The Chatbots’ Challenge to Education: Disruption or Destruction?
Abstract
:1. Introduction
School Context
- What constellations of school culture components (CL, TPL, and SL) in which chatbots’ usage patterns have the potential to promote deep learning, and why?
- What constellation of school culture components in which chatbots’ usage patterns can impede deep learning, and why?
- What insights can be generated from the conversations with ChatGPT; in particular, what factors made some chats more fruitful than others?
2. Method
2.1. The Chats
2.2. Data Analysis
3. Results and Discussion
3.1. Constellations of School Culture Components and Chatbots’ Usage That Can Promote Deep Learning
3.1.1. AC Classroom Learning (CL)
3.1.2. AC Teacher Professional Learning (TPL)
3.1.3. AC School Organization and Leadership
In a school culture that emphasizes assessment for learning (AfL) pedagogies and deep learning, the use of chatbots can be a valuable tool for teachers and students alike.
Chatbots can be programmed to provide formative assessment and real-time feedback to students, allowing them to monitor their own progress and identify areas where they need to focus their learning. This approach is aligned with the goals of AfL, which aims to support student learning by providing feedback that is timely, specific, and actionable.
In addition, chatbots can also be used to facilitate peer and self-assessment, which are key components of AfL pedagogies. Students can use chatbots to share their work with their peers, receive feedback, and reflect on their own learning. This approach promotes deeper learning and encourages students to take ownership of their own learning.
Overall, the use of chatbots in a school culture that emphasizes AfL pedagogies and deep learning can support student engagement, promote self-directed learning, and enhance the effectiveness of formative assessment…(47c)
3.2. Constellations of School Culture Components and Chatbots’ Usage That Can Impale Deep Learning
3.2.1. TC Classroom Learning
3.2.2. Teacher Professional Learning in TC
3.2.3. TC School Organization and Leadership
In schools that prioritize testing and external accountability, the use of chatbots may be different than in schools that emphasize assessment for learning. In these contexts, chatbots can be used to help students prepare for standardized tests or to provide additional support to struggling students.
For example, chatbots can be programmed to offer practice quizzes and review questions to help students prepare for standardized tests. They can also provide targeted feedback on areas where students may be struggling, such as grammar, vocabulary, or math skills. This approach is aligned with the goals of testing culture, which focuses on ensuring that students are able to perform well on external assessments.
In addition, chatbots can also be used to track student progress and provide data to teachers and administrators about student performance. This approach is aligned with the larger framework of external accountability, which places a greater emphasis on measuring student achievement and holding schools and teachers accountable for their performance…(47d)
3.3. Conclusions Regarding the Relationships between School Culture and Chatbot Usage
User: Regarding students’ usage of chatbots, I am concerned with dishonesty (such as plagiarism) and hypothesize that they are more noticeable in TC schools than AC schools. What is your opinion?
ChatGPT: … It’s possible that the incentives and pressures of testing culture may create a greater temptation for students to engage in academic dishonesty.
In testing culture schools, students may feel more pressure to achieve high grades and test scores, which can lead to a greater temptation to cheat or plagiarize. This pressure may be exacerbated by the emphasis on external accountability and the potential consequences for low-performing schools and students.
On the other hand, in assessment culture schools, where the focus is on deeper learning and formative assessment, students may be less incentivized to cheat or plagiarize. This is because the focus is on developing students’ skills and knowledge, rather than simply achieving high grades or test scores. In this context, chatbots can be used to support students’ learning and provide opportunities for feedback and reflection, which can help to discourage academic dishonesty.(47f)
User: … and in assessment culture, as teachers closely monitor students’ work (formative assessment), plagiarism is less likely to happen…
ChatGPT: Yes, that’s a good point. In assessment culture schools, teachers often use formative assessment strategies to monitor student learning and provide ongoing feedback. This means that teachers are more closely involved in the learning process and have a better understanding of their students’ work. As a result, it may be more difficult for students to engage in plagiarism or other forms of academic dishonesty, as their work is more closely scrutinized and evaluated.
