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Beginnt 4 June 2026 15:30
Endet 4 June 2026
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Übersicht
Lehrplan
- Introduction to Neural Network Interpretability
- Fundamentals of Combinatorial Interpretability
- The Feature Channel Coding Hypothesis
- Neural Networks and Boolean Expressions
- Code Interference in Neural Networks
- Methods for Mitigating Code Interference
- Experimental Approaches and Tools
- Advanced Techniques in Combinatorial Interpretability
- Case Studies and Applications
- Future Directions in Neural Computation Interpretability
- Final Project and Presentations
Overview of current interpretability techniques
Importance and challenges of interpretability in AI
Definition and concepts of combinatorial approaches in interpretation
Historical context and development of combinatorial methods
Introduction to the hypothesis
Theoretical foundation and significance
How neural networks represent and compute Boolean functions
Case studies and examples of Boolean computation in neural networks
Definition and analysis of code interference
Identifying natural limitations due to interference
Techniques and strategies to reduce interference effects
Practical applications and case studies
Tools and methodologies for combinatorial testing
Designing experiments to evaluate interpretability
Exploration of cutting-edge research and approaches
Integrating combinatorial methods with other interpretability strategies
Real-world applications of combinatorial interpretability
In-depth analysis of successful deployments and outcomes
Emerging trends and research opportunities
Open questions and potential areas for innovation
Guidelines and objectives for the final project
Presentation of findings and peer feedback sessions
Fachgebiete
Computer Science