Sure, here are single sentence questions and solutions for each of the three problems related to human feedback, error, decisions, and trust in AI and machine learning:
1. The Transparency Problem
Question: How can we make AI and machine learning systems transparent and explainable?
Solution: Develop a framework based on interpretable models, human-AI collaboration, and explainable algorithms to enable humans to understand and trust the outputs of these systems.
2. The Fairness Problem
Question: How can we ensure that AI and machine learning systems are unbiased and promote fairness?
Solution: Develop a mathematical framework for detecting and mitigating bias in training data and algorithms, and for ensuring that the resulting system promotes fairness in decision-making.
3. The Human-Machine Interaction Problem
Question: How can we optimize human-machine interaction in HITL systems?
Solution: Develop a mathematical framework for designing interfaces and interaction techniques that are intuitive, efficient, and effective for humans to use, and that enable effective collaboration between humans and machines in a variety of contexts.