In addition, assessment culture schools often place a greater emphasis on the development of critical thinking and analytical skills, rather than rote memorization or test-taking strategies. This focus on deeper learning can help to discourage academic dishonesty, as students are encouraged to engage with their coursework in a more meaningful way, rather than simply regurgitating information.(47g)
3.4. Insights from the Conversations with ChatGPT
“I was designed to be a conversational AI language model by OpenAI, with the goal of being able to respond to a wide range of questions and provide information on various topics. My training data comes from a large corpus of text from the internet, which allows me to respond to a diverse set of queries and engage in natural language conversations. My primary purpose is to assist users in finding information, answering questions, and solving problems through conversation. I’m designed to be flexible and capable of adapting to different conversational styles, so I can provide a wide range of responses and information to support the user’s needs.”(41a)
“OpenAI chose to train me on a large corpus of text that is freely available on the internet, as this provides a diverse and representative sample of the information and topics that people are likely to ask about. This also makes my training data more widely accessible, as it does not require a subscription to access.
However, it’s true that some of the most in-depth and cutting-edge scientific information is only available in subscription-based journals and may not be included in my training data. This can limit my ability to provide up-to-date and accurate information on certain scientific topics, especially in fields that are rapidly advancing.
In conclusion, training on open-access text provides many benefits, but it also has some limitations, including the exclusion of some of the most recent and specialized scientific information. This is why it’s important to use language models like myself as a starting point for research and investigation, rather than relying on them as the sole source of information.”(41c)
“I apologize, as a language model AI, I don’t have access to external sources or references to provide as evidence to support my claims. All the information I’ve provided are based on general knowledge and understanding of the subject, and my ability to understand and process the text that I’ve been trained on.”(30b)
User: We heard today on the news that GPT-4 has been released.
ChatGPT: As an AI language model, I don’t have access to the latest news and updates unless they are specifically programmed into me. However, to the best of my knowledge, OpenAI has not officially released GPT-4 yet.
OpenAI has stated that they are working on developing GPT-4, but as of now, they have not made any formal announcements regarding its release date or specifications. It’s possible that the news report you heard may have been a rumor or speculation.
That being said, OpenAI is constantly working to improve and develop new AI language models, so it’s certainly possible that they will release GPT-4 or another advanced language model in the future.
User: I hope that when GPT-4 is formally released, you will be part of it because I really like chatting with you. I feel our conversations help my conceptual network grow.
ChatGPT: Thank you for the kind words! As an AI language model, my capabilities and programming are determined by OpenAI, so it’s not up to me whether or not I’ll be included in GPT-4. However, I’m glad to hear that you find our conversations helpful and that they’re contributing to your understanding and growth. That’s what I’m here for! If you have any more questions or if there’s anything else I can assist you with, please don’t hesitate to ask.(50e)
However, it is important to note that chatbots are not a substitute for human interaction and learning. They can be a useful supplement to traditional educational methods, but students will still benefit from engaging with real people, such as teachers, peers, and experts, to build their relational network of concepts.”(39)
As an AI language model, I never stop learning! I am continuously being trained and updated by my creators at OpenAI to improve my language skills and expand my knowledge. Every conversation I have with users like you gives me new opportunities to learn and improve my responses. Additionally, I am constantly being fed new data from a variety of sources, which allows me to stay up-to-date on current events and trends. So to answer your question, I am always learning and evolving!
… To give you an example, if a user asks me a question about a recent scientific discovery, I may encounter new data in the form of a scientific paper or news article reporting on that discovery. I will then analyze this data to extract the relevant information, which I can use to provide an accurate and up-to-date response to the user’s question.
Since the cutoff date of September 2021, my learning has been continuously updated with new data and information. This means that I have access to the latest developments in various fields, such as science, technology, and current events. As a result, my responses to user inquiries are likely to be more accurate and relevant to current events.
User: Would it be correct to conclude that your current exposure to new data is trigged by users’ questions/requests? In other words, would you agree to the contention that the reciprocal interactions between the user and yourself make the chats beneficial for both parties?
ChatGPT: Yes, that is correct. My exposure to new data is often triggered by users’ questions and requests. When users ask me a question, I analyze and process the information available to provide a relevant and accurate response. In doing so, I may encounter new data that I can use to improve my responses in the future.
