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Online Sequential Optimization with Biased Gradients: Theory and Applications to Censored Demand

机译:带有偏斜的在线顺序优化:理论和对删失需求的应用

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In this paper, we study a class of stochastic optimization problems, where although the objective functions may not be convex, they satisfy a generalization of convexity called the sequentially convex property. We focus on a setting where the distribution of the underlying uncertainty is unknown and the manager must make a decision in real time based on historical data. Because sequentially convex functions are not necessarily convex, they pose difficulties in applying standard adaptive methods for convex optimization. We propose a nonparametric algorithm based on a gradient descent method and show that the T-season average expected cost differs from the minimum cost by at most O(1/T~(1/2)). Our analysis is based on a careful quantification of the bias that is inherent in gradient estimation because of the adaptive nature of the problem. We demonstrate the usefulness of the concept of sequential convexity by applying it to three canonical problems in inventory control, capacity allocation, and the lifetime buy decision, under the assumption that the manager does not know the demand distributions and has access only to historical sales (censored demand) data.
机译:在本文中,我们研究了一类随机优化问题,尽管目标函数可能不是凸函数,但它们满足凸泛化的要求,即顺序凸性。我们关注的是不确定性分布不明的情况,经理必须根据历史数据实时做出决策。由于顺序凸函数不一定是凸函数,因此在将标准自适应方法应用于凸优化时会遇到困难。我们提出了一种基于梯度下降法的非参数算法,并表明T季节平均预期成本与最小成本的差异最大为O(1 / T〜(1/2))。我们的分析基于对问题的适应性,对梯度估计中固有的偏差进行了仔细的量化。我们假设管理者不知道需求分布,而只能访问历史销售,我们通过将连续凸概念应用于库存控制,容量分配和寿命购买决策这三个规范问题来证明其有用性。审查的需求)数据。

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