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Research on the Model of Anomaly Detection of FMCG Based on Time Series Illustrated by the Case of Cosmetics

机译:基于化妆品案例的时间序列的快速消费品异常检测模型研究

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FMCG (Fast Moving Consumer Goods) as one of the most attractive commodities in the logistics industry, its small number of consumption patterns affects all aspects of supply chain activities. FMCG is an impulse buying product, which will affect the uncertainty of demand and the bullwhip effect caused by demand fluctuation. According to the characteristics of cosmetics, this paper divides the products into two categories, then designs and improves two abnormal detection algorithms to avoid the impact of impulse consumption on demand. Aiming at a large number of common commodities, the K-iForest algorithm based on Isolation Forest (iForest) algorithm and K-means algorithm is proposed to control the sensitivity of the algorithm while ensuring the efficiency of the algorithm. For the luxury goods, the Support Vector Regression (SVR) model with sliding window is improved, which makes the algorithm more inclusive for small fluctuations.
机译:快速消费品(FMCG)是物流行业中最有吸引力的商品之一,其少量的消费方式影响着供应链活动的各个方面。快速消费品是一种冲动性购买产品,会影响需求的不确定性和需求波动引起的牛鞭效应。根据化妆品的特点,将产品分为两类,然后设计和改进了两种异常检测算法,以避免冲动消耗对需求的影响。针对大量常见商品,提出了一种基于隔离森林(iForest)算法和K-means算法的K-iForest算法,以在保证算法效率的同时控制算法的敏感性。对于奢侈品,改进了带有滑动窗口的支持向量回归(SVR)模型,这使得算法对于较小的波动更具包容性。

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