| Literature DB >> 21998652 |
Patrick Wessa1, Antoon De Rycker, Ian Edward Holliday.
Abstract
BACKGROUND: We introduced a series of computer-supported workshops in our undergraduate statistics courses, in the hope that it would help students to gain a deeper understanding of statistical concepts. This raised questions about the appropriate design of the Virtual Learning Environment (VLE) in which such an approach had to be implemented. Therefore, we investigated two competing software design models for VLEs. In the first system, all learning features were a function of the classical VLE. The second system was designed from the perspective that learning features should be a function of the course's core content (statistical analyses), which required us to develop a specific-purpose Statistical Learning Environment (SLE) based on Reproducible Computing and newly developed Peer Review (PR) technology.Entities:
Mesh:
Year: 2011 PMID: 21998652 PMCID: PMC3187760 DOI: 10.1371/journal.pone.0025363
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Schedule of learning activities – Year 0 and 1.
Figure 2System Design – Year 0.
Figure 3System Design – Year 1.
Figure 4Hierarchical structure of computations – Year 1.
Nonequivalent Dependent Variables Tests (http://www.wessa.net/rwasp_vle_software_design_tests.wasp).
| Variable | Welch Two Sample | Asymptotic Wilcoxon |
| T-Test (p-val) | Mann-Whitney Rank Sum Test (p-val) | |
| Total Workshop Score | −0.2128 (0.8316) | −0.3289 (0.7423) |
| COLLES “Relevance” | −0.3483 (0.7278) | 0.1173 (0.9066) |
| COLLES “Critical Thinking” | 1.2576 (0.2092) | 1.1916 (0.2334) |
| COLLES “Cognitive Demand” | 0.9616 (0.3368) | 0.6577 (0.5107) |
Number of students in the Reliable NEGD.
| Year 0 | Year 1 | |||
| Female | Male | Female | Male | |
| Bachelor | 58 | 53 | 41 | 42 |
| Prep. | 53 | 76 | 45 | 74 |
| Total | 240 | 202 | ||
Nomenclature in rule–based regression trees.
| Variable | Description |
| nnzfg | # of non–zero meaningful feedback |
| messages given (by students) | |
| nnzfr | # of non–zero meaningful feedback |
| messages that were received | |
| Bcount | # of reproducible computations |
| Gender | gender ( = 0 for females, = 1 for males) |
| Pop | binary cohort variable |
| ( = 0 for bachelor, = 1 for prep) |
Figure 5Regression Tree – Year 0.
(http://www.wessa.net/rwasp_vle_software_design.wasp).
Figure 6Regression Tree – Year 1.
(http://www.wessa.net/rwasp_vle_software_design.wasp).
Within sample and Cross Validation prediction of RTs (http://www.wessa.net/rwasp_vle_software_design.wasp).
| Year 0 | Year 1 | |||
| Within | CV | Within | CV | |
| Corr. Classif. | 78.3% | 72.5% | 87.1% | 74.8% |
| Incorr. Classif. | 21.7% | 27.5% | 12.9% | 25.2% |
| Leaves | 7 | 11 | ||
| Tree size | 13 | 21 | ||
| Cases | 240 | 202 | ||