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Lectures -- 2 per week Time Day Place 12:30 - 1:20 Mon Arun - 401 11:30 - 12:20 Wed Arun - 401 Seminar
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6. Assessment 3rd years: All coursework
Masters students: 50% coursework, 50 % exam (start of next term)
Coursework is 2 programming projects first is 20% of coursework (details next week) due in week 6, second 80% due week 10.
Coursework dealt with in seminars, some theoretical, some practical matlab sessions (programs can be in any language, but matlab is useful for in-built functions)
This weeks seminar: light maths revision
7. Course Texts 1. Haykin S (1999). Neural networks. Prentice Hall International. Excellent but quite heavily mathematical
2. Bishop C (1995). Neural networks for pattern recognition. Oxford: Clarendon Press (good but a bit statistical, not enough dynamical theory)
3. Pattern Classification, John Wiley, 2001R.O. Duda and P.E. Hart and D.G. Stork
4. Hertz J., Krogh A., and Palmer R.G. Introduction to the theory of neural computation (nice, but somewhat out of date)
8. 5. Pattern Recognition and Neural Networksby Brian D. Ripley. Cambridge University Press. Jan 1996. ISBN 0 521 46086 7.
6. Neural Networks. An Introduction, Springer-Verlag Berlin, 1991 B. Mueller and J. Reinhardt
As its quite a mathematical subject good to find the book that best suits your level
Also for algorithms/mathematical detail see Numerical Recipes, Press et al.
And appendices of Duda, Hart and Stork and Bishop
10. What are biological NNs? UNITs: nerve cells called neurons, many different types and are extremely complex
around 1011 neurons in the brain (depending on counting technique) each with 103 connections
INTERACTIONs: signal is conveyed by action potentials, interactions could be chemical (release or receive neurotransmitters) or electrical at the synapse
STRUCTUREs: feedforward and feedback and self-activation recurrent
13. We now know its not quite that simple Single neurons are highly complex electrochemical devices
Synaptically connected networks are only part of the story
Many forms of interneuron communication now known acting over many different spatial and temporal scales
28. Artificial Neural Networks (ANNs) A network with interactions, an attempt to mimic the brain
UNITs: artificial neuron (linear or nonlinear input-output unit), small numbers, typically less than a few hundred
INTERACTIONs: encoded by weights, how strong a neuron affects others
STRUCTUREs: can be feedforward, feedback or recurrent