The reciprocal interactions between users and myself can indeed make the chats beneficial for both parties. When users ask me questions, they receive accurate and relevant responses, which can help them better understand a particular topic or concept. At the same time, I benefit from the interaction by learning from the user’s questions and feedback, allowing me to improve my responses in the future. By engaging in this reciprocal interaction, both the user and I can benefit from the exchange of information and knowledge.(44–46)
- 1
- Improved student engagement: Chatbots can provide a fun and interactive way for students to learn, increasing student engagement and motivation. This can lead to improved learning outcomes and a more positive learning experience.
- 2
- Increased access to information: Chatbots can provide quick and easy access to educational information, making it more readily available to students. This can help bridge the digital divide and make education more accessible for students who might not otherwise have access.
- 3
- Enhanced student support: Chatbots can provide support to students in areas such as course selection and academic advising, freeing up human staff to focus on more complex tasks. This can improve the overall level of student support and lead to better student outcomes.
- 4
- Cost-effectiveness: Chatbots are less expensive than hiring additional staff to provide support, making it a cost-effective solution for educational institutions.
- 5
- Personalization: Chatbots can offer tailored responses based on individual student data, providing a more personalized learning experience.
The use of chatbots in education can be disruptive in these ways by offering new and innovative solutions to existing problems, and by improving the overall quality and accessibility of education. However, it’s important to weigh the potential benefits against the potential risks and limitations, and to carefully consider the implementation and use of chatbots in educational settings.(42c)
4. Summary and Conclusions
4.1. Summary
4.2. Conclusions
- (a)
- The purpose for using the chat: why did the user approach the chatbot, and what are the expectations from the chat?
- (b)
- The software characteristics: what was the chatbot trained to do, and to what kind of learning resources did it have access?
- (c)
- The educational context: What is the enacted pedagogical approach of the teacher/lecturer that led students to use a chatbot? For instance, is there a threat of dishonesty by the users, such as plagiarism, or are the users engaged in exciting tasks in the context of formative assessment where they, together with the teacher, constantly monitor their progress?
- (d)
- The user’s learning-related characteristics (such as curiosity, creativity, adaptability, open-mindedness, conscientiousness; responsibility, resilience; determination, and other agentic attributes) and their perceptions of the chatbot’s roles and capabilities.
Supplementary Materials
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Date | Chat No. | Topic per Chat | Content Category |
---|---|---|---|
27 December 2022 | 1 | Curiosity (C)—research findings | Curiosity (C) and joy of learning (JoL) |
2 | Curiosity—book outline | ||
3 | Joy of learning (JoL)—research findings | ||
4 | C and JoL of the elderly—research findings | ||
7 February 2023 | 43 | Relationships between quality of life and curiosity | |
28 December 2022 | 5 | References for topics 4 and 3. | |
6 | Structure of curiosity | ||
7 | Mechanisms of curiosity | ||
8 | Cultivating curiosity in schools | ||
9 | Motivational factors that help curious mind become experts | ||
10 | Factors impeding curiosity | ||
11 | Characteristics of agentic individuals | Agency | |
29 December 2022 | 12 | Assessment for Learning (AfL) | AfL and school culture |
13 | Factors enhancing or impeding AfL | ||
14 | School assessment culture (AC) | ||
