论文标题
学习调查的查询政策
Learning-Augmented Query Policies
论文作者
论文摘要
我们研究了如何在不确定性下计算的模型中使用(可能是机器学习的)预测,其中算法可以查询未知数据。目标是最大程度地减少解决问题所需的查询数量。我们考虑了基本问题,例如找到相交元素集的最小值或对它们进行分类(这些问题也可以用作(超级)图取向问题),以及最小跨越树问题。我们讨论了预测准确性和设计算法的不同措施,并保证了预测准确性的提高,并且相对于非常差的预测质量,这些措施具有稳健性。这些措施是直观的,对于涉及不确定性间隔的投入可能会引起人们的普遍兴趣。我们表明我们的预测是可以学习的。我们还为最小跨越树问题提供了新的结构见解,无论预测如何,它们在可探索的不确定性的背景下可能很有用。我们的结果证明,在可探索的不确定性模型中,不受信任的预测可以规避已知的下限。我们通过实验证实算法的性能来补充结果。
We study how to utilize (possibly machine-learned) predictions in a model for computing under uncertainty in which an algorithm can query unknown data. The goal is to minimize the number of queries needed to solve the problem. We consider fundamental problems such as finding the minima of intersecting sets of elements or sorting them (these problems can also be phrased as (hyper)graph orientation problems), as well as the minimum spanning tree problem. We discuss different measures for the prediction accuracy and design algorithms with performance guarantees that improve with the accuracy of predictions and that are robust with respect to very poor prediction quality. These measures are intuitive and might be of general interest for inputs involving uncertainty intervals. We show that our predictions are PAC learnable. We also provide new structural insights for the minimum spanning tree problem that might be useful in the context of explorable uncertainty regardless of predictions. Our results prove that untrusted predictions can circumvent known lower bounds in the model of explorable uncertainty. We complement our results by experiments that empirically confirm the performance of our algorithms.