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Beginnt 4 June 2026 07:21

Endet 4 June 2026

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Formal Models of Machine Teaching Without Collusion

Discover the key insights of formal models in machine teaching without the influence of collusion with Sandra Zilles, a renowned expert from the University of Regina. Engage with advanced concepts and theoretical perspectives on building trustworthy AI systems. Perfect for enthusiasts of artificial intelligence and computer science, this talk.
Simons Institute via YouTube

Simons Institute

6076 Kurse


55 minutes

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Übersicht

Discover the key insights of formal models in machine teaching without the influence of collusion with Sandra Zilles, a renowned expert from the University of Regina. Engage with advanced concepts and theoretical perspectives on building trustworthy AI systems.

Perfect for enthusiasts of artificial intelligence and computer science, this talk provides valuable knowledge curated for YouTube audiences.

Lehrplan

  • Introduction to Machine Teaching
  • Definitions and fundamental concepts
    Historical context and evolution
  • Formal Models of Machine Teaching
  • Key frameworks and methodologies
    Comparison with traditional machine learning models
  • Trust and Collusion in Machine Teaching
  • Defining trust in AI systems
    Identifying collusion risks and mitigation strategies
  • Non-Collusive Teaching Strategies
  • Designing trustworthy teaching models
    Case studies of successful non-collusive implementations
  • Mathematical Foundations
  • Algorithmic approaches to teaching without collusion
    Theoretical limits and capabilities
  • Practical Applications
  • Real-world examples of machine teaching
    Industry scenarios and potential impact
  • Future Directions in Machine Teaching
  • Emerging trends and research areas
    Ethical considerations and policy implications
  • Conclusion and Discussion
  • Review of key concepts
    Open forum for questions and future inquiry proposals

Fachgebiete

Computer Science