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1
Intro
2
What is algorithmic bias
3
Challenges
4
Stakeholder Consensus
5
Mutually Exclusive Measures
6
Accuracy Tradeoffs
7
Algorithms
8
Airbnb
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Accountability mechanisms
10
Policy implications
11
Questions
Description:
Explore the complex landscape of algorithmic fairness in this 38-minute talk by Suchana Seth at the Alan Turing Institute. Delve into various measures of fairness in predictive algorithms and their implications for technology policy and regulation. Examine the challenges in implementing these fairness measures and learn how they can be used to hold algorithms accountable. Gain insights from Seth's expertise as a physicist-turned-data scientist, covering topics such as algorithmic bias, stakeholder consensus, accuracy tradeoffs, and real-world examples like Airbnb. Discover the intersection of ethics and machine learning, and understand the importance of fairness, accountability, and transparency in AI systems. Engage with the evolving regulatory landscape for predictive algorithms and consider the broader implications for the future of ethical AI development and implementation.

In How Many Ways Can an Algorithm be Fair?

Alan Turing Institute
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