Emergent Mind

The Interplay of Learning, Analytics, and Artificial Intelligence in Education

(2403.16081)
Published Mar 24, 2024 in cs.CY and cs.AI

Abstract

This paper presents a multi dimensional view of AI's role in learning and education, emphasizing the intricate interplay between AI, analytics, and the learning processes. Here, I challenge the prevalent narrow conceptualization of AI as stochastic tools, as exemplified in generative AI, and argue for the importance of alternative conceptualisations of AI. I highlight the differences between human intelligence and artificial information processing, the cognitive diversity inherent in AI algorithms, and posit that AI can also serve as an instrument for understanding human learning. Early learning sciences and AI in Education research, which saw AI as an analogy for human intelligence, have diverged from this perspective, prompting a need to rekindle this connection. The paper presents three unique conceptualizations of AI in education: the externalization of human cognition, the internalization of AI models to influence human thought processes, and the extension of human cognition via tightly integrated human-AI systems. Examples from current research and practice are examined as instances of the three conceptualisations, highlighting the potential value and limitations of each conceptualisation for education, as well as the perils of overemphasis on externalising human cognition as exemplified in today's hype surrounding generative AI tools. The paper concludes with an advocacy for a broader educational approach that includes educating people about AI and innovating educational systems to remain relevant in an AI enabled world.

Overview

  • The paper critically examines the integration of AI with learning analytics in education, advocating for a deep understanding of AI's role beyond mere computational tools.

  • It contrasts human intelligence with artificial information processing, emphasizing the need to appreciate cognitive diversity and emotional and social competencies in educational AI applications.

  • The study revisits the evolution of AI in education, highlighting the transition from AI as mere tools to their conceptualization as extensions of human cognition, with practical applications and limitations.

  • The future of education, with AI at its core, is discussed, focusing on adapting educational systems and assessment methods to foster critical thinking, creativity, and adaptability among learners.

The Interplay of Learning, Analytics, and Artificial Intelligence in Education: A Critical Examination

Introduction

In the sphere of education, the integration of AI with learning analytics represents a significant shift towards understanding and optimizing the learning process. Cukurova's extensive examination, delivered at the ACM International Conference on Learning Analytics & Knowledge LAK2024, explores the nuanced interrelation between AI, analytics, and learning. Through a critical lens, this paper challenges the reductionist view of AI as mere stochastic tools and advocates for a broader understanding, notably through the lenses of externalization, internalization, and extension of human cognition by AI.

Human Intelligence vs. Artificial Information Processing

The discussion initiates by contrasting human intelligence's complexity with the current operations of artificial information processing systems, such as language models including ChatGPT. Highlighting the limitations inherent in tools that simply mimic decision-making through data analysis and prediction, Cukurova underscores the rich, multifaceted nature of intelligence that extends beyond computational capabilities to include emotional and social competencies. This section eloquently argues for the appreciation of the cognitive diversity AI models bring into educational contexts, suggesting their potential not only as tools but as mediums for deeper understanding of human cognition.

AI in Education: Beyond Tool Application

Delving into the educational sector, the paper revisits the history and evolution of AI’s role within it, noting a drift from early congeniality between learning sciences and AI towards a narrower application of AI as tools. The author introduces three conceptualizations: AI as tools for externalizing cognition, AI models for internalization and influence on human mental models, and AI as extensions of human cognition. Each conceptualization is dissected, offering insights into practical applications, potential benefits, and inherent limitations, drawing attention to the importance of maintaining a balance that fosters enriched learning experiences without over-reliance on AI's decision-making capabilities.

The Intricacies of AI Implementation in Educational Systems

This section provides a critical overview of the slow adoption and implementation of AI in mainstream education, attributing the sluggish pace to multifaceted challenges encompassing policy landscapes, institutional governance, and the socio-ethical implications of deploying AI in educational settings. The discourse extends into an intriguing analysis of intelligent tutoring systems (ITSs), highlighting their successes and limitations within real-world educational settings and advocating for nuanced, context-aware integrations of AI that resonate with the complex dynamics of learning environments.

Potential Futures: Education in an AI-Dominant Era

Speculating on future developments, the paper addresses the broader implications of AI's ubiquity in education, emphasizing the importance of educating future generations about AI and innovating educational systems to adapt to AI-driven changes. Here, particular attention is given to rethinking assessment methods, advocating for process-oriented evaluations that better align with the objectives of education in fostering critical thinking, creativity, and adaptability among learners.

Conclusions and Future Directions

In conclusion, Cukurova's paper serves as a compelling call to action for researchers, educators, and policymakers to reevaluate and broaden their perspectives on AI’s role in education. By moving beyond a tool-centric view towards conceptualizing AI as a catalyst for understanding, augmenting, and expanding human cognition, the paper sets the foundation for future explorations that could lead to more holistic and impactful educational practices in an AI-integrated world.

Acknowledgements and References

Finally, the paper's acknowledgments and extensive references provide a window into the collaborative nature of scholarly research and offer readers a comprehensive resource for further exploration into the intersections of AI, learning analytics, and education.

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