WIWMC092 – Data mining and business analytics

Module
Data mining and business analytics
Data mining and business analytics
Module number
WIWMC092
Version: 1
Faculty
Business Administration
Level
Master
Duration
1 Semester
Semester
Winter semester
Module supervisor

Prof. Dr. Christian Brauweiler
Christian.Brauweiler(at)fh-zwickau.de

Lecturer(s)
Course language(s)

English
in "Data mining and business analytics"

ECTS credits

5.00 credits

Workload

150 hours

Courses

5.00 SCH (2.00 SCH Seminar | 2.00 SCH Internship | 1.00 SCH Lecture with integrated exercise / seminar-lecture)

Self-study time

75.00 hours

Pre-examination(s)
None
Examination(s)
No information
Media type
No information
Instruction content/structure
  • To define the task of forecasting a time series
  • Describe the main components of the time series
  • Remember the classification of ARIMA models
  • Build a forecast of average wages
  • Discuss in which tasks the analysis of user behavior is used
  • Classify the types of classroom metrics
  • To illustrate the application of user data analysis in the task of outflow forecasting
  • Describe the main tasks of text processing
  • Describe the stages of tokenization and normalization of the text
  • Explain ways to generate features based on counters and TF-IDF
  • Analyze the applicability of various machine learning models to text data
  • Describe the word2vec approach based on context analysis
  • Describe the operation scheme of recurrent neural networks
  • To illustrate the material by the example of the task of analyzing the tonality of the text
  • Show approaches to annotating texts
Qualification objectives

We will analyze applied tasks from various fields of data analysis: text analysis and information search, collaborative filtering and recommendation systems, business analytics, time series forecasting. Using their example, you will learn how to extract features from heterogeneous data, what problems arise and how to solve them. You will learn how to reduce the customer's task to a formal statement of the machine learning problem and understand how to check the quality of the constructed model on historical data and in an online experiment. On each task, we will study the pros and cons of the machine learning algorithms passed.

Special admission requirements

Prerequisite(s) for examination admission:

  • At least 60% of homework exercises solved
  • all intermediate tests have been passed
Recommended prerequisites
  • Python programming
  • linear algebra, probability theory
Continuation options
No information
Literature
Notes

This module will be studied at KAFU, Öskemen, Kazakhstan as an elective module in the 3rd semester. Lecturer: Ismukhamedova Aigerim

Breakdown of non-presence time:

Self-study (%): 40

Project work (%): 30

Lab (%): 30

Assignment to curriculum
No information