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Resources

Conference Paper by Adrian Weller

Challenges for Transparency

ICML Workshop on Human Interpretability in Machine Learning (WHI 2017), Sydney, NSW, Australia

Transparency is often deemed critical to enable effective real-world deployment of intelligent systems. Yet the motivations for and benefits of different types of transparency can vary significantly depending on context, and objective measurement criteria are difficult to identify. We provide a brief survey, suggesting challenges and related concerns. We highlight and review settings where transparency may cause harm, discussing connections across privacy, multi-agent game theory, economics, fairness and trust.

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