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Data Mining and Analysis

MSc Module DMA Semester 2
Edited: Dr D Chen 2019/20
Page 3 of 6
Data Mining and Analysis 2019/20
Assessed Coursework Specification: Data Mining Project
Overview
This coursework assignment involves analysing a real-world dataset and
providing meaningful insights into it in order to address some business
concerns and problems identified. The objective of this assignment is to
evaluate your understanding of the basic theory, concepts, and various
algorithms in data mining, and assess your skills of applying SAS® Enterprise
Miner and SAS® Enterprise Guide to carry out a data mining project.
This team-based assignment is to be completed in groups of two. A number of
real-world datasets for this project can be downloaded from the module Moodle
site, and your team will be assigned a dataset by the module lecturer/tutor.
Your role within your team is two-fold: working as a business client and as a
data analyst. As a business client, you are expected to raise meaningful
business concerns/problems in relation to the dataset you have been given.
And as a data analyst, you are required to follow a proper data mining
methodology and apply various techniques covered in lectures to analyse your
data in order to address the business concerns and problems you have raised.
Constant discussion among team members is essential.
There are two project deliverables: a written report and a presentation (worth
70% and 10% of the total module coursework marks, respectively). Your team
is expected to submit a written report on the project and to give an in-class oral
presentation. The mark awarded for this assignment will be a team mark. The
report will be due in week 12 at tutorial (Wednesday 6th May 2020), and you
will have 10 minutes for the presentation followed by questions from the
audience.
Your module tutor will check your project progress on weekly basis. In particular
in weeks 7 and 10, you should have a detailed discussion with your module
tutor regarding your data mining project.
Tasks
You are required to undertake the following tasks:
1. Problem Identification
• Read the data description file to learn the basic characteristics of the
dataset including the data source, the nature of the data, what it is about,
the business context of the data, the total number of attributes
(dimensions), the data type of each attribute, the value range/mode,
skewness, and kurtosis of each attribute, the total number of instances,
and simple data exploration with plotting, etc.
MSc Module DMA Semester 2
Edited: Dr D Chen 2019/20
Page 4 of 6
• Identify and understand the business problem of interest with regard to
the data.
• Identify what data mining tasks need to be performed in order to address
the business problem concerned.
2. Data Preparation
• Transform the dataset into the proper format to be used by SAS®
Enterprise Miner in order to carry out the required data mining tasks.
• Choose appropriate methods for data pre-processing, including
detecting and dealing with missing values, outliers and imbalanced
attribute values, changing data type, and conducting proper
dimensionality reduction, feature extraction, data transformation, data
partition, and normalisation, etc. where appropriate.
3. Model Construction
• With the pre-processed dataset undertake the data mining tasks you
have identified. You are required to apply at least two different
algorithms for both predictive and descriptive modelling. For
predictive modelling, for example, you may use decision trees and
artificial neural networks, or decision trees and k-nearest-neighbour
based algorithm, etc. For descriptive modelling, you may choose to use
the k-means clustering and histograms/bar charts/Person’s correlation
coefficient, etc.
• In order to build the most appropriate and accurate models and identify
meaningful hidden patterns, different settings for the relevant model
parameters should be considered for each of the selected algorithms
and approaches.
4. Model Interpretation and Evaluation
• Interpret the descriptive models created.
• Compare the performances of different predictive models in terms of
accuracy, error rate, generalisation ability (over-fitting), simplicity and
cost, etc. where appropriate.
• Discuss the meaningfulness and usefulness of the models built and the
patterns revealed, and how the models and patterns can be used to
address the original business concerns. This includes both descriptive
and predictive models.
Final Report
Your final report should be well-formatted as a formal report consisting of
Cover page, Table of Contents, Abstract and References. The report should be
submitted electronically for non-originality check via Turnitin.
MSc Module DMA Semester 2 Edited: Dr D Chen
2019/20
Page 5 of 6
Data Mining Project Marking Criteria Guidelines

Element (20% Each) 0-4 Marks 4-5 Marks 5-6 Marks 6-7 Marks 7-10 Marks
Business understanding
and data understanding
Inadequate analysis of
business concerns and data
mining tasks. Only simple
initial data exploration
performed. Lack clarity and
relevance.
Adequate analysis of the key
business concerns and data
mining tasks. Limited initial
data exploration. Probably
lack some relevance.
Inappropriate means.
Clear analysis of business
concerns and relevant data
mining tasks. Probably lack
some in-depth view.
Essential initial data
exploration performed.
Clear analysis of business
concerns and relevant data
mining tasks to a certain
depth. Sensible initial data
exploration performed with
appropriate means.
Thorough and clear analysis
of business concerns and
relevant data mining tasks.
Excellent initial data
exploration with effective
means.
Data pre-processing Inadequate view of data
quality issues. Inappropriate
approaches adopted. Poor
use of SAS Enterprise
Guide/Miner.
Limited consideration of
data quality issues. Some
appropriate approaches
adopted with limited
understanding and limited
coverage. Limited use of
SAS Enterprise
Guide/Miner.
Reasonable consideration of
data quality issues.
Appropriate approaches
adopted with reasonable
understanding and most of
the main issues covered.
Good use of SAS Enterprise
Guide/Miner.
Good consideration of data
quality issues. Appropriate
approaches adopted with
clear understanding and
every aspect covered. Good
and flexible use of SAS
Enterprise Guide/Miner.
Thorough consideration of
data quality issues.
Appropriate approaches
adopted with outstanding
understanding. Excellent use
of SAS Enterprise
Guide/Miner.
Model construction Inappropriate algorithms
employed. Poor use of SAS
Enterprise Miner.
Some appropriate algorithms
employed with limited
understanding. Limited use
of SAS Enterprise Miner.
Appropriate algorithms
employed with reasonable
understanding. Good use of
SAS Enterprise Miner.
Appropriate algorithms
employed with clear
understanding. Good and
flexible use of SAS
Enterprise Miner.
Appropriate algorithms
employed with outstanding
understanding. Modelling
with excellent working
knowledge of SAS
Enterprise Miner.
Model evaluation Poor model interpretation
and comparison with regards
to business concerns. No or
little meaningful
models/patterns provided.
Weak model interpretation
and comparison with regards
to business concerns. Very
limited meaningfulness.
Probably lack some clarity.
Basic model interpretation
and comparison with regards
to business concerns.
Reasonable models/patterns
created.
Clear model interpretation
and comparison with regards
to business concerns.
Significantly meaningful
models/patterns created.
Thorough and clear model
interpretation and
comparison with regards to
business concerns. Excellent
meaningful models/patterns
created.
Report Inadequate review of project
findings. Lack of clarity and
accuracy. Poor presentation.
Adequate review of project
findings. Probably lack of
some clarity. Acceptable
presentation.
Clear review and summary
of project findings. Good
presentation with proper
structure and layout.
Clear and concise summary
of project findings.
Excellent presentation. Clear
structure and layout.
Exceptionally clear and
concise summary of project
findings. May raise
questions for future
research. Outstanding
presentation. Clear structure
and layout.

MSc Module DMA Semester 2
Edited: Dr D Chen 2019/20
Page 6 of 6
Oral Presentation
The oral presentation will be assessed based on the following four criteria:
• Content
• Structure
• Delivery
• Audio-visual aids
You have ten minutes for the presentation followed by questions from the
audience.

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