Secretaries with Advice

Paul Dütting, Silvio Lattanzi, R. Leme, Sergei Vassilvitskii
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引用次数: 45

Abstract

The secretary problem is probably the purest model of decision making under uncertainty. In this paper we ask which advice can we give the algorithm to improve its success probability? We propose a general model that unifies a broad range of problems: from the classic secretary problem with no advice, to the variant where the quality of a secretary is drawn from a known distribution and the algorithm learns each candidate's quality on arrival, to more modern versions of advice in the form of samples, to an ML-inspired model where a classifier gives us noisy signal about whether or not the current secretary is the best on the market. Our main technique is a factor revealing LP that captures all of the problems above. We use this LP formulation to gain structural insight into the optimal policy. Using tools from linear programming, we present a tight analysis of optimal algorithms for secretaries with samples, optimal algorithms when secretaries' qualities are drawn from a known distribution, and a new noisy binary advice model.
提供建议的秘书
秘书问题可能是不确定条件下最纯粹的决策模型。在本文中,我们提出了一个问题,我们可以给算法哪些建议来提高它的成功率?我们提出了一个统一广泛问题的通用模型:从没有建议的经典秘书问题,到秘书的质量从已知分布中提取,算法在到达时学习每个候选人的质量的变体,到以样本形式提供更现代版本的建议,再到一个ml启发的模型,其中分类器向我们提供有关当前秘书是否为市场上最好的噪声信号。我们的主要技术是一个揭示LP的因子,它捕获了上述所有问题。我们使用这个LP公式来获得最优策略的结构洞察力。利用线性规划工具,我们对具有样本的秘书的最优算法、从已知分布中提取秘书素质时的最优算法以及一个新的噪声二元建议模型进行了严密的分析。
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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