- Scale your features (i.e. standardize them). You can use the "zscore" function to do the same.
- Use the "pca" function to reduce dimensionality and also specify the number of principal components to keep or the variance you wish to retain.
- Project your original data onto the reduced space obtained from PCA.
How to reduce features using PCA and get good result on Pattern recognition ?
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I have data 200x90. (rowsx columns)
My input has 200x88 and my target has 200x2 .
My data number (200 ) is less according to 88 features to get good accuracy on my neural network.
It should be more data to get good accuracy but I can't increase my data .
So I want to use PCA to reduce 88 features.
I loaded data200 and shared codes .
When I apply pca I got that error:
% Error using network/train (line 340)
% Inputs and targets have different numbers of samples.
% Error in deneme (line 50)
% [net,tr] = train(net,x,t);
Because it decreases my rows also. I want to keep my rows number (200) and just decrease column numbers.
I couldn't manage how to apply PCA in proper way.
veri=xlsread('data200.xlsx');
input=veri(:,1:88);
target=veri(:,89:90);
input=pca(input);
x=input';
t=target';
% Solve a Pattern Recognition Problem with a Neural Network
% Script generated by Neural Pattern Recognition app
% Created 07-Feb-2021 15:50:44
%
% This script assumes these variables are defined:
%
% x - input data.
% t - target data.
% Choose a Training Function
% For a list of all training functions type: help nntrain
% 'trainlm' is usually fastest.
% 'trainbr' takes longer but may be better for challenging problems.
% 'trainscg' uses less memory. Suitable in low memory situations.
trainFcn = 'trainscg'; % Scaled conjugate gradient backpropagation.
% Create a Pattern Recognition Network
hiddenLayerSize = [10];
net = patternnet(hiddenLayerSize, trainFcn);
% Setup Division of Data for Training, Validation, Testing
net.divideParam.trainRatio = 70/100;
net.divideParam.valRatio = 15/100;
net.divideParam.testRatio = 15/100;
% Train the Network
[net,tr] = train(net,x,t);
% Test the Network
y = net(x);
e = gsubtract(t,y);
performance = perform(net,t,y)
tind = vec2ind(t);
yind = vec2ind(y);
percentErrors = sum(tind ~= yind)/numel(tind);
% View the Network
view(net)
% Plots
% Uncomment these lines to enable various plots.
%figure, plotperform(tr)
%figure, plottrainstate(tr)
%figure, ploterrhist(e)
%figure, plotconfusion(t,y)
%figure, plotroc(t,y)
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Respuestas (1)
Ayush
el 3 de Abr. de 2024
Hi,
It seems that you are having trouble applying for PCA in your current implementation. You can follow the below steps:
Refer to the code below for better understanding:
% Load data
veri = readtable("data200.xlsx");
veri = table2array(veri);
input = veri(:,1:88);
target = veri(:,89:90);
% Standardize the input data
inputStandardized = zscore(input);
% Apply PCA
% Here, you can specify the number of components or the variance to keep.
% For example, to keep 95% of variance, you can use:
[coeff, score, ~, ~, explained] = pca(inputStandardized);
% Determine the number of components to keep 95% variance
cumulativeVariance = cumsum(explained);
numComponents = find(cumulativeVariance >= 95, 1, 'first');
% Project the input data onto the reduced space
inputPCA = score(:,1:numComponents);
% Now, use inputPCA for your neural network training
x = inputPCA';
t = target';
% The rest of your code remains the same for creating and training the network
Below is the attached image of the resulting network that I got:
For more information on "zscore" and "pca" functions, refer to the below documentation:
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