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To find eigenvectors using eigen values watch my PCA(principal component GATE Insights Version: CSE or GATE Insights Version: CSE ... In this video, we take a closer look at Linear Discriminant Analysis (LDA), a method for dimensionality reduction that focuses ... 0:00 Recording starts 1:27 Lecture starts 1:55 MDS (motivation) 8:31 MDS (outline) 24:41 MDS (clarification) 39:17 We will cover classification models in which we estimate the probability distributions for the classes. We can then compute the ...
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Last Updated: May 21, 2026
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