The Pareto Regret Frontier
–Neural Information Processing Systems
Performance guarantees for online learning algorithms typically take the form of regret bounds, which express that the cumulative loss overhead compared to the best expert in hindsight is small. In the common case of large but structured expert sets we typically wish to keep the regret especially small compared to simple experts, at the cost of modest additional overhead compared to more complex others. We study which such regret trade-offs can be achieved, and how.
Neural Information Processing Systems
Mar-13-2024, 17:23:07 GMT
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