Where Can We Find the Differences Between Experts and Novices With Lag Sequential Analysis of Spatial Behavioral Patterns in Digital Pentomino Games
Author: Hi-Lian Jeng (Graduate Institute of Digital Learning and Education, National Taiwan University of Science and Technology), Chung-Nien Chen (APPLE BUDS, LNC.)
Vol.&No.:Vol. 67, No. 4
Date:December 2022
Pages:105-142
DOI:https://doi.org/10.6209/JORIES.202212_67(4).0004
Abstract:
The rapid advancement of technology has led to vigorous growth in research and the applications of digital learning, including digital game-based learning. Digital game-based learning improves learning achievement (Sung & Hwang, 2013; Sung et al., 2015) and learning motivation (Hao & Lee, 2019; Srisawasdi & Panjaburee, 2019), and it enhances higher-order thinking such as critical thinking (Chang et al., 2019; Hussein et al., 2019) and problem-solving (Hwang et al., 2014; Yang, 2015). Digital game-based learning promotes learning in the form of entertainment, and it has thus attracted considerable attention in learning and instruction recently. Advances in technology have also facilitated research designs and analysis methods. Procedural issues that formerly relied on qualitative research methods can now be fully captured and visualized using learning analytics technology, which facilitates the representation, organization, inspection, comparison, and discussion of procedural data.
Procedural data on learning can be used to better explain or predict end performance. Procedural learning analytics can be used to explain learners’ different end performance; and when learners’ end performances are the same, procedural learning analytics may provide a more detailed and refined explanation of their performances. Procedural learning analytics can also provide useful information for optimizing learning designs and environments to improve learning outcomes (Hwang, Chu et al., 2017). Various learning analytics methods aim for different research purposes and designs. Lag sequential analysis is one such method that has been attended in related research.
Although spatial ability is innate and varies among individuals, it can be enhanced through training and learning (Cherney, 2008; Nazareth et al., 2013; Vander Heyden et al., 2017). Spatial ability is related to mathematics capability (Ke, 2019; Krisztián et al., 2015; Ramirez et al., 2012); future attainment in science, technology, engineering, and mathematics (Kell et al., 2013); and future career choices (Jirout & Newcombe, 2015; Uttal & Cohen, 2012). Spatial ability can be improved through digital game-based learning (Hung et al., 2012; Lin & Chen, 2016; Taylor & Hutton, 2013). Pentomino blocks (referred to as Pentomino) constitute an effective material for spatial ability training. Pentomino jigsaw puzzles promote spatial ability (Yang & Chen, 2010). In Pan and Jeng (2018), players applied problem-solving skills that are related to spatial ability during gameplay; different players (experts and novices) applied different problem-solving thinking and strategies. Consequently, their procedural problem-solving skills and strategies also differed. Experts were more systematic in operation and tended to evaluate their outcomes repeatedly, although necessary actions were quickly completed; therefore, the total task time an expert used would be the same as that of a novice. Jeng et al. (2010) combined Thinking Aloud and Pentomino in a spatial performance test for adult participants and observed that for the average number of operations and average operation time, experts and novices were significantly different in the difficult-and-single- solution tasks only but not in the simple-and-multiple-solution tasks.
Research comparing expert and novice problem-solving has primarily evaluated quantitative data. The procedural differences between these two types of players in digital game-based learning require further research (Loh et al., 2016). Only Pan and Jeng (2018) employed Mining Sequential Patterns with Time Constraints to analyze the spatial operation behaviors of experts and novices in the Digital Pentomino Game for adult participants.
On the basis of the procedures described by Pan and Jeng (2018) and Jeng et al.’s (2010) manipulation of the Digital Pentomino Game, the present study applied a novel and more detailed approach to determine differences in spatial performance between experts and novices. This study used a mixed-methods research design. In the first stage, the independent t-test was used to analyze the spatial ability test scores and the average number of operations of each level in the Digital Pentomino Game. In the second stage, the Lag Sequential Analysis was used to analyze and visualize the procedural operation differences between the two groups in each game level. This study explored the following research questions:
1. Are there significant differences between experts and novices in their scores on three spatial ability tests?
2. Is there a significant difference between experts and novices in the average number of operations for each level of the game?
