| Literature DB >> 36256672 |
Michal Sedlák1, Čeněk Šašinka2, Zdeněk Stachoň3, Jiří Chmelík4, Milan Doležal4.
Abstract
Many university-taught courses moved to online form since the outbreak of the global pandemic of coronavirus disease (COVID-19). Distance learning has become broadly used as a result of the widely applied lockdowns, however, many students lack personal contact in the learning process. A classical web-based distance learning does not provide means for natural interpersonal interaction. The technology of immersive virtual reality (iVR) may mitigate this problem. Current research has been aimed mainly at specific instances of collaborative immersive virtual environment (CIVE) applications for learning. The fields utilizing iVR for knowledge construction and skills training with the use of spatial visualizations show promising results. The objective of this study was to assess the effectiveness of collaborative and individual use of iVR for learning geography, specifically training in hypsography. Furthermore, the study's goals were to determine whether collaborative learning would be more effective and to investigate the key elements in which collaborative and individual learning were expected to differ-motivation and use of cognitive resources. The CIVE application developed at Masaryk University was utilized to train 80 participants in inferring conclusions from cartographic visualizations. The collaborative and individual experimental group underwent a research procedure consisting of a pretest, training in iVR, posttest, and questionnaires. A statistical comparison between the geography pretest and posttest for the individual learning showed a significant increase in the score (p = 0.024, ES = 0.128) and speed (p = 0.027, ES = 0.123), while for the collaborative learning, there was a significant increase in the score (p<0.001, ES = 0.333) but not in speed (p = 1.000, ES = 0.000). Thus, iVR as a medium proved to be an effective tool for learning geography. However, comparing the collaborative and individual learning showed no significant difference in the learning gain (p = 0.303, ES = 0.115), speed gain (p = 0.098, ES = 0.185), or performance motivation (p = 0.368, ES = 0.101). Nevertheless, the collaborative learning group had significantly higher use of cognitive resources (p = 0.046, ES = 0.223) than the individual learning group. The results were discussed in relation to the cognitive load theories, and future research directions for iVR learning were proposed.Entities:
Mesh:
Year: 2022 PMID: 36256672 PMCID: PMC9578614 DOI: 10.1371/journal.pone.0276267
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.752
Fig 1Geography learning CIVE application developed at Masaryk University.
Fig 2Test item created in the hypothesis platform for the pretest and posttest.
Examples of statements used in the questionnaires.
| Questionnaire | Statement to be rated |
|---|---|
| Use of cognitive resources questionnaire | While working on the task, I/we managed to discover new information or ways of looking at the problem. |
| While working on the task, I/we managed to use the information that I/we had discovered before. | |
| While working on the task, I/we managed to work with multiple pieces of information at the same time. | |
| Performance motivation questionnaire | There were moments when I was fully focused on the task and everything else seemed unimportant to me. |
| While working on the task, I felt satisfaction from the intensive and focused work. | |
| I completely immersed myself in the work on the task and the time passed incredibly fast. |
Fig 3Virtual environment “Vesper Peak” used for iVR calibration and training.
Fig 4Overview of the research procedure flow.
Overview of the dependent variables.
| Dependent variable | Levels of independent variables | Shapiro–Wilk test of normality | |||
|---|---|---|---|---|---|
|
|
|
| |||
| Geo-score | individual | pretest | 0.942 | 40 | 0.041 * |
| posttest | 0.880 | 40 | < 0.001 * | ||
| collaborative | pretest | 0.940 | 40 | 0.034 * | |
| posttest | 0.846 | 40 | < 0.001 * | ||
| Geo-speed | individual | pretest | 0.966 | 40 | 0.274 |
| posttest | 0.890 | 40 | < 0.001 * | ||
| collaborative | pretest | 0.932 | 40 | 0.018 * | |
| posttest | 0.962 | 40 | 0.203 | ||
| Learning gain | individual | 0.965 | 40 | 0.243 | |
| collaborative | 0.940 | 40 | 0.036 * | ||
| Speed gain | individual | 0.911 | 40 | 0.004 * | |
| collaborative | 0.972 | 40 | 0.413 | ||
| Use of cognitive resources | individual | 0.952 | 40 | 0.087 | |
| collaborative | 0.966 | 40 | 0.269 | ||
| Performance motivation | individual | 0.975 | 40 | 0.508 | |
| collaborative | 0.955 | 40 | 0.112 | ||
* p-value less than the significance level of 0.05.
Fig 5Pretest and posttest values for score and speed in geo tests for individual learning.
Fig 6Pretest and posttest values for score and speed in geo tests for collaborative learning.
Fig 7Comparison of learning gain and speed gain between experimental groups.
Fig 8Comparison of use of cognitive resources and motivation between experimental groups.