Skip to content

Latest commit

 

History

History
71 lines (63 loc) · 2.19 KB

README.md

File metadata and controls

71 lines (63 loc) · 2.19 KB

NICF - Pattern Recognition and Machine Learning with R

These are the exercise files used for NICF - Pattern Recognition and Machine Learning with R course.

The course outline can be found in

https://www.tertiarycourses.com.sg/wsq-machine-learning-r.html

Topic 1 Overview of Machine Learning

  • Introduction to Machine Learning
  • Pattern Recognition Problems Suitable for Machine Learning
  • Supervised vs Unsupervised Learnings
  • Types of Machine Learning
  • Machine Learning Techniques
  • R Packages for Machine Learning

Topic 2 Regression

  • What is Regression
  • Applications of Regression
  • Least Square Error Minimization
  • Data Pre-processing
  • Bias vs Variance Trade-off
  • Regression Methods with Regularization
  • Logistic Regression

Topic 3 Classification

  • What is Classification
  • Applications of Classification
  • Classification Algorithms
  • Confusion Matrix
  • Classification Performance Evaluation

Topic 4 Clustering

  • What is Clustering
  • Applications of Clustering
  • Distance Measure
  • Clustering Algorithms
  • Clustering Performance Evaluation
  • Anomaly Detection Problem

Topic 5 Principal Component Analysis

  • • Principal Component Analysis (PCA) and Dimension Reduction
  • • Applications of PCA
  • • PCA Workflow

Topic 6 Deep Learning

  • What is Neural Network
  • Activation Functions
  • Loss Function Minimization
  • Gradient Descent Algorithms and Learning Rate
  • Deep Neural Network for Visual Recognition
  • Improve Visual Recognition with Convolutional Neural Network
  • The Future of AI
  • AI Ethics

Mode of Assessment

  • Written Assessment (Q&A)
  • Practical Performance