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Online sales prediction via trend alignment-based multitask recurrent neural networks

机译:基于趋势对齐的多任务经常性神经网络在线销售预测

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摘要

While business trends are constantly evolving, the timely prediction of sales volume offers precious information for companies to achieve a healthy balance between supply and demand. In practice, sales prediction is formulated as a time series prediction problem which aims to predict the future sales volume for different products with the observation of various influential factors (e.g. brand, season, discount, etc.) and corresponding historical sales records. To perform accurate sales prediction under the offline setting, we gain insights from the encoder-decoder recurrent neural network (RNN) structure and have proposed a novel framework named TADA (Chen et al., in: ICDM, 2018) to carry out trend alignment with dual-attention, multitask RNNs for sales prediction. However, the sales data accumulates at a fast rate and is updated on a regular basis, rendering it difficult for the trained model to maintain the prediction accuracy with new data. In this light, we further extend the model into TADA(+), which is enhanced by an online learning module based on our innovative similarity-based reservoir. To construct the data reservoir for model retraining, different from most existing random sampling-based reservoir, our similarity-based reservoir selects data samples that are "hard" for the model to mine apparent dynamic patterns. The experimental results on two real-world datasets comprehensively show the superiority of TADA and TADA(+) in both online and offline sales prediction tasks against other state-of-the-art competitors.
机译:虽然商业趋势不断发展,但及时预测销售量为公司提供了珍贵信息,以实现供需之间的健康平衡。在实践中,销售预测作为时间序列预测问题,旨在预测不同产品的未来销售量,观察各种影响因素(例如品牌,季节,折扣等)和相应的历史销售记录。为了在离线设置下进行准确的销售预测,我们从编码器 - 解码器经常性神经网络(RNN)结构中的见解,并提出了名为TADA的新颖框架(Chen等,In:ICDM,2018)进行趋势对齐用双重关注,多任务RNN用于销售预测。然而,销售数据以快速累计并定期更新,使训练模型难以保持预测准确性与新数据。在这种光线中,我们进一步将模型扩展到TADA(+)中,该模型由基于我们创新的基于相似性的库的在线学习模块增强。为了构建用于模型再培训的数据库,与大多数现有的基于随机采样的储层不同,我们的相似性的储层为模型选择了挖掘表观动态模式的模型的数据样本。两个现实世界数据集的实验结果全面地展示了TADA和TADA(+)在线和离线销售预测任务对其他最先进的竞争对手的优越性。

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