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The impact of training data tailoring on demand forecasting models in retail

机译:培训数据定制对零售需求预测模型的影响

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Demand forecasting plays a very important role in retail business. Retail information systems commonly store large amounts of data which are subsequently used by sophisticated data mining tools for building forecasting models. Quality of these models is usually measured through their predictive accuracy as their most important property, followed by other measures which consider average underestimate and overestimate costs etc. Even though the choice of data mining algorithm is usually paramount, training set cleansing and preparation has a significant influence on final model performance. This article discusses and analyses the impact of training set preparation and tailoring on a final forecasting model performance used in a real world example from the retail industry.
机译:需求预测在零售业务中扮演着非常重要的角色。零售信息系统通常存储大量数据,这些数据随后将由复杂的数据挖掘工具用于构建预测模型。这些模型的质量通常是通过预测准确性作为最重要的属性来衡量的,其次是考虑平均低估和高估成本等其他衡量指标。尽管数据挖掘算法的选择通常是最重要的,但训练集的清理和准备工作仍然非常重要。对最终模型性能的影响。本文讨论并分析了培训集准备和剪裁对最终零售模型性能的影响,该模型在零售业的实际示例中使用。

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