Definition
This approach moves beyond simple human-in-the-loop labeling. It involves bidirectional knowledge transfer: humans correct model errors while the model assists humans in identifying patterns or automating tedious tasks. It fosters a symbiotic relationship where the system adapts to human preferences, and humans refine their skills through model insights. It is particularly useful in domains requiring nuanced judgment and continuous adaptation.
Summary
A collaborative learning paradigm where humans and machines continuously teach and learn from each other to improve performance.
Key Concepts
- Bidirectional learning
- Human-AI collaboration
- Adaptive systems
- Continuous improvement
Use Cases
- Interactive annotation tools
- Personalized recommendation tuning
- Expert-in-the-loop medical diagnosis