We consider online prediction of a binary sequence with expert advice. For this setting, we devise label-efficient forecasting algorithms, which use a selective sampling scheme that enables collecting much fewer labels than standard procedures, while still retaining optimal worst-case regret guarantees. These algorithms are based on exponentially weighted forecasters, suitable for settings with and without a perfect expert. For a scenario where one expert is strictly better than the others in expectation, we show that the label complexity of the label-efficient forecaster scales roughly as the square root of the number of rounds. Finally, we present numerical experiments empirically showing that the normalized regret of the label-efficient forecaster can asymptotically match known minimax rates for pool-based active learning, suggesting it can optimally adapt to benign settings.
翻译:我们考虑用专家建议在线预测二进制序列。 对于这一设置,我们设计标签效率预测算法,使用选择性抽样方法,能够收集比标准程序少得多的标签,同时仍然保留最佳最坏的遗憾保证。这些算法基于指数加权预测器,既适合完美专家的设置,又适合完美专家的设置。对于一个专家比其他专家期望的严格更好的假设,我们显示标签效率预测仪的标签复杂程度大致是轮数的平方根。最后,我们用实验经验来显示,标签效率预测器的正常遗憾可以与已知的集合式积极学习的微速率相匹配,表明它能够最适当地适应良性环境。