THE UNIVERSITY of EDINBURGH

DEGREE REGULATIONS & PROGRAMMES OF STUDY 2006/2007
- ARCHIVE for reference only
THIS PAGE IS OUT OF DATE

University Homepage
DRPS Homepage
DRPS Search
DRPS Contact
Home : College of Science and Engineering : School of Informatics (Schedule O) : Bioinformatics

Learning from Data (Level 10) (U01949)

? Credit Points : 10  ? SCQF Level : 10  ? Acronym : INF-4-LFD

Since the early days of AI, researchers have been interested in making computers learn, rather than simply programming them to do tasks. This is the field of machine learning. The main area that will be discussed is supervised learning, which is concerned with learning to predict an output, given inputs. For example, we might wish to classify a handwritten digit as one of the numbers 0 through 9, given an input image of the digit. We will compare and contrast different algorithms for supervised learning tasks. One of the key issues is that of generalization, i.e. how good our performance will be on new input patterns. A second area of study is unsupervised learning, where we wish to discover the structure in a set of patterns; there is no output "teacher signal".

The field of learning from data is of increasing importance, given the large volume of data that can now be collected in many different domains, ranging from time recordings of multiple neurons from regions of the brain, to point-of-sale information from supermarkets; the task is to make sense of this data by understanding its structure and using it to make predictions.

The primary aim of the course is to provide you with a set of practical tools that you can apply to solve real-world problems in machine learning, coupled with an appropriate, principled approach to formulating a solution.

Entry Requirements

? Pre-requisites : Successful completion of Year 3 of an Informatics Single or Combined Honours Degree, or equivalent by permission of the School. Familiarity with elementary mathematics, including algebra and calculus is essential. A reasonable knowledge of computational, logical, geometric and set-theoretic concepts is assumed. Knowledge of vectors and matrices, together with a basic grasp of probability and partial differentiation, is strongly recommended.

? Prohibited combinations : Learning from Data (Level 11)

Variants

? This course has variants for part year visiting students, as follows

Subject Areas

Delivery Information

? Normal year taken : 4th year

? Delivery Period : Semester 1 (Blocks 1-2)

? Contact Teaching Time : 3 hour(s) per week for 10 weeks

First Class Information

Date Start End Room Area Additional Information
21/09/2006 17:10 18:00 Room G.11, William Robertson Building Central

All of the following classes

Type Day Start End Area
Lecture Monday 17:10 18:00 Central
Lecture Thursday 17:10 18:00 Central

Summary of Intended Learning Outcomes

This course involves some implementation work using MATLAB, and contains also significant theoretical work involving areas of mathematics other than logic. The course details the specific applications of various basic mathematical techniques to areas of pattern recognition and processing, the aim being that at the end of the course, participants should have a good understanding and ability to use these techniques in practice. The course aims to foster a systematic approach to experiments.

A fairly deep understanding of machine learning, its aims and limitations, from a viewpoint of modelling. Students will learn how to approach a problem and assess from a variety of methods an appropriate solution.

A set of practical methods, each coupled with an algorithm in MATLAB, will enable the student to be able to program solutions to real world machine learning problems, using the toolbox of practial methods presented in the lectures.

A basic understanding of how mathematics can be applied to solving real world problems. A good understanding of assessing scientific hypotheses. MATLAB programming.

Assessment Information

Written Examination 80%
Assessed Assignments 20%

Exam times

Diet Diet Month Paper Code Paper Name Length
1ST May - - 2 hour(s)

Contact and Further Information

The Course Secretary should be the first point of contact for all enquiries.

Course Secretary

Mr Neil McGillivray
Tel : (0131 6)50 2701
Email : Neil.McGillivray@ed.ac.uk

Course Organiser

Dr Kyriakos Kalorkoti
Tel : (0131 6)50 5149
Email : kk@inf.ed.ac.uk

Course Website : http://www.inf.ed.ac.uk/teaching/courses/

School Website : http://www.informatics.ed.ac.uk/

College Website : http://www.scieng.ed.ac.uk/

Navigation
Help & Information
Home
Introduction
Glossary
Search
Regulations
Regulations
Degree Programmes
Introduction
Browse DPTs
Courses
Introduction
Humanities and Social Science
Science and Engineering
Medicine and Veterinary Medicine
Other Information
Prospectuses
Important Information
Timetab
 
copyright 2006 The University of Edinburgh