Course Outline
Foundations of Machine Learning
- Introduction to Machine Learning concepts and workflows
 - Supervised vs. unsupervised learning
 - Evaluating machine learning models: metrics and techniques
 
Bayesian Methods
- Naive Bayes and multinomial models
 - Bayesian categorical data analysis
 - Bayesian graphical models
 
Regression Techniques
- Linear regression
 - Logistic regression
 - Generalized Linear Models (GLM)
 - Mixed models and additive models
 
Dimensionality Reduction
- Principal Component Analysis (PCA)
 - Factor Analysis (FA)
 - Independent Component Analysis (ICA)
 
Classification Methods
- K-Nearest Neighbors (KNN)
 - Support Vector Machines (SVM) for regression and classification
 - Boosting and ensemble models
 
Neural Networks
- Introduction to neural networks
 - Applications of deep learning in classification and regression
 - Training and tuning neural networks
 
Advanced Algorithms and Models
- Hidden Markov Models (HMM)
 - State Space Models
 - EM Algorithm
 
Clustering Techniques
- Introduction to clustering and unsupervised learning
 - Popular clustering algorithms: K-Means, Hierarchical Clustering
 - Use cases and practical applications of clustering
 
Summary and Next Steps
Requirements
- Basic understanding of statistics and data analysis
 - Programming experience in R, Python, or other relevant programming languages
 
Audience
- Data scientists
 - Statisticians
 
Testimonials (5)
The variation with exercise and showing.
Ida Sjoberg - Swedish National Debt Office
Course - Econometrics: Eviews and Risk Simulator
it was informative and useful
Brenton - Lotterywest
Course - Building Web Applications in R with Shiny
Many examples and exercises related to the topic of the training.
Tomasz - Ministerstwo Zdrowia
Course - Advanced R Programming
the trainer had patience, and was eager to make sure we all understood the topics, the classes were fun to attend
Mamonyane Taoana - Road Safety Department
Course - Statistical Analysis using SPSS
The pace was just right and the relaxed atmosphere made candidates feel at ease to ask questions.