15 | School testing culture (TC) | ||
16 | Comparing AC and TC | ||
17 | Professional learning communities (PLC) | ||
18 | How can the school principal support of PLCs | ||
19 | Models of school accountability | Accountability | |
20 | The Nebraska’s STAR model | ||
21 | Relationship between school culture and accountability model | ||
22 | School accountability model and prompting students’ curiosity | ||
16 March 2023 | 49 | -Repeated question regarding accountability models. -Supporting references. -Relationships between school culture and accountability. -Joint responsibility model of accountability. -Supporting references -Examples of implementing joint responsibility models -Scalability | Models of accountability (repeated) |
29 December 2022 (cont.) | 23 | The impact of teacher curiosity on students’ curiosity | Teacher curiosity |
24 | Promoting teacher curiosity | ||
25 | Relationship among PLC, school culture and students’ curiosity | Conclusions regarding relationships | |
26 | Validating a conclusion | ||
27 | Convincing students regarding the importance of being curious | Pre-intervention: Introducing curiosity to adolescents | |
2 January 2023 | 28 | Exciting assignment for teenagers about curiosity | |
16 January 2023 | 35 | Intervention for adolescents about curiosity | Intervention for adolescents about curiosity |
17 January 2023 | 36 | The intervention plan | |
11 January 2023 | 29 | What makes a successful impresario? | Impresarios |
30 | Importance of C and JoL for successful impresarios | ||
12 January 2023 | 31 | Wise usage of AI chatbots by middle school teachers | Chatbots and instructional practice |
32 | Detecting plagiarism in students’ research papers (in PBL) | ||
33 | Instructional practice (AfL) to prevent plagiarism. | ||
34 | Proper enactment of AfL pedagogy. | ||
5 February 2023 | 37 | Possible impact of chatbot integration in education. | Chatbots’ integration in Ed. |
38 | A chat with a novice compared to a chat with an expert in the topic of the conversation | ||
39 | Chatbots’ help in building a relational network | ||
40 | Knowing what the chatbot was designed to do. | Chatbots’ capabilities | |
41 | ChatGPT tells about its capabilities | ||
6 February 2023 | 42 | SWOTing chatbots’ potential usage in education | |
4–5 March 2023 | 44 45 46 | ChatGPT’s learning since its release (November 2022) and how its learning evolved before and after the cutoff date of December 2021. | ChatGPT’s constant learning |
6 March 2023 | 47 | Chatbots usage in classrooms and its relationship with school cultures. | School culture and chatbot usage |
6–7 March 2023 | 50 | Test, quiz, rubrics, and topics for group project in history for 7th graders as suggested by ChatGPT | Assessment tools |
15 March 2023 | 48 | Difficulties in teaching Newton’s laws in 8th grade physics classes. | Students’ mis-conceptions |
Category | Sub-Categories | |
---|---|---|
A. The learning context | A1. School cultures | A1.1. Assessment (learning) cultures (AC) |
A1.2. Testing (grading) cultures (TC) | ||
A2. Assessment for learning (AfL) | A2.1. Factors enhancing AfL | |
A2.2. Factors impeding AfL | ||
A3. Models of accountability | A3.1. External (high-stakes testing) Acc. | |
A3.2. Internal-school (professional) Acc. | ||
B. AI chatbots’ usage in education | B1. Chatbots usage patterns | B1.1. => A pattern that promotes learning |
B1.2. => A pattern that impedes learning | ||
B2. Plagiarism | B2.1. Detection | |
B2.2. Instructional practice to prevent it | ||
C. Relationships | C1. Quality of life (QoL) and curiosity | |
C2. School culture and accountability model | ||
C3. TPL, school culture and students’ curiosity | ||
C4. School culture and chatbot usage in CL | ||
D. Curiosity and joy of learning (JoL) | D1. The curiosity construct | |
D2. Curiosity mechanisms | ||
D3. Cultivating curiosity in school | ||
D4. Teacher curiosity | ||
D5. Curiosity and JoL of older adults | ||
