PAC Learnability of Scenario Decision-Making Algorithms: Necessary Conditions and Sufficient Conditions

IF 2.4 Q2 AUTOMATION & CONTROL SYSTEMS
Guillaume O. Berger;Raphaël M. Jungers
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引用次数: 0

Abstract

We investigate the Probably Approximately Correct (PAC) property of scenario decision algorithms, which refers to their ability to produce decisions with an arbitrarily low risk of violating unknown safety constraints, provided a sufficient number of realizations of these constraints are sampled. While several PAC sufficient conditions for such algorithms exist in the literature—such as the finiteness of the VC dimension of their associated classifiers, or the existence of a compression scheme—it remains unclear whether these conditions are also necessary. In this letter, we demonstrate through counterexamples that these conditions are not necessary in general. These findings stand in contrast to binary classification learning, where analogous conditions are both sufficient and necessary for a family of classifiers to be PAC. Furthermore, we extend our analysis to stable scenario decision algorithms, a broad class that includes practical methods like scenario optimization. Even under this additional assumption, we show that the aforementioned conditions remain unnecessary. Furthermore, we introduce a novel quantity, called the dVC dimension, which serves as an analogue to the VC dimension for scenario decision algorithms. We prove that the finiteness of this dimension is a PAC necessary condition for scenario decision algorithms. This allows to (i) guide algorithm users and designers to recognize algorithms that are not PAC, and (ii) contribute to a comprehensive characterization of PAC scenario decision algorithms.
情景决策算法的PAC可学习性:必要条件与充分条件
我们研究了场景决策算法的可能近似正确(PAC)属性,这是指它们能够以任意低的风险产生违反未知安全约束的决策,提供足够数量的这些约束的实现采样。虽然在文献中存在这样的算法的几个PAC充分条件——比如它们相关分类器的VC维的有限性,或者压缩方案的存在——但这些条件是否也是必要的仍然不清楚。在这封信中,我们通过反例证明这些条件通常是不必要的。这些发现与二元分类学习形成对比,在二元分类学习中,类似的条件是一类分类器成为PAC的充分和必要条件。此外,我们将分析扩展到稳定的场景决策算法,这是一个广泛的类别,包括场景优化等实用方法。即使在这个额外的假设下,我们表明上述条件仍然是不必要的。此外,我们引入了一个新的量,称为dVC维,它可以作为场景决策算法的VC维的类比。证明了该维的有限性是场景决策算法的PAC必要条件。这允许(i)指导算法用户和设计者识别非PAC算法,以及(ii)有助于PAC场景决策算法的全面表征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE Control Systems Letters
IEEE Control Systems Letters Mathematics-Control and Optimization
CiteScore
4.40
自引率
13.30%
发文量
471
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