3. Are there significant differences between experts and novices in the sequential procedural analysis for each level of the game?
This study adopted the Digital Pentomino Game system developed by Pan and Jeng (2018). The game contains six levels. The first to fifth levels involve tasks of two-piece Pentomino combinations, and the sixth level involves a task of three-piece Pentomino combinations. Each level contains single or multiple solutions. The three spatial ability tests used are outlined as follows:
1. Jeng and Li (2014) Computerized Mental Rotation Test
2. Jeng and Liu (2016) Computerized Mental Rotation Test
3. Jeng and Chen (2013) paper-and-pencil standardized spatial ability test
The study participants were 47 fourth- and fifth-grade children (aged between 10 and 11 years). This age range is a critical period for the development of children’s spatial abilities, and it is also a critical period for the emergence of gender spatial differences. With advancements in science, technology, and education, and changes in children nurturing in recent years, the stable age at which children can undertake computerized measures of mental rotation ability (one of the factors of spatial ability) in geometric cubic form is as young as 10 years, in contrast to 13 years as reported by earlier studies.
The study results revealed that the expert group performed significantly better than the novice group on the three spatial ability tests. The expert group had a lower average number of operations per solution in each game level than did the novice group, but the differences were significant only in difficult levels and not in simple levels. The experts and novices exhibited different sequential behavioral patterns in solving every difficult level and simple level as well. The experts continually monitored and evaluated their problem-solving procedures and made quick and appropriate corrections when necessary, thereby reducing the number of operations and improving problem-solving efficiency. This implies that in training programs aimed at cultivating novices into experts, novices must be trained to think systematically so that they can develop the ability to continually monitor task performance and environmental contexts when evaluating solutions. Specifically, novices should be trained to acquire expert-like thinking and strategies so that they can ultimately perform as experts or close to experts.
The results of this study provide design suggestions for related applications and research in teaching intervention, game-based learning at the critical stage of spatial ability development, digital content design, learning analytics methods, and variables of investigative interests in the spatial field and any other fields that involve cultivating novices into experts.
Keywords:artificial intelligence in education, experts and novices, game-based learning, lag sequential analysis, digital Pentomino game
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References:
- 吳冠蓉(2020)。使用互動式電子書和手機遊戲的空間能力教育訓練結果之比較(未出版碩士論文)。國立臺灣科技大學。【Wu, K.-J. (2020). The comparisons of spatial performances in using interactive eBook and APP game of pentomino [Unpublished master’s thesis]. National Taiwan University of Science and Technology.】
- 洪榮昭、王志美、葉貞妮、吳鳳珠(2020)。遊戲自我效能、遊戲興趣、認知負荷與地理桌遊的遊玩自信心提升之相關研究。教育科學研究期刊,65(3),225-250。https://doi.org/ 10.6209/JORIES.202009_65(3).0008【Hong, J.-C., Wang, C.-M., Ye, J.-N., & Wu, F.-S. (2020). The relationship among gameplay self-efficacy, gameplay interest, cognitive load, and self-confidence enhancement in Geography Board Games. Journal of Research in Education Sciences, 65(3), 225-250. https://doi.org/10.6209/JORIES.202009_65(3).0008】
- 洪榮昭、詹瓊華(2018)。共變推理遊戲:遊戲自我效能與後設認知影響遊戲中的焦慮、興趣及表現之研究。教育科學研究期刊,63(3),131-162。https://doi.org/10.6209/JORIES.201809_63(3).0005【Hong, J.-C., & Chan, C.-H. (2018). Game performance in covariation reasoning: The correlates between gameplay self-efficacy, and metacognition reflected gameplay anxiety and gameplay interest. Journal of Research in Education Sciences, 63(3), 131-162. https://doi.org/10.6209/JORIES.201809_63(3).0005】
- 潘博揚、鄭海蓮(2018,10月19-21日)。數位五連方積木拼圖遊戲中專家與生手行為模式的差異(研討會論文)。第十三屆海峽兩岸心理與教育測驗學術研討會暨中國測驗學會年會,南投縣,臺灣。【Pan, B.-Y., & Jeng, H.-L. (2018, October 19-21). Differential behavior patterns between experts and novices in digital pentomino game [Paper presentation]. 13th Cross-Strait Conference on Educational and Psychological Testing & Annual Meeting of Chinese Association of Psychological Testing, Nan-Tou, Taiwan.】
- Bakeman, R., & Gottman, J. M. (1997). Observing interaction: An introduction to sequential analysis. Cambridge University Press. https://doi.org/10.1017/cbo9780511527685
» More
- 吳冠蓉(2020)。使用互動式電子書和手機遊戲的空間能力教育訓練結果之比較(未出版碩士論文)。國立臺灣科技大學。【Wu, K.-J. (2020). The comparisons of spatial performances in using interactive eBook and APP game of pentomino [Unpublished master’s thesis]. National Taiwan University of Science and Technology.】
- 洪榮昭、王志美、葉貞妮、吳鳳珠(2020)。遊戲自我效能、遊戲興趣、認知負荷與地理桌遊的遊玩自信心提升之相關研究。教育科學研究期刊,65(3),225-250。https://doi.org/ 10.6209/JORIES.202009_65(3).0008【Hong, J.-C., Wang, C.-M., Ye, J.-N., & Wu, F.-S. (2020). The relationship among gameplay self-efficacy, gameplay interest, cognitive load, and self-confidence enhancement in Geography Board Games. Journal of Research in Education Sciences, 65(3), 225-250. https://doi.org/10.6209/JORIES.202009_65(3).0008】
- 洪榮昭、詹瓊華(2018)。共變推理遊戲:遊戲自我效能與後設認知影響遊戲中的焦慮、興趣及表現之研究。教育科學研究期刊,63(3),131-162。https://doi.org/10.6209/JORIES.201809_63(3).0005【Hong, J.-C., & Chan, C.-H. (2018). Game performance in covariation reasoning: The correlates between gameplay self-efficacy, and metacognition reflected gameplay anxiety and gameplay interest. Journal of Research in Education Sciences, 63(3), 131-162. https://doi.org/10.6209/JORIES.201809_63(3).0005】
- 潘博揚、鄭海蓮(2018,10月19-21日)。數位五連方積木拼圖遊戲中專家與生手行為模式的差異(研討會論文)。第十三屆海峽兩岸心理與教育測驗學術研討會暨中國測驗學會年會,南投縣,臺灣。【Pan, B.-Y., & Jeng, H.-L. (2018, October 19-21). Differential behavior patterns between experts and novices in digital pentomino game [Paper presentation]. 13th Cross-Strait Conference on Educational and Psychological Testing & Annual Meeting of Chinese Association of Psychological Testing, Nan-Tou, Taiwan.】
- Bakeman, R., & Gottman, J. M. (1997). Observing interaction: An introduction to sequential analysis. Cambridge University Press. https://doi.org/10.1017/cbo9780511527685
- Buehl, D. (2009). Creating robust vocabulary: Frequently asked questions & extended examples. Journal of Adolescent & Adult Literacy, 52(8), 732-734. https://www.jstor.org/stable/27654344
- Brand-Gruwel, S., Wopereis, I., & Vermetten, Y. (2005). Information problem solving by experts and novices: Analysis of a complex cognitive skill. Computers in Human Behavior, 21(3), 487-508. https://doi.org/10.1016/j.chb.2004.10.005
- Chang, C. Y., Kao, C. H., Hwang, G. J., & Lin, F. H. (2019). From experiencing to critical thinking: A contextual game-based learning approach to improving nursing students’ performance in Electrocardiogram training. Educational Technology Research and Development, 68, 1225-1245. https://doi.org/10.1007/s11423-019-09723-x
- Chatti, M. A., Dyckhoff, A. L., Schroeder, U., & Thüs, H. (2012). A reference model for learning analytics. International Journal of Technology Enhanced Learning, 4(5-6), 318-331. https://doi. org/10.1504/IJTEL.2012.051815
- Chen, C. H. (2019). The impacts of peer competition-based science gameplay on conceptual knowledge, intrinsic motivation, and learning behavioral patterns. Educational Technology Research and Development, 67(1), 179-198. https://doi.org/10.1007/s11423-018-9635-5
- Cherney, I. D. (2008). Mom, let me play more computer games: They improve my mental rotation skills. Sex Roles, 59(11-12), 776-786. https://doi.org/10.1007/s11199-008-9498-z
- Cheung, O. S., Hayward, W. G., & Gauthier, I. (2009). Dissociating the effects of angular disparity and image similarity in mental rotation and object recognition. Cognition, 113(1), 128-133. https://doi.org/10.1016/j.cognition.2009.07.008
- Chiang, T. H. C. (2017). Analysis of learning behavior in a flipped programing classroom adopting problem-solving strategies. Interactive Learning Environments, 25(2), 189-202. https://doi.org/ 10.1080/10494820.2016.1276084
- Dale, E., & Chall, J. S. (1948). A formula for predicting readability. Educational Research Bulletin, 27(1), 11-28. https://www.jstor.org/stable/1473169
- Dreyfus, S. E. (2004). The five-stage model of adult skill acquisition. Bulletin of Science, Technology & Society, 24(3), 177-181. https://doi.org/10.1177/0270467604264992
- Flesch, R. (1948). A new readability yardstick. Journal of Applied Psychology, 32(3), 221-233. https://doi.org/10.1037/h0057532
- Hao, K. C., & Lee, L. C. (2021). The development and evaluation of an educational game integrating augmented reality, ARCS model, and types of games for English experiment learning: An analysis of learning. Interactive Learning Environments, 29(7), 1101-1114. https://doi.org/10.1080/10494820.2019.1619590
- Hou, H. T. (2012). Exploring the behavioral patterns of learners in an educational massively multiple online role-playing game. Computers & Education, 58(4), 1225-1233. https://doi.org/10.1016/j.compedu.2011.11.015
- Hou, H. T. (2015). Integrating cluster and sequential analysis to explore learners’ flow and behavioral patterns in a simulation game with situated-learning context for science courses: A video-based process exploration. Computers in Human Behavior, 48, 424-435. https://doi.org/10.1016/j.chb.2015.02.010
- Hsieh, Y. H., Lin, Y. C., & Hou, H. T. (2015). Exploring elementary-school students’ engagement patterns in a game-based learning environment. Journal of Educational Technology & Society, 18(2), 336-348. https://www.jstor.org/stable/jeductechsoci.18.2.336
- Huang, T. C., Chen, M. Y., & Lin, C. Y. (2019). Exploring the behavioral patterns transformation of learners in different 3D modeling teaching strategies. Computers in Human Behavior, 92, 670-678. https://doi.org/10.1016/j.chb.2017.08.028
- Hung, P. H., Hwang, G. J., Lee, Y. H., & Su, I. H. (2012). A cognitive component analysis approach for developing game-based spatial learning tools. Computers & Education, 59(2), 762-773. https://doi.org/10.1016/j.compedu.2012.03.018
- Hussein, M. H., Ow, S. H., Cheong, L. S., & Thong, M. K. (2019). A digital game-based learning method to improve students’ critical thinking skills in elementary science. IEEE Access, 7, 96309-96318. https://doi.org/10.1109/ACCESS.2019.2929089
- Hwang, G. J., & Chen, C. H. (2016). Influences of an inquiry-based ubiquitous gaming design on students’ learning achievements, motivation, behavioral patterns, and tendency towards critical thinking and problem solving. British Journal of Educational Technology, 48(4), 950-971. https://doi.org/10.1111/bjet.12464
- Hwang, G. J., Chu, H. C., & Yin, C. J. (2017). Objectives, methodologies and research issues of learning analytics. Interactive Learning Environments, 25(2), 143-146. https://doi.org/10.1080/ 10494820.2017.1287338
- Hwang, G. J., Hsu, T. C., Lai, C. L., & Hsueh, C. J. (2017). Interaction of problem-based gaming and learning anxiety in language students’ English listening performance and progressive behavioral patterns. Computers & Education, 106, 26-42. https://doi.org/10.1016/j.compedu.2016.11.010
- Hwang, G. J., Hung, C. M., & Chen, N. S. (2014). Improving learning achievements, motivations and problem-solving skills through a peer assessment-based game development approach. Educational Technology Research and Development, 62(2), 129-145. https://doi.org/10.1007/s11423-013-9320-7
- Hwang, G. J., & Tu, Y. F. (2021). Roles and research trends of artificial intelligence in mathematics education: A bibliometric mapping analysis and systematic review. Mathematics, 9(6), 584. https://doi.org/10.3390/math9060584
- Jeng, H.-L., & Chen, Y. F. (2013). Comparisons of latent factor region means of spatial ability based on measurement invariance. Learning and Individual Differences, 27, 16-25. https://doi.org/10. 1016/j.lindif.2013.06.012
- Jeng, H.-L., Chuang, Y.-W., & Lai, W.-Y. (2016, September 14-16). Diminishing gender difference in communal-collaborative learning [Paper presentation]. International Workshop on Technology-enhanced Collaborative Learning (TECL 2016) in conjunction with CRIWG/CollabTech 2016, Kanazawa, Japan.
- Jeng, H.-L., Lai, W. Y., & Chao, A. K. (2010, October 1-3). Modeling spatial geometric reasoning [Paper presentation]. 15th Conference on Attention and Perception, Intersecting Social and Cognitive Neurosciences, Tainan, Taiwan.
- Jeng, H.-L., & Li, J. C. (2014, July 2-5). Difference comparisons of the primary grade students in computerized mental rotation test [Paper presentation]. 9th Conference of the International Test Commission, San Sebastián, Spain.
- Jeng, H.-L., & Lin, Y. S. (2017, August 8-10). The additive effect of collaborative and game-based learning in using an eBook for promoting spatial ability [Paper presentation]. International Workshop on Technology-enhanced Collaborative Learning, Saskatchewan, Canada.
- Jeng, H. L., & Liu, G. F. (2016). Test interactivity is promising in promoting gender equity in females’ pursuit of STEM careers. Learning and Individual Differences, 49, 201-208. https://doi. org/10.1016/j.lindif.2016.06.018
- Jeng, H.-L., Liu, L.-W., & Chen, C.-N. (2019, July 7-11). Developing a procedural problem-based framework of computational thinking components [Paper presentation]. 2019 8th International Congress on Advanced Applied Informatics (IIAI-AAI), Toyama, Japan. https://doi.org/10.1109/IIAI-AAI. 2019.00061
- Jirout, J. J., & Newcombe, N. S. (2015). Building blocks for developing spatial skills: Evidence from a large representative U.S. sample. Psychological Science, 26(3), 302-310. https://doi.org/10.1177/0956797614563338
- Johnson, E. S., & Meade, A. C. (1987). Developmental patterns of spatial ability: An early sex difference. Child Development, 58(3), 725-740. https://doi.org/10.2307/1130210
- Ke, F. (2019). Mathematical problem solving and learning in an architecture-themed epistemic game. Educational Technology Research and Development, 67(5), 1085-1104. https://doi.org/10.1007/ s11423-018-09643-2
- Kell, H. J., Lubinski, D., Benbow, C. P., & Steiger, J. H. (2013). Creativity and technical innovation: spatial ability’s unique role. Psychological Science, 24(9), 1831-1836. https://doi.org/10.1177/0956797613478615
- Kline, R. B. (1998). Principles and practice of structural equation modeling. The Guilford Press.
- Krisztián, Á., Bernáth, L., Gombos, H., & Vereczkei, L. (2015). Developing numerical ability in children with mathematical difficulties using origami. Perceptual and Motor Skills, 121(1), 233-243. https://doi.org/10.2466/24.10.PMS.121c16x1
- Kwon, K., Shin, S., Brush, T. A., Glazewski, K. D., Edelberg, T., Park, S. J., Khlaif, Z., Nadiruzzaman, H., & Alangari, H. (2018). Inquiry learning behaviors captured through screencasts in problem-based learning. Interactive Learning Environments, 26(6), 839-855. https://doi.org/10.1080/10494820.2017.1419496
- Lee, J. Y., Donkers, J., Jarodzka, H., & van Merriënboer, J. J. (2019). How prior knowledge affects problem-solving performance in a medical simulation game: Using game-logs and eye-tracking. Computers in Human Behavior, 99, 268-277. https://doi.org/10.1016/j.chb.2019.05.035
- Lin, C. H., & Chen, C. M. (2016). Developing spatial visualization and mental rotation with a digital puzzle game at primary school level. Computers in Human Behavior, 57, 23-30. https://doi.org/10.1016/j.chb.2015.12.026
- Lin, C. H., Chen, C. M., & Lou, Y. C. (2014). Developing spatial orientation and spatial memory with a treasure hunting game. Journal of Educational Technology & Society, 17(3), 79-92. https://www.jstor.org/stable/jeductechsoci.17.3.79
- Lindstedt, J. K., & Gray, W. D. (2019). Distinguishing experts from novices by the mind’s hand and mind’s eye. Cognitive Psychology, 109, 1-25. https://doi.org/10.1016/j.cogpsych.2018.11.003
- Linn, M. C., & Petersen, A. C. (1985). Emergence and characterization of sex differences in spatial ability: A meta-analysis. Child Development, 56(6), 1479-1498. https://doi.org/10.2307/1130467
- Liu, C. C., Cheng, Y. B., & Huang, C. W. (2011). The effect of simulation games on the learning of computational problem solving. Computers & Education, 57(3), 1907-1918. https://doi.org/10.1016/j.compedu.2011.04.002
- Loh, C. S., Li, I. H., & Sheng, Y. (2016). Comparison of similarity measures to differentiate players’ actions and decision-making profiles in serious games analytics. Computers in Human Behavior, 64, 562-574. https://doi.org/10.1016/j.chb.2016.07.024
- Loh, C. S., & Sheng, Y. (2015). Measuring the (dis-) similarity between expert and novice behaviors as serious games analytics. Education and Information Technologies, 20(1), 5-19. https://doi.org/10.1007/s10639-013-9263-y
- Loh, C. S., Sheng, Y., & Ifenthaler, D. (2015). Serious games analytics: Theoretical framework. In C. Loh, Y. Sheng, & D. Ifenthaler (Eds.), Serious games analytics (pp. 3-29). Springer.
- Lohman, D. F. (1988). Spatial abilities as traits, processes, and knowledge. In R. J. Sternberg (Ed.), Advances in the psychology of human intelligence (pp. 181-248). Lawrence Erlbaum Associates.
- McGee, M. G. (1979). Human spatial abilities: Psychometric studies and environmental, genetic, hormonal, and neurological influences. Psychological Bulletin, 86(5), 889-918. https://doi.org/10.1037/0033-2909.86.5.889
- Nazareth, A., Herrera, A., & Pruden, S. M. (2013). Explaining sex differences in mental rotation: Role of spatial activity experience. Cognitive Processing, 14(2), 201-204. https://doi.org/10.1007/s10339-013-0542-8
- Noroozi, O., Alikhani, I., Järvelä, S., Kirschner, P. A., Juuso, I., & Seppänen, T. (2019). Multimodal data to design visual learning analytics for understanding regulation of learning. Computers in Human Behavior, 100, 298-304. https://doi.org/10.1016/j.chb.2018.12.019
- Peters, M., Laeng, B., Latham, K., Jackson, M., Zaiyouna, R., & Richardson, C. (1995). A redrawn Vandenberg and Kuse mental rotations test- Different versions and factors that affect performance. Brain and Cognition, 28(1), 39-58. https://doi.org/10.1006/brcg.1995.1032
- Prensky, M. (2007). Digital game-based learning. Paragon House.
- Ramirez, G., Gunderson, E. A., Levine, S. C., & Beilock, S. L. (2012). Spatial anxiety relates to spatial abilities as a function of working memory in children. The Quarterly Journal of Experimental Psychology, 65(3), 474-487. https://doi.org/10.1080/17470218.2011.616214
- Sims, V. K., & Mayer, R. E. (2002). Domain specificity of spatial expertise: The case of video game players. Applied Cognitive Psychology, 16(1), 97-115. https://doi.org/10.1002/acp.759
- Srisawasdi, N., & Panjaburee, P. (2019). Implementation of game-transformed inquiry-based learning to promote the understanding of and motivation to learn chemistry. Journal of Science Education and Technology, 28(2), 152-164. https://doi.org/10.1007/s10956-018-9754-0
- Strømme, T. A., & Furberg, A. (2015). Exploring teacher intervention in the intersection of digital resources, peer collaboration, and instructional design. Science Education, 99(5), 837-862. https://doi.org/10.1002/sce.21181
- Sun, J. C. Y., Kuo, C. Y., Hou, H. T., & Lin, Y. Y. (2017). Exploring learners’ sequential behavioral patterns, flow experience, and learning performance in an anti-phishing educational game. Journal of Educational Technology & Society, 20(1), 45-60. https://www.jstor.org/stable/ jeductechsoci.20.1.45
- Sung, H. Y., & Hwang, G. J. (2013). A collaborative game-based learning approach to improving students’ learning performance in science courses. Computers & Education, 63, 43-51. https://doi.org/10.1016/j.compedu.2012.11.019
- Sung, H. Y., & Hwang, G. J. (2018). Facilitating effective digital game-based learning behaviors and learning performances of students based on a collaborative knowledge construction strategy. Interactive Learning Environments, 26(1), 118-134. https://doi.org/10.1080/10494820.2017. 1283334
- Sung, H. Y., Hwang, G. J., Wu, P. H., & Lin, D. Q. (2018). Facilitating deep-strategy behaviors and positive learning performances in science inquiry activities with a 3D experiential gaming approach. Interactive Learning Environments, 26(8), 1053-1073. https://doi.org/10.1080/10494820.2018.1437049
- Sung, H. Y., Hwang, G. J., & Yen, Y. F. (2015). Development of a contextual decision-making game for improving students’ learning performance in a health education course. Computers & Education, 82, 179-190. https://doi.org/10.1016/j.compedu.2014.11.012
- Taylor, H. A., & Hutton, A. (2013). Think 3d! Training spatial thinking fundamental to STEM education. Cognition and Instruction, 31(4), 434-455. https://doi.org/10.1080/07370008.2013. 828727
- Titze, C., Jansen, P., & Heil, M. (2010). Mental rotation performance in fourth graders: No effects of gender beliefs (yet?). Learning and Individual Differences, 20(5), 459-463. https://doi.org/10.1016/j.lindif.2010.04.003
- Tsai, M. J., Huang, L. J., Hou, H. T., Hsu, C. Y., & Chiou, G. L. (2016). Visual behavior, flow and achievement in game-based learning. Computers & Education, 98, 115-129. https://doi.org/10.1016/j.compedu.2016.03.011
- Tüzün, H., Yılmaz-Soylu, M., Karakuş, T., İnal, Y., & Kızılkaya, G. (2009). The effects of computer games on primary school students’ achievement and motivation in geography learning. Computers & Education, 52(1), 68-77. https://doi.org/10.1016/j.compedu.2008.06.008
- Uttal, D. H., & Cohen, C. A. (2012). Spatial thinking and STEM education: When, why and how? In B. H. Ross (Ed.), The psychology of learning and motivation (Vol. 57, pp. 147-181). Academic Press.
- Vander Heyden, K. M., Huizinga, M., & Jolles, J. (2017). Effects of a classroom intervention with spatial play materials on children’s object and viewer transformation abilities. Developmental Psychology, 53(2), 290-305. https://doi.org/10.1037/dev0000224
- Yan, X., Song, D., & Li, X. (2006, November 6-11). Concept-based document readability in domain specific information retrieval [Paper presentation]. 15th ACM International Conference on Information and Knowledge Management, Arlington, VA, US. https://doi.org/10.1145/1183614. 1183692
- Yang, Y. T. C. (2015). Virtual CEOs: A blended approach to digital gaming for enhancing higher order thinking and academic achievement among vocational high school students. Computers & Education, 81, 281-295. https://doi.org/10.1016/j.compedu.2014.10.004
- Yang, J. C., & Chen, S. Y. (2010). Effects of gender differences and spatial abilities within a digital pentominoes game. Computers & Education, 55(3), 1220-1233. https://doi.org/10.1016/j.compedu.2010.05.019
- Zhu, G., Xing, W., & Popov, V. (2019). Uncovering the sequential patterns in transformative and non-transformative discourse during collaborative inquiry learning. Internet and Higher Education, 41(1), 51-61. https://doi.org/10.1016/j.iheduc.2019.02.001