Pca built-in function and how its works?

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Can anyone tell me the pca built-in function for machine learning also which one dataset are used for dimensionality reduction... Thnx in advance

Accepted Answer

KSSV
KSSV on 24 May 2019
REad abut Singula Value DEcomposition. svd . And refer this for more clarity:
  3 Comments
KSSV
KSSV on 24 May 2019
Matrices...a 2D matrix. Check the documentation..you got many examples: https://in.mathworks.com/help/stats/pca.html
Muhammad Ibrar
Muhammad Ibrar on 24 May 2019
Ok thnx let me check if I got a problem I'll contct u...

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More Answers (1)

Steven Lord
Steven Lord on 24 May 2019
The books and papers listed in the References section on the documentation page for the pca function in Statistics and Machine Learning Toolbox may be of interest if you want to know the technical details behind principal component analysis. The page linked as the second entry in the Topics section of that page gives a brief overview of what PCA is.
  3 Comments
Steven Lord
Steven Lord on 24 May 2019
The main point behind PCA is that you use it to analyze your data to identify your data's principal components and learn more about your data.
If you want a sample dataset to experiment with pca you could use rand, randn, randi, gallery, ones, zeros, eye, etc. Some of those would make for more interesting experiments than others.
Muhammad Ibrar
Muhammad Ibrar on 24 May 2019
Can u send some example of 1 dataset plz actually im new to implement this

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