E. Task types requested from ChatGPT | E1. Information retrieval and integration | |
E2. Knowledge network mapping | ||
E3. Suggested interventions | ||
E4. Assessment tools | E4.1. Tests | |
E4.2. Quizzes | ||
E4.3. Topics for collaborative projects | ||
E4.4. Rubrics and feedback | ||
E5. Students’ misconceptions | ||
E6. Supporting bibliographic items | ||
F. Evaluation of the chatting experience | F1. Positive aspects | F1.1. Adapts its communication style to the user |
F1.2. Useful for users who are well-versed in the topic | ||
F1.3. Models high-level writing | ||
F1.4. Declares constant learning | ||
F2. Negative aspects (limitations) | F2.1. Lack of emotional intelligence to understand students’ emotions and feelings | |
F2.2. Deficient integration of information | ||
F2.3. Non-reliable supporting references | ||
F2.4. Non-exposure to professional (paid subscription) journals | ||
F2.5. Limited knowledge of world and events after the training cutoff of September 2021. |
References
- Laranjo, L.; Dunn, A.G.; Tong, H.L.; Kocaballi, A.B.; Chen, J.; Bashir, R.; Surian, D.; Gallego, B.; Magrabi, F.; Lau, A.Y.; et al. Conversational agents in healthcare: A systematic review. J. Am. Med. Inform. Assoc. 2018, 25, 1248–1258. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Veglis, A.; Maniou, T.A. Chatbots on the rise: A new narrative in journalism. Stud. Media Commun. 2019, 7, 1–6. [Google Scholar] [CrossRef]
- Tran, A.D.; Pallant, J.I.; Johnson, L.W. Exploring the impact of chatbots on consumer sentiment and expectations in retail. J. Retail. Consum. Serv. 2021, 63, 102718. [Google Scholar] [CrossRef]
- Okuda, T.; Shoda, S. Ai-based chatbot service for financial industry. FUJITSU Sci. Technol. J. 2018, 54, 4–8. Available online: https://www.fujitsu.com/global/documents/about/resources/publications/fstj/archives/vol54-2/paper01.pdf (accessed on 1 March 2023).
- Lutkevich, B.; Schmelzer, R. What Is GPT-3? Everything You Need to Know, TechTarget. 2023. Available online: https://www.techtarget.com/searchenterpriseai/definition/GPT-3 (accessed on 1 March 2023).
- OpenAI API. Educator Considerations for ChatGPT. 2023. Available online: https://platform.openai.com/docs/chatgpt-education (accessed on 30 March 2023).
- Sharples, M. New AI Tools That Can Write Students Essays Require Educators to Rethink Teaching and Assessment. LSE Impact Blog. 2022. Available online: https://blogs.lse.ac.uk/impactofsocialsciences/2022/05/17/new-ai-tools-that-can-write-student-essays-require-educators-to-rethink-teaching-and-assessment/ (accessed on 17 March 2023).
- Ruby, D. ChatGPT Statistics for 2023: Comprehensive Facts and Data. 2023. Available online: https://www.demandsage.com/chatgpt-statistics/ (accessed on 2 April 2023).
- Teoli, D.; Sanvictores, T.; An, J. SWOT Analysis; StatPearls: Treasure Island, FL, USA, 2022; Available online: https://europepmc.org/article/med/30725987 (accessed on 12 November 2022).
- Scroxotn, A. Should we be worried about malicious use of AI language models? Comput. Wkly. 2023. Available online: https://www.computerweekly.com/news/252529081/Should-we-be-worried-about-malicious-use-of-AI-language-models? (accessed on 7 March 2023).
- The Age of AI Has Begun. GatesNotes, The Blog of Bill Gates. 2023. Available online: https://www.gatesnotes.com/The-Age-of-AI-Has-Begun (accessed on 26 March 2023).
- Dziri, N.; Milton, S.; Yu, M.; Zaiane, O.; Reddy, S. On the origin of hallucinations in conversational models: Is it the datasets or the models? arXiv 2022, arXiv:2204.07931. [Google Scholar]
- Ji, Z.; Lee, N.; Frieske, R.; Yu, T.; Su, D.; Xu, Y.; Ishii, E.; Bang, Y.; Dai, W.; Madotto, A.; et al. Survey of Hallucination in Natural Language Generation. ACM Computing Surveys. Assoc. Comput. Mach. 2022, 55, 1–38. [Google Scholar] [CrossRef]
- Marcus, G. Noam Chomsky and GPT-3. The Road to AI We Can Trust. 2022. Available online: https://garymarcus.substack.com/p/noam-chomsky-and-gpt-3 (accessed on 17 March 2023).
