Zur Modellierung und Klassifizierung von Kompetenzen in der
grundlegenden Programmierausbildung anhand der Anderson Krathwohl Taxonomie
- URL: http://arxiv.org/abs/2006.16922v1
- Date: Wed, 24 Jun 2020 17:07:12 GMT
- Title: Zur Modellierung und Klassifizierung von Kompetenzen in der
grundlegenden Programmierausbildung anhand der Anderson Krathwohl Taxonomie
- Authors: Natalie Kiesler
- Abstract summary: This research paper focusses on the competences expected from computer science novices in the domain of basic programming.
By means of a qualitative content analysis of current learning objectives at German universities and the perspective of university teachers, basic programming competencies are identified.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: This research paper focusses on the competences expected from computer
science novices in the domain of basic programming and how they can be
classified. By means of a qualitative content analysis of current learning
objectives at German universities and the perspective of university teachers,
basic programming competencies are identified. Since the competency model
proposed by the German Society of Computer Science (GI) reveals several
deficits, competencies are classified along the Anderson Krathwohl Taxonomy
(AKT) of learning, teaching and assessing. As a result, dimensions and subtypes
of the AKT are revised towards a model specific to computer science aiming at
the classification of programming competencies according to their cognitive
complexity and knowledge dimension. The adaptation of the educational model can
thereby help standardize curricula, and develop assessments and corresponding
items in the future.
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