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Form C4 Version 4.0 (2010/2011) Heriot-Watt University - Course Descriptor Template 1. Course Code F21DL 2. Course Title Data Mining and Machine Learning 5. School Mathematical and Computer Sciences 7. Delivery: Location & Semester Edin SBC Orkney Dubai IDL Collaborative Partner Approved Learning Partner Sem 1 Sem……. Sem……….. Sem…….. Sem…. Name…………………….....Sem..…... Name …………………………………Sem……….. 6. Course Co-ordinator 8. Pre-requisites F29AI AI and Intelligent Agents or basic knowledge of AI concepts and issues 9. Linked Courses (specify if synoptic) 10. Excluded Courses None 11. Replacement Courses Code: 11 4. Credits 15 Dave Corne None 12. Degrees for which this is a core course Date Of Replacement: 13. The course may be delivered to: 3. SCQF Level UG only PG only MSc Artificial Intelligence, MSc Artificial Intelligence with Speech and Multimodal Interaction, MSc Data Science UG & PG 14. Available as an Elective? Yes No 15. 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. 16. 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 1/2 Form C4 Version 4.0 (2010/2011) Heriot-Watt University - Course Descriptor Template 17. Learning Outcomes (HWU Core Skills: Employability and Professional Career Readiness) Subject Mastery Understanding, Knowledge and Cognitive Skills ♦ ♦ ♦ Personal Abilities Scholarship, Enquiry and Research (Research-Informed Learning) Extensive understanding of the data mining process. Detailed understanding of the mathematical basis of machine learning. Critical awareness of the appropriateness and performance of different techniques. Industrial, Commercial & Professional Practice ♦ ♦ ♦ ♦ Autonomy, Accountability & Working with Others Communication, Numeracy & ICT Rational problem identification and definition. Critical analysis and solution selection. Thorough and robust preparation of testing strategies. Reflection on system development and performance. 18. Assessment Methods Method 19. Re-assessment Methods Duration of Exam Weighting (%) Synoptic courses? Method (if applicable) Coursework Duration of Exam Diet(s) (if applicable) 100 Coursework 20. Date and Version Date of Proposal March 2014 Date of Approval by School Committee March 2014 Date of Implementation September 2014 Version Number 2/2 1.0