Improving Students' Argumentation Skills Using Dynamic Machine-Learning-Based Modeling

被引:2
|
作者
Wambsganss, Thiemo [1 ]
Janson, Andreas [2 ]
Soellner, Matthias [3 ]
Koedinge, Ken [4 ]
Leimeister, Jan Marco [2 ,5 ]
机构
[1] Bern Univ Appl Sci, Inst Digital Technol Management, CH-3005 Bern, Switzerland
[2] Univ St Gallen, Inst Informat Syst & Digital Business, CH-9000 St Gallen, Switzerland
[3] Univ Kassel, Res Ctr IS Design Informat Syst & Syst Engn, D-34121 Kassel, Germany
[4] Carnegie Mellon Univ, Human Comp Interact Inst, Pittsburgh, PA 15213 USA
[5] Univ Kassel, Res Ctr IS Design Informat Syst, D-34121 Kassel, Germany
关键词
dynamic argumentation feedback; artificial intelligence for education; adaptive argumentation learning; adaptive learning; argumentation skills; SOCIAL COGNITIVE THEORY; INFORMATION-TECHNOLOGY; DESIGN SCIENCE; SYSTEMS; EDUCATION; THINKING; ARGUE; ACCEPTANCE; ANALYTICS; GUIDANCE;
D O I
10.1287/isre.2021.0615
中图分类号
G25 [图书馆学、图书馆事业]; G35 [情报学、情报工作];
学科分类号
1205 ; 120501 ;
摘要
Argumentation is an omnipresent rudiment of daily communication and thinking. The ability to form convincing arguments is not only fundamental to persuading an audience of novel ideas but also plays a major role in strategic decision making, negotiation, and constructive, civil discourse. However, humans often struggle to develop argumentation skills, owing to a lack of individual and instant feedback in their learning process, because providing feedback on the individual argumentation skills of learners is timeconsuming and not scalable if conducted manually by educators. Grounding our research in social cognitive theory, we investigate whether dynamic technology -mediated argumentation modeling improves students' argumentation skills in the short and long term. To do so, we built a dynamic machine -learning (ML)-based modeling system. The system provides learners with dynamic writing feedback opportunities based on logical argumentation errors irrespective of instructor, time, and location. We conducted three empirical studies to test whether dynamic modeling improves persuasive writing performance more so than the benchmarks of scripted argumentation modeling (H1) and adaptive support (H2). Moreover, we assess whether, compared with adaptive support, dynamic argumentation modeling leads to better persuasive writing performance on both complex and simple tasks (H3). Finally, we investigate whether dynamic modeling on repeated argumentation tasks (over three months) leads to better learning in comparison with static modeling and no modeling (H4). Our results show that dynamic behavioral modeling significantly improves learners' objective argumentation skills across domains, outperforming established methods like scripted modeling, adaptive support, and static modeling. The results further indicate that, compared with adaptive support, the effect of the dynamic modeling approach holds across complex (large effect) and simple tasks (medium effect) and supports learners with lower and higher expertise alike. This work provides important empirical findings related to the effects of dynamic modeling and social cognitive theory that inform the design of writing and skill support systems for education. This paper demonstrates that social cognitive theory and dynamic modeling based on ML generalize outside of math and science domains to argumentative writing.
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页数:35
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