Computer Engineering MA, Datamining and Machine Learning, 6 credits
Syllabus:
Datateknik AV, Datamining och maskininlärning, 6 hp
Computer Engineering MA, Datamining and Machine Learning, 6 credits
General data
- Code: DT085A
- Subject/Main field: Computer Engineering
- Cycle: Second cycle
- Credits: 6
- Progressive specialization: A1N - Second cycle, has only first-cycle course/s as entry requirements
- Education area: Technology 100%
- Answerable department: Computer and Electrical Engineering
- Approved: 2024-10-15
- Version valid from: 2025-01-20
Aim
The student should develop a basic understanding of current machine learning techniques for mining large quantities of data. The student should develop skills in finding interesting patterns and building prediction models by explorative data analysis using data analysis tools based on R or Python, and preparing input, interpreting output and critically evaluating results. The student should show an ability to apply the skills in a small project in a real-world business or engineering application area such as big data visualization, business intelligence analysis, decision support systems, text/web/sensor/geo data mining, context aware applications, intelligent agents or cognitive radio.
Course objectives
The student should be able to:
- Discuss what real-world applications of data mining that are realistic and ethical
- Mine data using tools or own implementations of algorithms
- Prepare input, interpret output and evaluate results
- Identify influential variables in a multivariate data set
- Discover patterns by association rule mining and evaluate their reliability
- Develop and validate prediction models
- Follow a standard methodological process in reliable problem analysis, modelling and evaluation
- Apply data mining techniques on a small real-world problem
Content
- Application areas of data mining
- Data and knowledge representation (relations, attributes, sparse data, tables, decision trees, rules)
- Bayesian statistics
- Associative and sequential patterns
- Basic algorithms
- Data clustering
- Data categorization
- Data cleaning
- Data visualization
- Association rules
- Data prediction
- Laboratory exercises based on R and/or Python
- Project
Entry requirements
120 credits completed courses including the following:
Computer Engineering BA (AB) including Databases, Modeling and Implementation, 6 credits and a course on computer programmering, 6 credits.
Mathematics BA (A), 30 credits, including Mathematical Statistics, 6 credits.
Selection rules and procedures
The selection process is in accordance with the Higher Education Ordinance and the local order of admission.
Teaching form
The course may be offered as a campus course or as a web-based distance course. The student time commitment is estimated to about 160 hours.
Examination form
L101: Laboratory exercise, 1 Credits
Grade scale: Two-grade scale
P101: Project presentation, 2 Credits
Grade scale: Two-grade scale
T101: Exam, 3 Credits
Grade scale: Seven-grade scale, A-F o Fx
The final grade is based on combined exam and project assessment.
Link to grading criteria: https://www.miun.se/gradingcriteria.
The examiner has the right to offer alternative examination arrangements to students who have been granted the right to special support by Mid Sweden University’s disabilities adviser.
If examination on campus cannot be conducted according to decision by the vice-chancellor, or whom he delegated the right to, the following applies: [Written Exam T101], will be replaced with two parts, online examination and follow-up. Within three weeks of the online examination, a selection of students will be contacted and asked questions regarding the examination. The follow-up consists of questions concerning the execution of the on-line exam and the answers that the student have submitted.
Examination restrictions
Students registered on this version of the syllabus have the right to be examined three times within 1 year according to specified examination forms. After that, the examination form applies according to the most recent version of the syllabus.
Grading system
Seven-grade scale, A-F o Fx
Course reading
Required literature
**Author:**Witten, Frank, Hall
**Title:**Datamining - Pratical Machine Learning Tolls and Techinques
**Edition:**Third edition 2011 or later
**Journal:**Elsivier
Reference literature
**Author:**Ganguly et al
**Title:**Knowledge discovery from sensor data
**Edition:**2009 or later