instructional strategy
AI in Computational Thinking Education in Higher Education: A Systematic Literature Review
Rahimi, Ebrahim, Maathuis, Clara
Computational Thinking (CT) is a key skill set for students in higher education to thrive and adapt to an increasingly technology-driven future and workplace. While research on CT education has gained remarkable momentum in K12 over the past decade, it has remained under-explored in higher education, leaving higher education teachers with an insufficient overview, knowledge, and support regarding CT education. The proliferation and adoption of artificial intelligence (AI) by educational institutions have demonstrated promising potential to support instructional activities across many disciplines, including CT education. However, a comprehensive overview outlining the various aspects of integrating AI in CT education in higher education is lacking. To mitigate this gap, we conducted this systematic literature review study. The focus of our study is to identify initiatives applying AI in CT education within higher education and to explore various educational aspects of these initiatives, including the benefits and challenges of AI in CT education, instructional strategies employed, CT components covered, and AI techniques and models utilized. This study provides practical and scientific contributions to the CT education community, including an inventory of AI-based initiatives for CT education useful to educators, an overview of various aspects of integrating AI into CT education such as its benefits and challenges (e.g., AI potential to reshape CT education versus its potential to diminish students creativity) and insights into new and expanded perspectives on CT in light of AI (e.g., the decoding approach alongside the coding approach to CT).
- Europe > Netherlands (0.05)
- North America > Canada > British Columbia > Metro Vancouver Regional District > Vancouver (0.04)
- Overview (1.00)
- Research Report > Experimental Study (0.49)
- Instructional Material > Course Syllabus & Notes (0.46)
Inductive-Deductive Strategy Reuse for Multi-Turn Instructional Dialogues
Ou, Jiao, Wu, Jiayu, Liu, Che, Zhang, Fuzheng, Zhang, Di, Gai, Kun
Aligning large language models (LLMs) with human expectations requires high-quality instructional dialogues, which can be achieved by raising diverse, in-depth, and insightful instructions that deepen interactions. Existing methods target instructions from real instruction dialogues as a learning goal and fine-tune a user simulator for posing instructions. However, the user simulator struggles to implicitly model complex dialogue flows and pose high-quality instructions. In this paper, we take inspiration from the cognitive abilities inherent in human learning and propose the explicit modeling of complex dialogue flows through instructional strategy reuse. Specifically, we first induce high-level strategies from various real instruction dialogues. These strategies are applied to new dialogue scenarios deductively, where the instructional strategies facilitate high-quality instructions. Experimental results show that our method can generate diverse, in-depth, and insightful instructions for a given dialogue history. The constructed multi-turn instructional dialogues can outperform competitive baselines on the downstream chat model.
- Oceania > Australia > Victoria > Melbourne (0.14)
- Oceania > Australia > New South Wales > Sydney (0.14)
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
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- Research Report > New Finding (0.48)
- Research Report > Experimental Study (0.46)
- Transportation > Infrastructure & Services > Airport (1.00)
- Transportation > Air (1.00)
- Media (1.00)
- (5 more...)
An Approach to Automatically generating Riddles aiding Concept Attainment
Parasa, Niharika Sri, Diwan, Chaitali, Srinivasa, Srinath
One of the primary challenges in online learning environments, is to retain learner engagement. Several different instructional strategies are proposed both in online and offline environments to enhance learner engagement. The Concept Attainment Model is one such instructional strategy that focuses on learners acquiring a deeper understanding of a concept rather than just its dictionary definition. This is done by searching and listing the properties used to distinguish examples from non-examples of various concepts. Our work attempts to apply the Concept Attainment Model to build conceptual riddles, to deploy over online learning environments. The approach involves creating factual triples from learning resources, classifying them based on their uniqueness to a concept into `Topic Markers' and `Common', followed by generating riddles based on the Concept Attainment Model's format and capturing all possible solutions to those riddles. The results obtained from the human evaluation of riddles prove encouraging.
- Asia > India (0.05)
- Asia > Middle East > Republic of Türkiye (0.04)
- Africa (0.04)
- Education > Educational Setting > Online (0.54)
- Education > Educational Technology > Educational Software > Computer Based Training (0.54)
Cognitive Master Teacher
Krishnapuram, Raghu (IBM Research) | Lastras, Luis A (IBM Watson Group) | Nitta, Satya (IBM Research)
The “Cognitive Master Teacher” is a result of discussions with teachers, members of educational institutions, government bodies and other thought leaders in the United States who have helped us shape its the requirements. It is conceived as a cloud-based and mobile-accessible personal agent that is readily available for teachers to use at anytime and assist them with various issues related to day-to-day teaching activities as well as professional development.
- Education > Educational Setting (0.71)
- Education > Educational Technology > Educational Software > Computer Based Training (0.30)