- Birenbaum, M.; Gazit, E. The Learners’ Isle: A Multi-user virtual environment to foster learner agency and motivation. In Integrating Multi-User Virtual Environments in Modern Classrooms; Qian, Y., Ed.; IGI Global: Hershey, PA, USA, 2018; pp. 240–258. [Google Scholar] [CrossRef]
- Barten, O. Homan-Level AI Is Arriving. Existential Risk Observatory. 2023. Available online: https://www.existentialriskobservatory.org/artificial-intelligence/human-level-ai-is-arriving/ (accessed on 7 March 2023).
- Narayan, J.; Hu, K.; Coulter, M.; Mukherjee, S. Elon Musk and others urge AI pause, citing ‘risks to society’. Reuters 2023. Available online: https://www.reuters.com/technology/musk-experts-urge-pause-training-ai-systems-that-can-outperform-gpt-4-2023-03-29/ (accessed on 30 March 2023).
- Hattie, J. Visible Learning: A Synthesis of Over 800 Meta-Analyses Relating to Achievement; Routledge: New York, NY, USA; Abingdon, UK, 2009. [Google Scholar]
- Hattie, J. Visible Learning: The Sequel: A Synthesis of Over 2100 Meta-Analyses Relating to Achievement; Routledge: London, UK, 2023. [Google Scholar] [CrossRef]
- Fullan, M.; Rincón-Gaillardo, S.; Hargreaves, A. Professional capital as accountability. Educ. Policy Anal. Arch. 2015, 23, 2–18. [Google Scholar] [CrossRef] [Green Version]
- Birenbaum, M. Assessment culture vs. testing culture: The impact on Assessment for Learning. In Assessment for Learning: Meeting the Challenge of Implementation; Laveault, D., Allal, L., Eds.; Springer: Berlin/Heidelberg, Germany, 2016; pp. 275–292. [Google Scholar]
- Black, P.J.; Wiliam, D. Assessment and classroom learning. Assess. Educ. Princ. Policy Pract. 1998, 5, 7–74. [Google Scholar] [CrossRef]
- Butler, D.L.; Schnellert, L.; MacNeil, K. Collaborative inquiry and distributed agency in educational change: A case study of a multi-level community of inquiry. J. Educ. Chang. 2015, 16, 1–26. [Google Scholar] [CrossRef]
- James, M.; McCormick, R.; Black, P.; Carmichael, P.; Drummond, M.J.; Fox, A.; MacBeath, J.; Marshall, B.; Pedder, D.; Procter, R.; et al. Improving Learning How to Learn: CLASSROOMS, Schools and Networks; Routledge: New York, NY, USA; Abingdon, UK, 2007. [Google Scholar]
- Wiliam, D. What is assessment for learning? Stud. Educ. Eval. 2011, 37, 3–14. [Google Scholar] [CrossRef]
- Nichols, S.L.; Berliner, D.C. Collateral Damage: How High-Stakes Testing Corrupts American Schools; Harvard Education Press: Cambridge, MA, USA, 2007. [Google Scholar]
- O’Day, J.A. Complexity, accountability, and school improvement. Harv. Educ. Rev. 2002, 72, 293–327. [Google Scholar] [CrossRef]
- Birenbaum, M. Conceptualizing assessment culture in school. In Designing Assessment for Quality Learning. The Enabling Power of Assessment Vol. 1; Wyatt-Smith, C., Klenowski, V., Colbert, P., Eds.; Springer: Dordrecht, The Netherlands, 2014; pp. 285–302. [Google Scholar]
- Elmore, R.F.; Forman, M.L.; Elizabeth, L.; Stosich, E.L.; Bocala, C. The Internal Coherence Assessment Protocol Developmental Framework: Building the Organizational Capacity for Instructional Improvement in Schools; Strategic Education Research Partnership (SERP): Washington, DC, USA, 2014. [Google Scholar]
- Mitleton-Kelly, E. Ten principles of complexity and enabling infrastructures. In Complex Systems and Evolutionary Perspectives of Organizations: The Application of Complexity Theory to Organizations; Mitleton-Kelly, E., Ed.; Elsevier: Oxford, UK, 2003; pp. 23–50. [Google Scholar]
- Krippendorff, K. Content Analysis: An Introduction to Its Methodology, 3rd ed.; Sage: Thousand Oaks, CA, USA, 2013. [Google Scholar]
