INN358 Machine Learning with Discrete Event Stream Data
Showing course contents for the educational year 2022 - 2023 .
Course responsible: Daumantas Bloznelis
Teachers: Joachim Scholderer
ECTS credits: 5
Faculty: School of Economics and Business
Teaching language: EN
Teaching exam periods:
This course will be offered first time in the autumn of 2022. This course starts in the Autumn parallel. This course has teaching/evaluation in the Autumn parallel.
Course frequency: Annually
First time: Study year 2021-2022
Most standard techniques in machine learning are designed for cross-sectional data. Discrete event stream data (e.g., event log data from ERP, CRM and SCM systems) also have a time dimension, which leads to complex dependency structures in the data. In this course, participants will learn advanced modelling and prediction techniques that can handle such data.
- Dependency structures in discrete event stream data
- Pre-processing and feature engineering
- Use of standard machine learning techniques with aggregated event stream data
- Process mining, association rules and link analysis
- Time-to-event models
- Hidden Markov models
- Dynamic Bayesian networks
- Model assessment and selection
- Implementation in Python, SAS and R
Practical work with real cases is an important part of the course. Participants will work in groups on a semester-long case project.
- Understand the dependency structures in discrete event stream data
- Understand the theoretical foundations of modelling and prediction techniques that can handle discrete event stream data
- Be able to perform descriptive analyses of discrete event stream data
- Be able to develop prediction models based on discrete event stream data
- Be able to evaluate models and choose between competing models
- Be able to work in cross-functional project structures
- Be able to contribute constructively in process automation projects
Lectures, exercises with data and software, independent group work. Campus instruction without streaming
Canvas, Microsoft Teams
Tutz, G., & Schmid, M. (2016). Modeling discrete time-to-event data. Cham: Springer.Selected journal articles and book chapters
- INN265 Analysis of business processes
Combined assessment consisting of a midway home exam during the teaching period (weight: 20%) and a 30-hour home exam during the teaching period (weight: 80%). No re-sit examination will be arranged in this course.
Study specialisations where this course is mandatory have priority: business analytics (M-ØA) and business analytics (M-TDV). Students from data science (M-DV and M-TDV), entrepreneurship and innovation (M-EI), industrial economics and technology management (M-IØ) and business administration (M-ØA) who have passed all mandatory and recommended prerequisites for the course.
Reduction of credits:
INN355 (5 ECTS)
Type of course:
- Lectures and case workshops: 20 hours
- Exercises with data and software: 5 hours
- Project assignment: 50 hours
- Self-study/syllabus literature: 50 hours
The course is in English. Incoming students can contact student advisors at the School of Economics and Business (email@example.com) for admission to the course.
External examiner will control the quality of the syllabus, questions for the examination, and principles for the assessment of the examination answers.
Examination details: Combined assessment: Letter grades