The Pandora's Box problem asks to find a search strategy over $n$ alternatives given stochastic information about their values, aiming to minimize the sum of the search cost and the value of the chosen alternative. Even though the case of independently distributed values is well understood, our algorithmic understanding of the problem is very limited once the independence assumption is dropped. Our work aims to characterize the complexity of approximating the Pandora's Box problem under correlated value distributions. To that end, we present a general reduction to a simpler version of Pandora's Box, that only asks to find a value below a certain threshold, and eliminates the need to reason about future values that will arise during the search. Using this general tool, we study two cases of correlation; the case of explicitly given distributions of support $m$ and the case of mixtures of $m$ product distributions. $\bullet$ In the first case, we connect Pandora's Box to the well studied problem of Optimal Decision Tree, obtaining an $O(\log m)$ approximation but also showing that the problem is strictly easier as it is equivalent (up to constant factors) to the Uniform Decision Tree problem. $\bullet$ In the case of mixtures of product distributions, the problem is again related to the noisy variant of Optimal Decision Tree which is significantly more challenging. We give a constant-factor approximation that runs in time $n^{ \tilde O( m^2/\varepsilon^2 ) }$ for $m$ mixture components whose marginals on every alternative are either identical or separated in TV distance by $\varepsilon$.
翻译:Pandora 的 Box 问题要求找到一个超过 $ 的搜索策略, 其原因是有关其值的简单信息, 目的是尽可能减少搜索成本和所选替代值的总和。 尽管独立分布值的情况是完全理解的, 我们对这一问题的算法理解非常有限, 一旦独立假设被降低, 我们的工作目的是在相关值分布中描述Pandora Box 问题的复杂性。 为此, 我们将Pandora 的框与经过深入研究的 Omatimal 决策树问题连接起来, 只需要找到低于某个阈值的值, 并且消除在搜索中将出现的未来值的边缘值解释的必要性。 我们使用这个通用工具, 我们研究两个关联性案例; 明确给出支持分配美元的案例和美元产品分配的混合物案例。 $ bulllete$。 首先, 我们将 Pandora 的框与一个经过精细研究的 Odimal Tox 问题连接起来, $ (log m) 但也表明, lexal liversal deal deal deal deal deal deal deal proal proal proal pritions) ex $.