This app follows a very straightforward way to generate knowledge structures from data. Subsets of the item set
Q whose frequency within the set of response patterns is higher than a certain threshold are taken as
knowledge states. Initially, the threshold is set to "# response patterns" / 2
|Q|.
Please note, however, that this approach requires a number of response patterns multiply larger than
2
|Q|.
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
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:
- 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.
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