The prediction of express delivery sequence, i.e., modeling and estimating the volumes of daily incoming and outgoing parcels for delivery, is critical for online business, logistics, and positive customer experience, and specifically for resource allocation optimization and promotional activity arrangement. A precise estimate of consumer delivery requests has to involve sequential factors such as shopping behaviors, weather conditions, events, business campaigns, and their couplings. Besides, conventional sequence prediction assumes a stable sequence evolution, failing to address complex nonlinear sequences and various feature effects in the above multi-source data. Although deep networks and attention mechanisms demonstrate the potential of complex sequence modeling, extant networks ignore the heterogeneous and coupling situation between features and sequences, resulting in weak prediction accuracy. To address these issues, we propose DeepExpress - a deep-learning based express delivery sequence prediction model, which extends the classic seq2seq framework to learning complex coupling between sequence and features. DeepExpress leverages an express delivery seq2seq learning, a carefully-designed heterogeneous feature representation, and a novel joint training attention mechanism to adaptively map heterogeneous data, and capture sequence-feature coupling for precise estimation. Experimental results on real-world data demonstrate that the proposed method outperforms both shallow and deep baseline models.
翻译:尽管深层次的网络和关注机制显示了复杂序列建模的潜力,但现有网络忽视了特征和序列之间的异同和组合状况,导致预测准确性不强。为了解决这些问题,我们提议深层Express公司(深层Express)——基于明确交付序列预测的深层学习模型,该模型将经典后继2eq框架扩展至学习顺序和特征之间的复杂组合。深层Express公司利用了一种直观交付后继2squal的学习,一种精心设计的混杂特征代表,以及一种用于适应性地图混杂数据的新的联合培训关注机制,并捕捉了用于精确估算的深度基线模型。