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Newsvendor Problems with Demand Shocks and Unknown Demand Distributions

机译:需求冲击和未知需求分布的新闻供应商问题

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In today's competitive market, demand volume and even the underlying demand distribution can change quickly for a newsvendor seller. We refer to sudden changes in demand distribution as demand shocks. When a newsvendor seller has limited demand distribution information and also experiences underlying demand shocks, the majority of existing methods for newsvendor problems may not work well since they either require demand distribution information or assume stationary demand distribution. We present a new, robust, and effective machine learning algorithm for newsvendor problems with demand shocks but without any demand distribution information. The algorithm needs only an approximate estimate of the lower and upper bounds of demand range; no other knowledge such as demand mean, variance, or distribution type is necessary. We establish the theoretical bounds that determine this machine learning algorithm's performance in handling demand shocks. Computational experiments show that this algorithm outperforms the traditional approaches in a variety of situations including large and frequent shocks of the demand mean. The method can also be used as a meta-algorithm by incorporating other traditional approaches as experts. Working together, the original algorithm and the extended meta-algorithm can help manufacturers and retailers better adapt their production and inventory control decisions in dynamic environments where demand information is limited and demand shocks are frequent
机译:在当今竞争激烈的市场中,对于新闻卖方,需求量甚至潜在需求分布都可以快速变化。我们将需求分布的突然变化称为需求冲击。当新闻供应商卖方的需求分配信息有限,并且还遭受潜在的需求冲击时,大多数针对新闻供应商问题的现有方法可能效果不佳,因为它们要么要求需求分配信息,要么假定需求分配平稳。我们针对有需求冲击但没有任何需求分布信息的新闻供应商问题,提出了一种新的,健壮且有效的机器学习算法。该算法仅需要估计需求范围的上下限;不需要其他知识,例如需求均值,方差或分布类型。我们建立了确定该机器学习算法在处理需求冲击方面的性能的理论界限。计算实验表明,在各种情况下,包括对需求均值的频繁频繁冲击,该算法均优于传统方法。通过结合其他传统方法作为专家,该方法也可以用作元算法。原始算法和扩展的元算法一起工作,可以帮助制造商和零售商在需求信息有限且需求冲击频繁的动态环境中更好地适应其生产和库存控制决策

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