具有预测和非凸损失的在线优化

Yiheng Lin, Gautam Goel, A. Wierman
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引用次数: 2

摘要

我们研究在线优化设置,其中在线学习者寻求优化每轮命中成本,这可能是非凸的,同时在回合之间改变动作时会产生移动成本。我们的问题是:在什么一般情况下,在线学习者有可能利用对未来成本函数的预测来实现接近最优的成本?先前的工作已经提供了接近最优的在线算法,用于特定的碰撞和切换成本的假设组合,但没有一般的结果是已知的。在这项工作中,我们给出了两个一般的充分条件来指定命中和移动成本之间的关系,这保证了一个新的算法,同步固定地平线控制(SFHC),达到1+O(1/w)的竞争比,其中w是学习者可用的预测数量。我们的条件不要求成本函数是凸的,我们也得到了非凸命中和移动成本的竞争比结果。我们的结果为带移动成本的在线非凸优化提供了第一个恒定的、无维的竞争比。我们还给出了一个不满足充分条件的自然问题凸体追逐(CBC)的例子,并证明了任何在线算法都不可能具有收敛于1的竞争比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Optimization with Predictions and Non-convex Losses
We study online optimization in a setting where an online learner seeks to optimize a per-round hitting cost, which may be non-convex, while incurring a movement cost when changing actions between rounds. We ask: under what general conditions is it possible for an online learner to leverage predictions of future cost functions in order to achieve near-optimal costs? Prior work has provided near-optimal online algorithms for specific combinations of assumptions about hitting and switching costs, but no general results are known. In this work, we give two general sufficient conditions that specify a relationship between the hitting and movement costs which guarantees that a new algorithm, Synchronized Fixed Horizon Control (SFHC), achieves a 1+O(1/w) competitive ratio, where w is the number of predictions available to the learner. Our conditions do not require the cost functions to be convex, and we also derive competitive ratio results for non-convex hitting and movement costs. Our results provide the first constant, dimension-free competitive ratio for online non-convex optimization with movement costs. We also give an example of a natural problem, Convex Body Chasing (CBC), where the sufficient conditions are not satisfied and prove that no online algorithm can have a competitive ratio that converges to 1.
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