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Data Science and Machine Learning (Theory and Projects) A to Z - Feature Extraction: Supervised PCA and Fishers Linear D

Data Science and Machine Learning (Theory and Projects) A to Z - Feature Extraction: Supervised PCA and Fishers Linear D

Assessment

Interactive Video

Information Technology (IT), Architecture

University

Hard

Created by

Wayground Content

FREE Resource

The video tutorial discusses supervised feature extraction techniques, focusing on supervised PCA and Fisher's Linear Discriminant Analysis (LDA). It explains how supervised PCA uses label information for feature selection before applying PCA, enhancing classification or regression tasks. Fisher's LDA is detailed, emphasizing maximizing between-class variance and minimizing within-class variance. The video also covers LDA's applications, including person reidentification in computer vision, and concludes with a preview of the next topic on feature engineering.

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OPEN ENDED QUESTION

3 mins • 1 pt

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