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[an error occurred while processing this directive]Modern methods of discovering patterns in large-scale databases are introduced, including classification, clustering and association rules analysis. These are contrasted with more traditional methods of finding information from data, such as data queries. Data pre-processing methods for dealing with noisy and missing data and with dimensionality reduction are reviewed. Hands-on case studies in building data mining models are performed using a popular software package.
2 hrs lectures/wk, 2 hrs laboratories/wk
Students will be expected to spend a total of 12 hours per week during semester on this unit as follows:
For on-campus students:
You will need to allocate up to 5 hours per week in some weeks, for use of a computer, including time for newsgroups/discussion groups.
Off-campus students generally do not attend lecture and tutorial sessions, however, you should plan to spend equivalent time working through the relevant resources and participating in discussion groups each week.
CSE5230, FIT5024
Sound fundamental knowledge in maths and statistics. Basic database and computer programming knowledge.
Grace Rumantir
Contact hours: Thursday 2-4pm (in H7.08)
Minh Le
Contact hours: Friday 2-3pm (in H7.87)
At the completion of this unit students will:
Examination (3 hours): 60%; In-semester assessment: 40%
Assessment Task | Value | Due Date |
---|---|---|
Unit Test | 20% | 15 September 2011 |
Group Assignment | 20% | 13 October 2011 |
Examination 1 | 60% | To be advised |
Monash is committed to excellence in education and regularly seeks feedback from students, employers and staff. One of the key formal ways students have to provide feedback is through SETU, Student Evaluation of Teacher and Unit. The University's student evaluation policy requires that every unit is evaluated each year. Students are strongly encouraged to complete the surveys. The feedback is anonymous and provides the Faculty with evidence of aspects that students are satisfied and areas for improvement.
For more information on Monash's educational strategy, and on student evaluations, see:
http://www.monash.edu.au/about/monash-directions/directions.html
http://www.policy.monash.edu/policy-bank/academic/education/quality/student-evaluation-policy.html
If you wish to view how previous students rated this unit, please go to
https://emuapps.monash.edu.au/unitevaluations/index.jsp
Week | Activities | Assessment |
---|---|---|
0 | No formal assessment or activities are undertaken in week 0 | |
1 | Unit Adminstration and Introduction to Data Mining | |
2 | Model Building | |
3 | Model Evaluation | |
4 | Data Preprocessing | |
5 | Data Preprocessing | |
6 | Classification | |
7 | Clustering | |
8 | Unit Test (in lecture time slot) | Assessment Task 1: Unit Test |
9 | Association Rules Mining (1) | Assignment 2: Stage 1 Interview (in tutorial time slot) |
10 | Association Rules Mining (2) | |
11 | Web Mining | Assignment 2: Stage 2 Submission |
12 | Data Mining and Information Visualization | |
SWOT VAC | No formal assessment is undertaken in SWOT VAC | |
Examination period | LINK to Assessment Policy: http://policy.monash.edu.au/policy-bank/ academic/education/assessment/ assessment-in-coursework-policy.html |
*Unit Schedule details will be maintained and communicated to you via your MUSO (Blackboard or Moodle) learning system.
To pass a unit which includes an examination as part of the assessment a student must obtain:
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
The assignment will be in paired groups.
Stage 1: Group formation and understanding the assessment tasks - non assessable. All group members will receive the same marks. If there are issues/concerns about individual contributions within a group, a peer evaluation form will be used.
Stage 2: Submission - 20%.
Students will be assessed on:
- The degree to which the submission meet the assignment specification
- The quality of the data preprocessing and the design of experiments
- How well the experiments are conducted and summarised
- How well the results of the experiments are analysed and documented
Further assessment criteria and marking sheet will be made available on the unit Moodle site.
It is a University requirement (http://www.policy.monash.edu/policy-bank/academic/education/conduct/plagiarism-procedures.html) for students to submit an assignment coversheet for each assessment item. Faculty Assignment coversheets can be found at http://www.infotech.monash.edu.au/resources/student/forms/. Please check with your Lecturer on the submission method for your assignment coversheet (e.g. attach a file to the online assignment submission, hand-in a hard copy, or use an online quiz).
Submission must be made by the due date otherwise penalties will be enforced.
You must negotiate any extensions formally with your campus unit leader via the in-semester special consideration process: http://www.infotech.monash.edu.au/resources/student/equity/special-consideration.html.
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:
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