F21ML Statistical Machine Learning

Dr Wei WeiDr Abdul-Lateef Haji-Ali

Course co-ordinator(s): Dr Wei Wei (Edinburgh), Dr Abdul-Lateef Haji-Ali (Edinburgh).

Aims:

In this course, students will develop:
• An understanding of the fundamental concepts and techniques used in data mining and machine learning.
• An understanding of the mathematics underpinning data mining and machine learning.
• A critical awareness of the appropriateness of different data mining and machine learning techniques and the relationships between them.
• Familiarity with common applications of data mining and machine learning techniques

Detailed Information

Course Description: Link to Official Course Descriptor.

Pre-requisites: none.

Linked course(s): F21DL Data Mining and Machine Learning (Excluded).

Location: Edinburgh, Malaysia.

Semester: 1.

Syllabus:

Basic Concepts: classification, clustering, supervised and unsupervised learning.
Generative Models: probabilistic graphical models; cluster analysis (including k-means clustering, expectationmaximisation and mixture models); regression analysis.
Discriminative Learning: Instance-based learning and decision tree learning; artificial neural networks (perceptron, multilayer perceptron, back-propagation, deep learning architectures); maximum entropy models; support vector machines; ensemble methods (such as bagging and boosting).

SCQF Level: 11.

Credits: 15.