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How Much Can A Retailer Sell? Sales Forecasting on Tmall

机译:零售商可以卖多少钱?天猫销售预测

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Time-series forecasting is an important task in both academic and industry, which can be applied to solve many real forecasting problems like stock, water-supply, and sales predictions. In this paper, we study the case of retailers' sales forecasting on Tmall—the world's leading online B2C platform. By analyzing the data, we have two main observations, i.e., sales seasonality after we group different groups of retails and a Tweedie distribution after we transform the sales (target to forecast). Based on our observations, we design two mechanisms for sales forecasting, i.e., seasonality extraction and distribution transformation. First, we adopt Fourier decomposition to automatically extract the seasonalities for different categories of retailers, which can further be used as additional features for any established regression algorithms. Second, we propose to optimize the Tweedie loss of sales after logarithmic transformations. We apply these two mechanisms to classic regression models, i.e., neural network and Gradient Boosting Decision Tree, and the experimental results on Tmall dataset show that both mechanisms can significantly improve the forecasting results.
机译:时间序列预测是学术和行业中的一项重要任务,可以用于解决许多实际的预测问题,例如库存,供水和销售预测。在本文中,我们研究了天猫(全球领先的在线B2C平台)上零售商的销售预测案例。通过分析数据,我们有两个主要观察结果,即将不同的零售组分组后的销售季节性以及将销售量(目标转化为预测量)后的Tweedie分布。根据我们的观察,我们设计了两种销售预测机制,即季节性提取和分布转换。首先,我们采用傅立叶分解自动提取不同类别零售商的季节性,这可以进一步用作任何已建立的回归算法的附加功能。其次,我们建议优化对数转换后的Tweedie销售损失。我们将这两种机制应用于经典回归模型(即神经网络和Gradient Boosting Decision Tree),并且在天猫数据集上的实验结果表明这两种机制都可以显着改善预测结果。

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