F20DX Data Mining and Machine Learning (GA)

Dr Diana Bental

Course co-ordinator(s): Dr Diana Bental (Edinburgh).

Aims:

This is an Industrial Project course that consists of two parts: Work-based Learning (WBL) and an Industrial Project (IP).

The WBL part of the course will deliver work-based blended on-line learning materials, with the following aims:

  • To introduce students to the fundamental concepts and techniques used in data mining and machine learning.
  • To develop a critical awareness of the appropriateness of different data mining and machine learning techniques.
  • To provide familiarity with common applications of data mining and machine learning techniques.

The Industrial Project part of the course will require the student to implement an industrial project, embedded in and contextualised for the host company, focussing on the practical machine learning techniques learned in the WBL part of the course.

Detailed Information

Course Description: Link to Official Course Descriptor.

Pre-requisites: none.

Location: Edinburgh.

Semester: AY.

Syllabus:

Data Mining: Basic concepts (datasets, dealing with missing data, classification, statistics), regression analysis, cluster analysis (k-means clustering, hierarchical clustering), unsupervised learning, self-organising maps, naïve Bayes, k-nearest-neighbour methods

Machine Learning: decision tree learning, ensemble methods (bagging and boosting, random forests), deep learning architectures, support vector machines

SCQF Level: 10.

Credits: 15.