PCA and WPCA for dimentionality reduction after Feature Extraction in speaker recognition system

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hi all,
i want to use dimentionality reduction after feature extraction (MFCC) using PCA and WPCA. can some one give me the code for both
help is appreciated
-Shaikha

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Aditya
Aditya el 22 de Jul. de 2025
Hi Shaikha,
After extracting MFCC features, it's common to apply dimensionality reduction techniques such as PCA (Principal Component Analysis) and WPCA (Weighted Principal Component Analysis) to reduce the feature space and possibly improve classification or clustering performance.
  • PCA is widely used for dimensionality reduction. In MATLAB, you can use the built-in pca function. Suppose your MFCC features are stored in a matrix called mfccFeatures, where each row corresponds to an audio sample and each column to an MFCC coefficient.
  • WPCA is a variant of PCA where each sample can be assigned a weight, which is useful if you want certain samples to have more influence on the resulting components. While MATLAB does not have a built-in wpca function, you can implement it by weighting your centered data before applying PCA.

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