Artificial intelligence
4 points * Two 1-hour lectures per week * Second semester * Clayton * Prerequisites: CSC2030, CSC2040 and either CSC2940 or CSC3940 * Prohibitions: CSC2091, GCO3815 RDT3691
Objectives On completion of the subject students will have a working knowledge of basic search techniques, knowledge representation and reasoning mechanisms, and planning systems; be able to analyse problems and determine which artificial intelligence techniques are applicable.
Synopsis Topics include history and philosophy of artificial intelligence; problem solving and search (heuristic search, iterative improvement, game playing); knowledge representation and reasoning (extension of material on propositional and first-order logic for artificial intelligence applications, situation calculus, planning, frames and semantic networks); expert systems overview (production systems, certainty factors); machine learning (decision trees, neural networks, genetic algorithms).
Assessment Examination (2 hours): 70% * Assignments: 30%
Recommended texts
Russell S and Norvig P Artificial intelligence: A modern approach Prentice-Hall, 1994.
Published by Monash University, Clayton, Victoria
3168 Copyright © Monash University 1996 - All Rights Reserved - Caution Authorised by the Academic Registrar December 1996 |