Conducted in
terms:
2022/23Z, 2023/24Z
ISCED code: 0314
ECTS credits:
4
Language:
English
Organized by:
Department of Cognitive Science
Social Media and Text Analytics 2401-CS-SMaTA-s2
This course has not yet been described...
Total student workload
(in Polish) Total student workload Contact hours with teacher:
- participation in laboratory - 30 hrs
Self-study hours:
- preparation for lectures - 10 hrs
- preparation for test/ examination- 30 hrs
Altogether: 70 hrs
Learning outcomes - knowledge
(in Polish) W1: The student knows the basic methods used in NPL
W2: The student knows the areas of application of text processing algorithms
W3: The student knows the criteria for selecting text analysis methods
W4: The student knows the text analysis algorithms (text categorization, clustering, topic modeling)
W5: The student identifies social media as source of text data
Learning outcomes - skills
(in Polish) U1: The student is able to use basic text processing tools
U2: The student is able to write a simple program using NLP algorithms
U3: The student is able to choose the appropriate algorithm to solve a given problem
Learning outcomes - social competencies
(in Polish) K1: The student is able to communicate the effects of text processing algorithms
K2: The student is able to argue and interpret the results of the text processing algorithm.
Teaching methods
(in Polish) 1. Observation teaching methods:
- display
2. Expository teaching methods
- participatory lecture
- problem-based lecture
3. Exploratory teaching methods
- practical
- brainstorming
- laboratory
- project work
- presentation of a paper
Prerequisites
(in Polish) 1. Python – basic (including basic libraries and packages: numpy, pandas, matplotlib, scikit-learn)
2. basic knowledge of machine learning
3. basic mathematic knowledge
Course coordinators
Additional information
Additional information (registration calendar, class conductors, localization and schedules of classes), might be available in the USOSweb system: