Uncovering students' problem-solving processes in game-based learning environments

被引:34
作者
Liu, Tongxi [1 ]
Israel, Maya [1 ]
机构
[1] Univ Florida, 1221 SW 5TH AVE, Gainesville, FL 32601 USA
关键词
Games; Human-computer interface; Data science applications in education; SELF-EXPLANATIONS; STRATEGIES; MODEL; ENGAGEMENT; ANALYTICS; FRAMEWORK; SCIENCE;
D O I
10.1016/j.compedu.2022.104462
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
As one of the most desired skills for contemporary education and career, problem-solving is fundamental and critical in game-based learning research. However, students' implicit and selfcontrolled learning processes in games make it difficult to understand their problem-solving behaviors. Observational and qualitative methods, such as interviews and exams, fail to capture students' in-process difficulties. By integrating data mining techniques, this study explored students' problem-solving processes in a puzzle-based game. First, we applied the Continuous Hidden Markov Model to identify students' problem-solving phases and the transition probabilities between these phases. Second, we employed sequence mining techniques to investigate problem-solving patterns and strategies facilitating students' problem-solving processes. The results suggested that most students were stuck in certain phases, with only a few able to transfer to systematic phases by applying efficient strategies. At the beginning of the puzzle, the most popular strategy was testing one dimension of the solution at each attempt. In contrast, the other two strategies (remove or add untested dimensions one by one) played pivotal roles in promoting transitions to higher problem-solving phases. The findings of this study shed light on when, how, and why students advanced their effective problem-solving processes. Using the Continuous Hidden Markov Model and sequence mining techniques, we provide considerable promise for uncovering students' problem-solving processes, which helps trigger future scaffolds and interventions to support students' personalized learning in game-based learning environments.
引用
收藏
页数:14
相关论文
共 92 条
[71]  
Schuster-Bockler Benjamin, 2007, Curr Protoc Bioinformatics, VAppendix 3, p3A, DOI [10.1109/MASSP.1986.1165342, 10.1002/0471250953.bia03as18]
[72]   Measuring problem solving skills via stealth assessment in an engaging video game [J].
Shute, Valerie J. ;
Wang, Lubin ;
Greiff, Samuel ;
Zhao, Weinan ;
Moore, Gregory .
COMPUTERS IN HUMAN BEHAVIOR, 2016, 63 :106-117
[73]   Game-Based Learning: Analysis of Students' Motivation, Performance, and Drop Out in a Production Engineering Course [J].
Silva, Elissa Danielle ;
Macedo, Marcelo ;
Teixeira, Clarissa ;
Lanzer, Edgar ;
Graziani, Alvaro Paz .
ADVANCES IN HUMAN FACTORS, BUSINESS MANAGEMENT, TRAINING AND EDUCATION, 2017, 498 :933-945
[74]  
Simon H. A., 1978, Handbook of Learning and Cognitive Processes, P271, DOI DOI 10.4324/9781315770314
[75]   A problem-solving conceptual framework and its implications in designing problem-posing tasks [J].
Singer, Florence Mihaela ;
Voica, Cristian .
EDUCATIONAL STUDIES IN MATHEMATICS, 2013, 83 (01) :9-26
[76]  
Slay I, 2010, LATIN AM J PHYS ED, V4, P2
[77]   PROBLEM SOLVING AND GAME-BASED LEARNING: EFFECTS OF MIDDLE GRADE STUDENTS' HYPOTHESIS TESTING STRATEGIES ON LEARNING OUTCOMES [J].
Spires, Hiller A. ;
Rowe, Jonathan P. ;
Mott, Bradford W. ;
Lester, James C. .
JOURNAL OF EDUCATIONAL COMPUTING RESEARCH, 2011, 44 (04) :453-472
[78]   The impact of trace data and motivational self-reports in a game-based learning environment [J].
Syal, Samira ;
Nietfeld, John L. .
COMPUTERS & EDUCATION, 2020, 157
[79]  
ter Vrugte J, 2017, ADV GAME BASE LEARN, P141, DOI 10.1007/978-3-319-39298-1_8
[80]   I see what you did there! Divergent collaboration and learner transitions from unproductive to productive states in open-ended inquiry [J].
Tissenbaum, Mike .
COMPUTERS & EDUCATION, 2020, 145