Error using gather when using predict (from ClassificationKNN)
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Thanks in advance.
My code uses ClassfificationKNN to predict classes for my data. The error I get is as follows:
Error using gather
Too many input arguments.
Error in ClassificationKNN/score (line 451)
[CIDX,dist,gindex,W] = gather(CIDX,dist,gindex,W);
Error in ClassificationKNN/predict (line 777)
[posteriors,gindex,CIDX] = score(this,X);
Using the debugger, line 451 raises the issue when trying to Transfer distributed array.
Part of the code I use (portion pertaining to this question):
Note: attached is one sample of training and testing dataset since this is embededded in a for loop.
dist_measure = {'cosine'; 'correlation'; 'spearman';};
distMeas = dist_measure{2};
distWeight = 'inverse';
breakties = 'nearest';
nNeighbors1 = 1;
nNeighbors2 = 9;
training_labels1 = items(ind); %111x1 (1,2,3...28)
training_labels2 = category(ind); %111x1 (1,1,1...2,2,2)
true_label1 = items(indtest); %exemplar (e.g., 1)
true_label2 = category(indtest); %category (e.g., 1)
%from https://lvdmaaten.github.io/drtoolbox/
if DRflag
%% Performs out-of-sample extension of the new datapoints in points.
training_data = out_of_sample(training_data,mapping0); %111x11 (convert 11 objects into 11 feature vectors)
predicted_data = out_of_sample(predicted_data,mapping0); %1 x 11
end
mdl1 = fitcknn(training_data,training_labels1,'distance',distMeas,'DistanceWeight',distWeight,...
'NumNeighbors',nNeighbors1,'BreakTies',breakties); %item decoding
mdl2 = fitcknn(training_data,training_labels2,'distance',distMeas,'DistanceWeight',distWeight,...
'NumNeighbors',nNeighbors2,'BreakTies',breakties); %category decoding
predicted_label1 = predict(mdl1,predicted_data);
predicted_label2 = predict(mdl2,predicted_data);
2 comentarios
Ayush Aniket
el 22 de Ag. de 2023
I implemented the code you shared with the data provided as shown below:
dist_measure = {'cosine'; 'correlation'; 'spearman';};
distMeas = dist_measure{2};
distWeight = 'inverse';
breakties = 'nearest';
nNeighbors1 = 1;
nNeighbors2 = 9;
training_labels1 = load('training_labels1.txt');
training_labels2 = load('training_labels2.txt');
training_data = load('training_data.txt');
predicted_data = load('predicted_data.txt');
mdl1 = fitcknn(training_data,training_labels1,'distance',distMeas,'DistanceWeight',distWeight,...
'NumNeighbors',nNeighbors1,'BreakTies',breakties); %item decoding
mdl2 = fitcknn(training_data,training_labels2,'distance',distMeas,'DistanceWeight',distWeight,...
'NumNeighbors',nNeighbors2,'BreakTies',breakties); %category decoding
predicted_label1 = predict(mdl1,predicted_data);
predicted_label2 = predict(mdl2,predicted_data);
I am not getting any error. I got the following values as answer.
predicted_label1 = 12
predicted_label2 = 1
Let me know in case of any discrepancies.
Camilo
el 22 de Ag. de 2023
Respuesta aceptada
Más respuestas (1)
chadows
el 20 de Jun. de 2024
0 votos
I have tried to delete those files under this path:
D:\MATLAB\toolbox\eeglab\plugins\ICLabel\matconvnet\matlab\compatibility\parallel\
but when I add
g = which('gather');
disp(g);
code in D:\MATLAB\toolbox\stats\classreg\ClassificationKNN.m line 452, I found "g" is still "D:\MATLAB\toolbox\eeglab\plugins\ICLabel\matconvnet\matlab\compatibility\parallel\gather.m".
Finally, I delete the path: D:\MATLAB\toolbox\eeglab\plugins\ICLabel\matconvnet\matlab\compatibility\parallel\.
Then I succeeded.
>> which('gather')
D:\MATLAB\toolbox\matlab\bigdata\gather.m
I wonder if there is any other better ways.
:)
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