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A course mapper by Monash Association of Coding (MAC)
Statistical machine learning
ETC3555
Synopsis
This unit covers the methods and practice of statistical machine learning for modern data analysis problems. You will take a deep look at the procedure of learning from data with particular focus placed on how to effectively learn model parameters and methods to guard against overfitting. Topics covered will include stochastic gradient descent, deep neural networks with dropout, convolutional neural networks for image recognition, and text mining and generation with recurrent neural networks. All computing will be conducted using open source software. Introductory machine learning methods such as linear models, decision trees, random forests, and hierarchical clustering, are assumed.
Sourced from the Monash Handbook 2026.
Quick facts
- Credit points
- 6
- Level
- 3
- Audience
- Undergraduate
- Type
- Coursework
- School
- Faculty of Business and Economics
- Faculty
- Department of Econometrics and Business Statistics
- Handbook year
- 2026
Prerequisites (3)
What it unlocks
Nothing in the visible graph depends on this unit.
Offerings (1)
- Second semesterClayton · BLENDED
Listed in 5 areas of study
- Actuarial analyticsCore units
- Business analytics for economicsSpecified discipline studies
- Business analyticsAdditional business analytics units
- Business analyticsAdditional business analytics units
- Mathematical economics and econometricsSpecified discipline studies