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The Big Data Newsvendor: Practical Insights from Machine Learning

机译:大数据新闻国师:机器学习的实用见解

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摘要

We investigate the newsvendor problem when one has n observations of p features related to the demand as well as past demands. Both small data (p=n = o(1)) and big data (p=n = O(1)) are considered. For both cases, we propose a machine learning algorithm to solve the problem and derive a tight generalization bound on the expected out-of-sample cost. The algorithms can be extended intuitively to other situations, such as having censored demand data, ordering for multiple, similar items and having a new item withlimited data. We show analytically that our custom-designed, feature-based approach can be better than other data-driven approaches such as Sample Average Approximation (SAA) and separated estimation and optimization (SEO). Our method can also naturally incorporate the operational statistics method. We then apply the algorithms to nurse staffing in a hospital emergency room and show that (i) they can reduce the median out-of-sample cost by up to 46% and 16% compared to SAA and SEO respectively, with statistical significance at 0.01, and (ii) this is achieved either by carefully selecting a small number of features and applying the small data algorithm, or by using a large number of features and using the big data algorithm,which automates feature-selection.
机译:当一个人对与需求以及过去需求有关的p个特征有n个观察值时,我们研究新闻供应商问题。同时考虑了小数据(p = n = o(1))和大数据(p = n = O(1))。对于这两种情况,我们提出了一种机器学习算法来解决该问题,并得出预期的样本外成本的严格概括边界。可以将算法直观地扩展到其他情况,例如,审查需求数据,订购多个类似商品以及使用数据有限的新商品。我们通过分析表明,我们的自定义设计的基于特征的方法可能比其他数据驱动的方法(例如样本平均近似(SAA)和分离的估计与优化(SEO))更好。我们的方法也可以自然地纳入运营统计方法。然后,我们将这些算法应用于医院急诊室的护理人员配置,结果表明(i)与SAA和SEO相比,它们可以分别将样本外费用中位数降低多达46%和16%,统计学意义为0.01 (ii)这可以通过仔细选择少量特征并应用小数据算法来实现,或者通过使用大量特征并使用大数据算法来实现特征选择的自动化来实现。

著录项

  • 作者

    Cynthia Rudin; GahhYi Vahn;

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  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en_us
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