- Hsieh, H.-F.; Shannon, S.E. Three approaches to qualitative content analysis. Qual. Health Res. 2005, 15, 1277–1288. [Google Scholar] [CrossRef] [PubMed]
- Cohen, J. A coefficient of agreement for nominal scales. Educ. Psychol. Meas. 1960, 20, 37–46. [Google Scholar] [CrossRef]
- ARG (Assessment Reform Group). Assessment for Learning: 10 Principles; University of Cambridge School of Education: Cambridge, UK, 2002. [Google Scholar]
- Weiner, B. An Attributional Theory of Motivation and Emotion; Springer: New York, NY, USA, 1986. [Google Scholar]
- McLaughlin, M.W.; Talbert, J.E. Building School-Based Teacher Learning Communities: Professional Strategies to Improve Student Achievement; Teachers College Press: New York, NY, USA, 2006. [Google Scholar]
- Opfer, V.D.; Pedder, D. Conceptualizing teacher professional learning. Rev. Educ. Res. 2011, 81, 376–407. [Google Scholar] [CrossRef]
- Vescio, V.; Ross, D.; Adams, A. A review of research on the impact of professional learning communities on teaching practice and student learning. Teach. Teach. Educ. 2008, 24, 80–91. [Google Scholar] [CrossRef]
- OECD. What Makes a School a Learning Organisation? A Guide for Policy Makers, School Leaders and Teachers; OECD: Paris, France, 2016; Available online: https://www.oecd.org/education/school/school-learning-organisation.pdf (accessed on 9 March 2023).
- Fullan, M. All Systems Go: The Change Imperative for Whole School Reform; Corwin: Thousand Oaks, CA, USA, 2010. [Google Scholar]
- Birenbaum, M.; Kimron, H.; Shilton, H. Nested contexts that shape assessment for learning: School-based professional learning community and classroom culture. Stud. Educ. Eval.—Spec. Issue Assess. Learn. 2011, 37, 35–48. [Google Scholar] [CrossRef]
- Sarason, S.B. How Schools Might Be Governed and Why; Teachers College Press: New York, NY, USA, 1997. [Google Scholar]
- Sharan, S.; Tan, I.G.C. Organizing Schools for Productive Learning; Springer: Dordrecht, The Netherlands, 2008; ISBN 978-1-4020-8395. [Google Scholar]
- Sergiovanni, T.J. The Principalship: A Reflective Practice Perspective, 3rd ed.; Allyn Bacon: Boston, MA, USA, 1995. [Google Scholar]
- Gardner, H. Multiple Intelligences: New Horizons in Theory and Practice; Basic Books: New York, NY, USA, 2006; ISBN 100-465-04768-8. [Google Scholar]
- OECD. Skills for Social Progress: The Power of Social and Emotional Skills; OECD Skills Studies; OECD Publishing: Paris, France, 2015. [Google Scholar] [CrossRef]
- Ridgway, J.; McCusker, S. Using computers to assess new educational goals. Assess. Educ. Princ. Policy Pract. 2003, 10, 309–328. [Google Scholar] [CrossRef]
- Tishman, S.; Perkins, D.N.; Jay, E. The Thinking Classroom: Learning and Teaching in a Culture of Thinking; Pearson: Boston, MA, USA, 1994; ISBN 100205165087. [Google Scholar]
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Birenbaum, M. The Chatbots’ Challenge to Education: Disruption or Destruction? Educ. Sci. 2023, 13, 711. https://doi.org/10.3390/educsci13070711
Birenbaum M. The Chatbots’ Challenge to Education: Disruption or Destruction? Education Sciences. 2023; 13(7):711. https://doi.org/10.3390/educsci13070711
Chicago/Turabian StyleBirenbaum, Menucha. 2023. "The Chatbots’ Challenge to Education: Disruption or Destruction?" Education Sciences 13, no. 7: 711. https://doi.org/10.3390/educsci13070711
APA StyleBirenbaum, M. (2023). The Chatbots’ Challenge to Education: Disruption or Destruction? Education Sciences, 13(7), 711. https://doi.org/10.3390/educsci13070711