AI

Near-Optimal Algorithms for Private Online Optimization in the Realizable Regime

1 Mins read

*=Equal Contributors

We consider online learning problems in the realizable setting, where there is a zero-loss solution, and propose new Differentially Private (DP) algorithms that obtain near-optimal regret bounds. For the problem of online prediction from experts, we design new algorithms that obtain near-optimal regret where is the number of experts. This significantly improves over the best existing regret bounds for the DP non-realizable setting which are . We also develop an adaptive algorithm for the small-loss setting with regret where is the total loss of the best expert. Additionally, we consider DP online convex optimization in the realizable setting and propose an algorithm with near-optimal regret , as well as an algorithm for the smooth case with regret , both significantly improving over existing bounds in the non-realizable regime.


Source link

Related posts
AI

Top AI Coding Agents in 2025

3 Mins read
AI-powered coding agents have significantly transformed software development in 2025, offering advanced features that enhance productivity and streamline workflows. Below is an…
AI

Anthropic Introduces Constitutional Classifiers: A Measured AI Approach to Defending Against Universal Jailbreaks

2 Mins read
Large language models (LLMs) have become an integral part of various applications, but they remain vulnerable to exploitation. A key concern is…
AI

Introducing the MIT Generative AI Impact Consortium | MIT News

7 Mins read
From crafting complex code to revolutionizing the hiring process, generative artificial intelligence is reshaping industries faster than ever before — pushing the…

 

 

Leave a Reply

Your email address will not be published. Required fields are marked *