Skip to content

Latest commit

 

History

History
47 lines (32 loc) · 1.17 KB

README.md

File metadata and controls

47 lines (32 loc) · 1.17 KB

03 - Unsupervised Learning and Dimensionality Reduction

Clustering Algorithms

  1. K-Means
  2. Expectation Maximization

Dimensionality reduction Algorithms (feature selection)

  1. Principal component analysis (PCA)
  2. Fast Independent Component Analysis (ICA)
  3. Random Projections Gaussian
  4. Extremely Randomized Trees

pca

Classification Algorithms

  1. Multi-layer Perceptron (Neural Network)
  2. Logistic Regression

Problems

  1. Wholesale customer segments
  2. Raisins class

Metrics

  1. Accuracy
  2. Recall
  3. Log Loss

Plots

  1. Learning curve
  2. Validation curve

Instructions

  1. URL
  2. Click on "Code"
  3. Click on "Download ZIP"
  4. Unzip the files
  5. Run each of the python files individually using Python 3.8.

Results

  1. All results will be printed to the console including metrics scores and execution times.
  2. All the 100 plus graphs will be generated directly in the repository once the files are run successfully.