基于多项式估计的随机次模最大化

Gözde Özcan, Stratis Ioannidis
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引用次数: 0

摘要

在本文中,我们研究了在在线学习、团队组建、设施定位、影响最大化、主动学习和传感目标函数中自然出现的具有一般矩阵约束的随机次模最大化问题。换句话说,我们关注的是最大化子模函数,这些子模函数被定义为对一类具有未知分布的子模函数的期望。我们证明了对于这种形式的单调函数,随机连续贪婪算法使用梯度的多项式估计获得任意接近$(1-1/e) \约63\%$的近似比率(在期望中)。我们认为,使用这种多项式估计器而不是使用采样的现有技术消除了随机性的来源,并在实验上减少了执行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic Submodular Maximization via Polynomial Estimators
In this paper, we study stochastic submodular maximization problems with general matroid constraints, that naturally arise in online learning, team formation, facility location, influence maximization, active learning and sensing objective functions. In other words, we focus on maximizing submodular functions that are defined as expectations over a class of submodular functions with an unknown distribution. We show that for monotone functions of this form, the stochastic continuous greedy algorithm attains an approximation ratio (in expectation) arbitrarily close to $(1-1/e) \approx 63\%$ using a polynomial estimation of the gradient. We argue that using this polynomial estimator instead of the prior art that uses sampling eliminates a source of randomness and experimentally reduces execution time.
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