You are now following this Submission
- You will see updates in your followed content feed
- You may receive emails, depending on your communication preferences
% TASK 1. Let’s generate 800 random data on a 2-dimensional plane. The data
% are generated as 4 clusters, of which centers are located at (2,2), (-1,-2),
% (2,0) and (0,1). Each cluster has 200 data, of which distances from each
% center are randomly distributed with Gaussian distribution (standard
% deviation = 2, 2, 1, and 1, respectively).
% TASK 1-(a) Mark the generated data with dots (or circles) on a
% 2-dimensional space.
% TASK 1-(b) Conduct Principal Component Analysis based on eigenvector
% analysis. (You may use any library function for the
% eigenvector/eigenvalue calculation.) Show the principal axes and data
% projects on the axes.
% TASK 1-(c) Program and calculate the Hebbian-based maximum eigenfilter,
% and compare with the principal in (b).
Cite As
Shujaat Khan (2026). Principal Component Analysis / Hebbian-based Max Eigenfilter (https://in.mathworks.com/matlabcentral/fileexchange/72052-principal-component-analysis-hebbian-based-max-eigenfilter), MATLAB Central File Exchange. Retrieved .
Categories
Find more on Dimensionality Reduction and Feature Extraction in Help Center and MATLAB Answers
General Information
- Version 1.0.0 (244 KB)
MATLAB Release Compatibility
- Compatible with any release
Platform Compatibility
- Windows
- macOS
- Linux
| Version | Published | Release Notes | Action |
|---|---|---|---|
| 1.0.0 |
