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Use of Uncertain Additional Information in Newsvendor Models

机译:在NewsVendor模型中使用不确定的附加信息

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The newsvendor problem is a popular inventory management problem in supply chain management and logistics. Solutions to the newsvendor problem determine optimal inventory levels. This model is typically fully determined by a purchase and sale prices and a distribution of random market demand. From a statistical point of view, this problem is often considered as a quantile estimation of a critical fractile which maximizes anticipated profit. The distribution of demand is a random variable and is often estimated on historic data. In an ideal situation, when the probability distribution of demand is known, one can determine the quantile of a critical fractile minimizing a particular loss function. When a parametric family is known, maximum likelihood estimation is asymptotically efficient under certain regularity assumptions and the maximum likelihood estimators (MLEs) are used for estimating quantiles. Then, the Cramer-Rao lower bound determines the lowest possible asymptotic variance for the MLEs. Can one find a quantile estimator with a smaller variance then the Cramer-Rao lower bound? If a relevant additional information is available then the answer is yes. This manuscript considers minimum variance and mean squared error estimation which incorporate additional information for estimating optimal inventory levels.
机译:报童问题是供应链管理和物流的热门库存管理问题。解报童问题确定最佳库存水平。这种模式通常是完全购销价格和随机市场需求分配所决定的。从统计学的角度来看,这个问题往往被认为是最大化利润预期的关键分位数的分位数估计。需求的分布是一个随机变量,往往是估计的历史数据。在理想的情况下,当需求的概率分布是已知的,可确定临界分位最小化特定损失函数的位数。当一个家庭参数是已知的,最大似然估计是在一定的规律性假设,并且用于估计分位数的最大似然估计(极大似然估计)渐近有效。然后,克拉美 - 罗下限确定极大似然估计的最低可能渐近方差。一个人能找到一个更小的方差位数估计,则克拉美罗下限?如果相关的其他信息可用,那么答案是肯定的。这个手稿认为最小方差和均方误差估计,其包括附加信息,用于估计最优库存水平。

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