, and Yes the principal problem has been solved, we only tuning a response.

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