Neural network for bags-of-visual-words giving a pretty bad training/testing results.

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Dear All:
I created a feature matrix using (encode, bagOfFeatures functions) visual-bags-of-words using computer vision toolbox, it is 500 x 14404 (Xtrain = 10793, XVal = 1204 and XTest = 2407 samples). There are 14 classes, target matrix is 14 x 14404. When I use Matlab's default multiclass SVM that is using below code snippets:
categoryClassifier = trainImageCategoryClassifier(imdsTrainRandomized, bag_Train_BoFOri);
[confMatTr,knownLabelIdxTr,predictedLabelIdxTr,scoreTr] = evaluate(categoryClassifier, imdsTrainRandomized);
[confMatVl,knownLabelIdxVl,predictedLabelIdxVl,scoreVl] = evaluate(categoryClassifier, imdsValRandomized);
[confMatTs,knownLabelIdxTs,predictedLabelIdxTs,scoreTs] = evaluate(categoryClassifier, imdsTestRandomized);
I am getting testing accuracy around 70%, with almost 70% for precision and recall. That's pretty decent for the given dataset.
For neural network, I am using patternet with [800 800 900] and other combinations with 2 and 3 hidden layers. Unfortunately, the training accuracy is about 18-20 %, whereas test accuracy is around 8 -12 % only. I tried various hidden units for 2 and 3 hidden layers (combinations up to 5:20:800-1000 hidden units), but testing accuracy is < 10%. Compared to default SVM results is very low.
I really appreciate any help.
Thanks,
Below is my code snippet for training/validating/testing NN:
% Feature matrix (transposed) and % Labels/targets (transposed)
load 500VocSize_StronFeat_0p8.mat
% {Create/concatenate the feature and}
Xtrain = featureMatrixTrain_BoFOri;
Xval = featureMatrixVal_BoFOri;
XTest = featureMatrixTest_BoFOri;
Ttrain = targetTrain;
Tval = targetVal;
TTest = targetTest;
x = [Xtrain; Xval; XTest]';
t = [Ttrain; Tval; TTest]';
x = double(x);
% {Hidden units neurons}
pairs = [800 800 900];
net = patternnet(pairs);
% {Network options
%//%*******************************************************************
% Choose Input and Output Pre/Post-Processing Functions
% For a list of all processing functions type: help nnprocess}
net.input.processFcns = {'removeconstantrows','mapminmax'};
net.output.processFcns = {'removeconstantrows','mapminmax'};
% {Setup Division of Data for Training, Validation, Testing
% For a list of all data division functions type: help nndivide}
net.divideFcn = 'divideind'; % {Divide data by index}
net.divideMode = 'sample'; % {Divide up every sample}
%
net.divideParam.trainInd = 1 : size(Xtrain,1);
net.divideParam.valInd = size(Xtrain,1) + 1 : ...
size(Xtrain,1) + size(Xval,1);
net.divideParam.testInd = size(Xtrain,1) + size(Xval,1) + 1 :...
size(Xtrain,1) + size(Xval,1) + ...
size(XTest,1);
% Goal
net.trainFcn = 'trainscg'; {%'trainlm' 'trainscg' 'traingdx' 'traingda' 'traingdm' 'traingd'}
net.trainParam.epochs = 50000;
net.trainParam.goal = 1e-6 ;
net.trainParam.showCommandLine = true;
net.trainParam.show = 25;
net.trainParam.max_fail = 50000;
net.trainParam.min_grad=1e-7;
net.trainParam.lr = 0.01;
% {Change the transfer function for all hidden layers [output layer in deafult 'softmax' 'tansig']}
for i = 1:size(pairs,2)
net.layers{i}.transferFcn = 'tansig';
end
% {Turn on/off nntraintoll window}
net.trainParam.showWindow = true;
% {Callback of neural netwrok function
% Train the Network}
[net,tr] = train(net,x,t);
% Test the Network
y = net(x);
ActualTrainind = vec2ind(t(:,tr.trainInd(:)));
PredictTrainind = vec2ind(y(:,tr.trainInd(:)));
percentErrorsTrain = sum(ActualTrainind ~= PredictTrainind)/numel(ActualTrainind);
ActualTestind = vec2ind(t(:,tr.testInd(:)));
PredictTestind = vec2ind(y(:,tr.testInd(:)));
percentErrorsTest = sum(ActualTestind ~= PredictTestind)/numel(ActualTestind);
  4 comentarios
Preetham Manjunatha
Preetham Manjunatha el 7 de Nov. de 2017
Editada: Preetham Manjunatha el 7 de Nov. de 2017
Yes, I have tried with irisdataset with a net = patternnet([15 15 20]); and getting precision/recall around 95%. Also, one major change is instead of 'divideind', I have used 'dividerand'. The rest remains same.

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