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1
Introduction
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Stochastic convex optimization
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Private empirical risk minimization
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Private stochastic convex optimization
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Snowball SGT
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Privacy amplification
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Reducing sensitivity
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In iterative localization
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Strongly convex
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Summary
Description:
Explore the cutting-edge realm of private stochastic convex optimization in this 24-minute conference talk presented at the Association for Computing Machinery (ACM). Delve into key concepts such as stochastic convex optimization, private empirical risk minimization, and privacy amplification. Learn about the innovative Snowball SGT algorithm and its applications in reducing sensitivity and iterative localization. Gain insights into strongly convex problems and their implications for privacy-preserving optimization techniques. Discover how these advanced methods can achieve optimal rates in linear time, revolutionizing the field of machine learning and data analysis while maintaining privacy guarantees.

Private Stochastic Convex Optimization: Optimal Rates in Linear Time

Association for Computing Machinery (ACM)
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