平滑在线优化与不可靠的预测

Daan Rutten, Nicolas H. Christianson, Debankur Mukherjee, A. Wierman
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引用次数: 6

摘要

我们研究平滑在线优化问题,其中决策者必须在赋范向量空间中依次选择点,以最小化每轮,非凸命中成本和回合之间切换决策成本的总和。决策者可以访问黑箱预言器,例如机器学习模型,它在每一轮中提供不可信且可能不准确的最佳决策预测。决策者的目标是利用预测,如果它们是准确的,同时保证性能不会比后见之明的最佳决策序列差太多,即使预测是不准确的。我们假定命中代价是全局α-多面体。我们提出了一种新的算法,自适应在线交换(AOS),并证明,对于可行δ > 0的大集合,如果预测是完美的,它是(1+δ)竞争的,同时即使预测是对抗性的,它也保持2~O (1/(α δ))的一致有界竞争比。进一步,我们证明了这种权衡是必要的,并且几乎是最优的,因为任何确定性算法在预测是完美的情况下具有(1+δ)竞争,在预测不准确时必须至少具有2~Ω (1/(α δ))竞争。事实上,我们在这种权衡中观察到一种独特的阈值类型行为:如果δ不在可行选项集合中,那么如果预测是完美的,则没有算法同时具有(1 + δ)竞争性,而当预测对任何ζ <∞不准确时,则没有算法同时具有ζ竞争性。此外,通过证明任何不使用内存的算法都无法从预测中获益,我们讨论了内存在AOS中是至关重要的。我们通过对微电网应用的数值研究来补充我们的理论结果。
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Smoothed Online Optimization with Unreliable Predictions
We examine the problem of smoothed online optimization, where a decision maker must sequentially choose points in a normed vector space to minimize the sum of per-round, non-convex hitting costs and the costs of switching decisions between rounds. The decision maker has access to a black-box oracle, such as a machine learning model, that provides untrusted and potentially inaccurate predictions of the optimal decision in each round. The goal of the decision maker is to exploit the predictions if they are accurate, while guaranteeing performance that is not much worse than the hindsight optimal sequence of decisions, even when predictions are inaccurate. We impose the standard assumption that hitting costs are globally α-polyhedral. We propose a novel algorithm, Adaptive Online Switching (AOS), and prove that, for a large set of feasible δ > 0, it is (1+δ)-competitive if predictions are perfect, while also maintaining a uniformly bounded competitive ratio of 2~O (1/(α δ)) even when predictions are adversarial. Further, we prove that this trade-off is necessary and nearly optimal in the sense that any deterministic algorithm which is (1+δ)-competitive if predictions are perfect must be at least 2~Ω (1/(α δ)) -competitive when predictions are inaccurate. In fact, we observe a unique threshold-type behavior in this trade-off: if δ is not in the set of feasible options, then no algorithm is simultaneously (1 + δ)-competitive if predictions are perfect and ζ-competitive when predictions are inaccurate for any ζ < ∞. Furthermore, we discuss that memory is crucial in AOS by proving that any algorithm that does not use memory cannot benefit from predictions. We complement our theoretical results by a numerical study on a microgrid application.
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