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Previous Student Evaluations of this unit

If you wish to view how previous students rated this unit, please go to
https://emuapps.monash.edu.au/unitevaluations/index.jsp

Required Resources

Netica (free)

Weka Data Mining Toolkit (free)

Web access

Unit Schedule

Week Date* Activities Assessment
0 21/02/11   No formal assessment or activities are undertaken in week 0
1 28/02/11 Introduction  
2 07/03/11 Problem solving as search  
3 14/03/11 Knowledge representation  
4 21/03/11 Planning Assignment 1 due 25 March 2011
5 28/03/11 Natural language processing  
6 04/04/11 Soft computing  
7 11/04/11 Bayesian networks  
8 18/04/11 Intelligent decision support Assignment 2 due 21 April 2011
Mid semester break
9 02/05/11 Supervised machine learning  
10 09/05/11 Unsupervised machine learning  
11 16/05/11 Recommender systems  
12 23/05/11 Artificial Life Assignment 3 due 27 May 2011
  30/05/11 SWOT VAC No formal assessment is undertaken SWOT VAC

*Please note that these dates may only apply to Australian campuses of Monash University. Off-shore students need to check the dates with their unit leader.

Assessment Policy

To pass a unit which includes an examination as part of the assessment a student must obtain:

  • 40% or more in the unit's examination, and
  • 40% or more in the unit's total non-examination assessment, and
  • an overall unit mark of 50% or more.

If a student does not achieve 40% or more in the unit examination or the unit non-examination total assessment, and the total mark for the unit is greater than 50% then a mark of no greater than 49-N will be recorded for the unit

Assessment Tasks

Participation

  • Assessment task 1
    Title:
    Assignment 1 - Knowledge Representation and Planning
    Description:
    A problem solving exercise on knowledge representation and planning.
    Weighting:
    10%
    Criteria for assessment:

    Will be available on Moodle.

    Due date:
    25 March 2011
  • Assessment task 2
    Title:
    Assignment 2 - Bayesian Networks and Soft Computing
    Description:
    A problem solving exercise on Bayesian networks and soft computing.
    Weighting:
    10%
    Criteria for assessment:

    Will be available on Moodle.

    Due date:
    21 April 2011
  • Assessment task 3
    Title:
    Assignment 3 - Machine Learning
    Description:
    A problem solving exercise on machine learning.
    Weighting:
    10%
    Criteria for assessment:

    Will be available on Moodle.

    Due date:
    27 May 2011

Examinations

  • Examination 1
    Weighting:
    70%
    Length:
    3 hours
    Type (open/closed book):
    Closed book
    Electronic devices allowed in the exam:
    None

Assignment submission

Assignment coversheets are available via "Student Forms" on the Faculty website: http://www.infotech.monash.edu.au/resources/student/forms/
You MUST submit a completed coversheet with all assignments, ensuring that the plagiarism declaration section is signed.

Extensions and penalties

Returning assignments

Policies

Monash has educational policies, procedures and guidelines, which are designed to ensure that staff and students are aware of the University's academic standards, and to provide advice on how they might uphold them. You can find Monash's Education Policies at:
http://policy.monash.edu.au/policy-bank/academic/education/index.html

Key educational policies include:

Student services

The University provides many different kinds of support services for you. Contact your tutor if you need advice and see the range of services available at www.monash.edu.au/students The Monash University Library provides a range of services and resources that enable you to save time and be more effective in your learning and research. Go to http://www.lib.monash.edu.au or the library tab in my.monash portal for more information. Students who have a disability or medical condition are welcome to contact the Disability Liaison Unit to discuss academic support services. Disability Liaison Officers (DLOs) visit all Victorian campuses on a regular basis

Reading List

Prescribed text:

Russell, S. and Norvig, P. (2010). Artificial Intelligence -- A Modern Approach, 3rd ed. Prentice Hall.

Recommended texts:

Witten, I and Frank, E. (2005). Data Mining -- Practical Machine Learning Tools and Techniques, 3rd ed. Elsevier.
Korb, K and Nicholson, A. (2010). Bayesian Artificial Intelligence, 2nd ed. CRC Press.

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