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Variable selection framework for allocating products to recommended replenishment models in VMI applications

机译:用于将产品分配给VMI应用程序中建议的补货模型的变量选择框架

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Purpose - The purpose of this paper is to propose a multivariate-based method to classify products in replenishment categories based on principal component analysis (PCA) along with two classification algorithms, k-nearest neighbor (KNN) and linear discriminant analysis (LDA). Design/methodology/approach - In the propositions, PCA is applied to data describing products' features and demand behavior, and a variable importance index (VII) is derived based on PCA parameters. Next, products are allocated to inventory replenishment models applying the KNNs to all original variables; the classification accuracy is then assessed. The variable with the smallest VII is removed and a new classification is carried out; this iterative procedure is performed until a single variable is left. The subset yielding the maximum classification accuracy is recommended for future classification. The aforementioned procedure is repeated replacing the KNN by the LDA Findings - When applied to real data from a consulting company, the KNN classification technique led to higher performance levels than LDA, yielding 89.4 percent average accuracy and retaining about 80 percent of the original variables. On the other hand, LDA reached 87.1 percent average accuracy and retained 95 percent of the variables. Based on such results, the authors' findings suggest that 14 out of the 24 variables are crucial in determining an inventory replenishment model for a product in a specific location replacement. Several of the retained variables were typically used in reorder point estimation or associated to market profile in specific locals. Originality/value - The idea of this paper is to remove irrelevant and noisy market metrics that jeopardize the correct allocation of products to the most appropriate replenishment model.
机译:目的-本文的目的是基于主成分分析(PCA)以及k-最近邻(KNN)和线性判别分析(LDA)这两种分类算法,提出一种基于多元变量的补货类别产品分类方法。设计/方法/方法-在命题中,将PCA应用于描述产品特征和需求行为的数据,并基于PCA参数得出可变重要性指数(VII)。接下来,将产品分配到库存补充模型,将KNN应用于所有原始变量;然后评估分类准确性。 VII最小的变量将被删除,并进行新的分类;执行此迭代过程,直到剩下单个变量为止。建议将产生最大分类精度的子集用于将来的分类。重复上述过程,用LDA结果替换KNN-将KNN分类技术应用于咨询公司的真实数据时,其性能水平高于LDA,平均准确率达89.4%,并保留了约80%的原始变量。另一方面,LDA达到87.1%的平均准确度,并保留了95%的变量。基于这些结果,作者的发现表明,在确定特定位置替换产品的库存补充模型时,24个变量中的14个至关重要。几个保留的变量通常用于重新订购点估计或与特定本地人的市场概况相关联。原创性/价值-本文的想法是消除不相关和嘈杂的市场指标,这些指标会损害将产品正确分配给最合适的补货模型的能力。

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