Practical Data Science using Python - Principal Component Analysis - Concepts

Practical Data Science using Python - Principal Component Analysis - Concepts

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Interactive Video

Information Technology (IT), Architecture, Social Studies

University

Hard

Created by

Wayground Content

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The video tutorial introduces Principal Component Analysis (PCA) as a technique for dimensionality reduction, crucial for handling high-dimensional data in machine learning. It covers the importance of data standardization, the role of covariance matrices, eigenvectors, and eigenvalues in PCA, and how to recast data using principal components. The tutorial also discusses the challenges of high-dimensional data, such as the curse of dimensionality, and the benefits of reducing dimensions for model accuracy and visualization.

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OPEN ENDED QUESTION

3 mins • 1 pt

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