Machine Learning and Fairness
Originally a discipline limited to academic circles, machine learning is now increasingly mainstream, being used in more visible and impactful ways. While this growing field presents huge opportunities, it also comes with unique challenges, particularly regarding fairness.
Nearly every stage of the machine learning pipeline—from task definition and dataset construction to testing and deployment—is vulnerable to biases that can cause a system to, at best, underserve users and, at worst, disadvantage already disadvantaged subpopulations.
In this webinar led by Microsoft researchers Jenn Wortman Vaughan and Hanna Wallach, 15-year veterans of the machine learning field, you’ll learn how to make detecting and mitigating biases a first-order priority in your development and deployment of ML systems.
Together, you’ll explore:
- The main types of harm that can arise;
- The subpopulations most likely to be affected;
- The origins of these harms and strategies for mitigating them and some recently developed software tools to help.
Resource list:
- Machine Learning & AI | NYC (opens in new tab) (Research group)
- FATE: Fairness, Accountability, Transparency, and Ethics in AI (opens in new tab) (Research group)
- Transparency and Intelligibility Throughout the Machine Learning Life Cycle (opens in new tab) (webinar)
- Fairness-related harms in AI systems: Examples, assessment, and mitigation (opens in new tab) (webinar)
- Hanna Wallach (opens in new tab) (Researcher profile)
- Jennifer Wortman Vaughan (opens in new tab) (Researcher profile)
*This on-demand webinar features a previously recorded Q&A session and open captioning.
Explore more Microsoft Research webinars: https://aka.ms/msrwebinars (opens in new tab)
- 日期:
- 演讲者:
- Hanna Wallach, Jennifer Wortman Vaughan
- 所属机构:
- Microsoft Research
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Jennifer Wortman Vaughan
Senior Principal Researcher
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Hanna Wallach
Partner Research Manager
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接下来观看
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SITI 2022 - Reporting from the Ground
Speakers:- Manu Chopra,
- Rajesh A R,
- Sonal Agarwal