Skip to content

Machine learning and adaptive intelligence module for 2015.

Notifications You must be signed in to change notification settings

lawrennd/mlai2015

Repository files navigation

Machine Learning and Adaptive Intelligence

Neil D. Lawrence

For lab classes from 2013-14 please see here

Welcome to the COM4509/6509 Course on "Machine Learning and Adaptive Intelligence". This year the course has undergone a slight shift of focus relative to last year, in particular we will be introducing more emphasis on practical techniques for processing data using the Jupyter Notebook.

The lecture notes will all be given in the form of Jupyter Notebooks and are available below.

  • Week 1 Probability and an Introduction to the Jupyter Notebook, python and Pandas.
  • Week 2 Objective Functions: a simple example with matrix factorisation.
  • Week 3 Linear Algebra and Linear Regression
  • Week 4 Basis Functions
  • Week 5 Reading Week
  • Week 6 Model checking: training, testing and validation
  • Week 7 Bayesian Regression
  • Week 8 Dimensionality Reduction: Latent Variable Modelling
  • Week 9 Probabilistic Classification
  • Week 10 Logistic Regression and Generalised Linear Models
  • Week 11 Reading Week
  • Week 12 Special Topic: Gaussian Processes

ToDo

There are some refinements to the notebook slides required. Particularly for Week 8 (unsupervised learning) 9 and 10.

About

Machine learning and adaptive intelligence module for 2015.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published