
Representation Learning Part 1 - MLT 1.3 (Week1 Chapter3) Quiz
Created by Shiju P John ยท 5/24/2025
๐ Subject
Machine Learning Techniques
๐ Exam
IITM BS in Data Science
๐ฃ Language
English
๐ฏ Mode
Practice
๐ Taken
0 times
No. of Questions
30
Availability
Free
๐ Description
This quiz explores the mathematical foundations of representation learning, a precursor to Principal Component Analysis (PCA). It tests intuitive understanding of key concepts such as data compression, geometric projections, and trade-offs between reconstruction error and storage efficiency. Questions are designed to reinforce the idea of 'comprehension as compression' (inspired by George Chaitin) and cover practical applications like dimensionality reduction. Topics include collinearity, representative vectors, dot products, and orthogonality, with LaTeX-formatted equations for clarity. The quiz bridges theoretical linear algebra with ML techniques, preparing learners for advanced topics like PCA.