[edit]
Overview
[edit]
COM4509/COM6509 Machine Learning and Adaptive Intelligence 2015-16
Course Overview
This unit aims to provide an understanding of the fundamental technologies underlying modern artificial intelligence. In particular it will provide foundational understanding of probability and statistical modelling, supervised learning for classification and regression, and unsupervised learning for data exploration. The teaching consists of two hours of lectures and one of lab classes each week. The lectures are on Tuesdays, the labs on Fridays. The teaching schedule and venue for each week are given below:
Lectures
-
Week 1 on Sep 29, 2015 in SB LT-2. Introduction to machine learning and a review of probability theory.
-
Week 2 9:00 on Oct 6, 2015 in SB-LT2. Objective functions, gradient descent and matrix factorization.
-
Week 3 9:00 on Oct 13, 2015 in SB-LT2. Linear algebra and regression.
-
Week 4 9:00 on Oct 20, 2015 in SB LT-2. Basis functions.
-
Week 5 9:00 on Oct 27, 2015 in SB LT-2. Generalisation.
-
Week 6 9:00 on Nov 3, 2015 in SB LT-2. Bayesian regression.
-
Week 7 on Nov 10, 2015. Reading Week.
-
Week 8 9:00 on Nov 17, 2015 in SB LT-2. Unsupervised Learning.
-
Week 9 9:00 on Nov 24, 2015 in SB LT-2. Naive Bayes.
-
Week 10 9:00 on Dec 1, 2015 in SB LT-2. Logistic Regression and Generalized Linear Models.
-
Week 11 on Dec 8, 2015. Reading Week.
-
Week 12 9:00 on Dec 15, 2015 in SB LT-2. Gaussian processes.
Assessment
The unit will be assessed by submitted practical assignments (7 labs at 10% each leading to 70%) and by exam (30%).
Past Papers
Information on past papers is available.
subscribe via RSS