Discovering patterns and reducing complexity without labels
Unsupervised Machine Learning
Exploring the untapped potential of unsupervised machine learning, this study employs K-Means and Expectation Maximization to dissect synthetic datasets. Utilizing PCA, ICA, Randomized Projection, and Feature Selection, the project simplifies data complexity, revealing intrinsic patterns and offering clarity to the label-free labyrinth of information.