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A Hidden Markov Model to Detect On-Shelf Out-of-Stocks Using Point-of-Sale Data

机译:使用销售点数据检测货架上缺货的隐马尔可夫模型

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We propose a hidden Markov model (HMM) approach to identifying on-shelf out-of-stock (OOS) by detecting changes in sales patterns resulting from unobserved states of the shelf. We calibrate our model using point-of-sale (POS) data from a big-box retailer. We validate our approach using visual inspections that monitor the state of the shelf and compare them to the HMM's predictions. We test the proposed approach on 14 products and 10 stores. We specify our model using a hierarchical Bayes approach and use a Monte Carlo-Markov chain methodology to estimate the model parameters. We identify three latent states in which one of them characterizes an OOS state. The results show that the proposed approach performs well in predicting out-of-stocks, combining high detection power (63.48%) and low false alerts (15.52%). Interestingly, the highest power of detection is obtained for medium-incidence products (77.42%), whereas the lowest false alarm rate is obtained for lower-incidence products (7.32%). Our HMM approach outperforms several benchmarks, particularly for lower-incidence products, which are not typically monitored using visual inspections. Using only POS data, our method uncovers useful information that provides actionable metrics that managers can use to evaluate the quality of demand forecasting and product replenishment at the store-product level.
机译:我们提出了一种隐马尔可夫模型(HMM)方法,通过检测货架状态未观察到而导致的销售模式变化来识别货架上的缺货(OOS)。我们使用来自大型零售商的销售点(POS)数据来校准模型。我们使用视觉检查来验证我们的方法,该检查可以监视货架状态并将其与HMM的预测进行比较。我们在14种产品和10家商店中测试了建议的方法。我们使用分层贝叶斯方法指定模型,并使用蒙特卡洛-马尔可夫链方法来估计模型参数。我们确定了三个潜在状态,其中一个表征了OOS状态。结果表明,该方法结合了较高的检测能力(63.48%)和较低的虚假警报(15.52%),可以很好地预测脱销情况。有趣的是,中等事件产品获得最高的检测能力(77.42%),而低事件产品获得最低的误报率(7.32%)。我们的HMM方法优于几个基准,特别是对于低事故率产品,通常不会通过目视检查对其进行监控。我们的方法仅使用POS数据即可发现有用的信息,这些信息提供了可操作的指标,管理人员可以使用这些指标来评估商店产品一级的需求预测和产品补货的质量。

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