Data Science and Machine Learning (Theory and Projects) A to Z - Dimensionality Reduction: The Principal Component Analy

Data Science and Machine Learning (Theory and Projects) A to Z - Dimensionality Reduction: The Principal Component Analy

Assessment

Interactive Video

Information Technology (IT), Architecture, Social Studies

University

Hard

Created by

Quizizz Content

FREE Resource

The video tutorial discusses dimensionality reduction, focusing on Principal Component Analysis (PCA) as an unsupervised learning technique. It explains the challenges of high-dimensional data and the benefits of reducing dimensions, such as increased stability and reduced computational complexity. The tutorial contrasts unsupervised and supervised dimensionality reduction, using PCA and Fisher's Linear Discriminant (FLD) as examples. An illustrative example with image data demonstrates how PCA identifies subspaces to compress data without losing information. The video concludes with an overview of dimensionality reduction's role in machine learning and hints at future topics like deep learning.

Read more

1 questions

Show all answers

1.

OPEN ENDED QUESTION

3 mins • 1 pt

What new insight or understanding did you gain from this video?

Evaluate responses using AI:

OFF