Knowledge Space Theory
The original aim of knowledge space theory was to develop a framework for a non-quanitative assessment, i.e. an assessment
that delivers not only some score but more concrete items about what exactly a learner knows and what not. In knowledge space
theory, a domain of knowledge is described by a set Q of test problems or items.
A learner is desribed by his/her knowledge state, i.e. the subset K ⊆ Q of items s/he is able to solve. A set of knowledge states is
called a
knowledge structure if it contains the empty set and the full set Q of items. The set of possible knowledge states
can be delimited by prerequisite relationships between the items. Such a knowledge structure is called a knowledge space.
Learning Paths
A
chain in a knowledge structure is a subset of knowledge states such that for every knowledge states K, L in the chain either
K ⊆ L or L ⊆ K holds. A
learning path is a maximal chain. A learning path always contains ∅ and Q.
Further Reading
- Falmagne, J.-C., Koppen, M., Villano, M., Doignon, J.-P., & Johannesen, L. (1990). Introduction to knowledge spaces:
How to build, test and search them. Psychological Review, 97, 201-224
- Heller, J., Hockemeyer, C., & Stefanutti, L. (2017). Knowledge Space Theory.
Moodle course.
Example Spaces
As example data, knowledge spaces provided by the R package pks (Heller & Wickelmaier, 2013;
Wickelmaier et al., 2016) are used. Concretely, the following spaces are used:
- Chess
- Held, Schrepp and Fries (1995) derive several knowledge structures for the representation of 92 responses
to 16 chess problems. See Schrepp, Held and Albert (1999) for a detailed description of these problems. This app uses
the projection of their DST1-structure reduced to the first five items.
- Density
- Taagepera et al. (1997) applied knowledge space theory to specific science problems. The
density test was administered to 2060 students, a sub structure of five items is included here.
- Matter
- Taagepera et al. (1997) applied knowledge space theory to specific science problems. The conservation
of matter test was administered to 1620 students, a sub structure of five items is included here.
- Doignon & Falmagne
- Fictitious data set from Doignon and Falmagne (1999, chap. 7).
References
Doignon, J.-P., & Falmagne, J.-C. (1999).
Knowledge spaces. Berlin: Springer.
Held, T., Schrepp, M., & Fries, S. (1995). Methoden zur Bestimmung von Wissensstrukturen — Eine Vergleichsstudie [Methods for determining knowledge structures — a comparing study]. Zeitschrift für Experimentelle Psychologie, XLII (2) ,205–236.
Heller, J. & Wickelmaier, F. (2013). Minimum discrepancy estimation in probabilistic knowledge structures.
Electronic Notes in Discrete Mathematics, 42, 49-56.
Schrepp, M., Held, T., & Albert, D. (1999). Component-based construction of surmise relations for chess problems.
In D. Albert & J. Lukas (Eds.), Knowledge spaces: Theories, empirical research, and applications (pp. 41--66).
Mahwah, NJ: Erlbaum.
Taagepera, M., Potter, F., Miller, G.E., & Lakshminarayan, K. (1997). Mapping students' thinking patterns by
the use of knowledge space theory.
International Journal of Science Education, 19, 283--302.
Wickelmaier, F., Heller, J., & Anselmi, P. (2016).
pks: Probabilistic Knowledge Structures. R package
version 0.4-0.
https://CRAN.R-project.org/package=kst
Using this App
This App illustrates learning paths within knowledge structures. It consists of five tabs:
a very short introduction into the concepts of knowledge space theory used, information about the
example spaces used in this app, this usage information, the interactive core of the app, and some
author and context information.
If you do not know knowledge space theory, you should best start with the short introduction.
The "Animation" Page
On the left side, you will see two dropdown selections where you can select a knowledge space and a learning path
within this space.
On the right side, you see a Hasse diagram of the knowledge space where the states of the learning path
are marked.
The above Hasse diagram shows the knowledge space
with automatically changing learning paths
marked in blue
List of All Learning Paths:
About this App
This App was created within the
TquanT project.
TquanT was co-funded by the Erasmus+ Programme of the European Commission.
© 2018 Cord Hockemeyer, University of Graz, Austria