Input from PCA to train in SVM

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nurin noor
nurin noor el 2 de Jun. de 2021
Comentada: nurin noor el 3 de Jun. de 2021
Hi Everyone. I had done PCA to reduce the feature but I am really confused what input from the PCA should i used to train in SVM.
I used this function :
[coeff,score,latent,tsquared,explained] = pca(fextracted);
I read somewhere they said the score should be the input. However, I dont think score is the correct one to be used since it has the same array size as my original data.

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the cyclist
the cyclist el 2 de Jun. de 2021
Editada: the cyclist el 2 de Jun. de 2021
I have written a "tutorial" on how to use and interpret MATLAB's pca function here. Lots of users have asked questions (some of which are very similar to yours), and I have tried to answer them. I suggest you check that thread out, and see if it helps.
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nurin noor
nurin noor el 3 de Jun. de 2021
Hi Cyclist,
I've studied the thread and tried out to my code. It worked perfectly! Thank you so much!

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