DeepExpress:基于异构和耦合序列的快递预测模型

Siyuan Ren, Bin Guo, Longbing Cao, Ke Li, Jiaqi Liu, Zhiwen Yu
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引用次数: 4

摘要

快递序列的预测,即对每天进出的包裹数量进行建模和估算,对于在线业务、物流和积极的客户体验,特别是对资源配置优化和促销活动安排至关重要。对消费者交付请求的精确估计必须涉及诸如购物行为、天气条件、事件、商业活动及其耦合等连续因素。尽管各种方法都集成了外部特征来增强效果,但现有的工作未能解决复杂的特征-序列耦合问题,主要表现在以下几个方面:在处理异构数据时弱化了相互依赖关系,忽略了耦合关系的累积和演化情况。为了解决这些问题,我们提出了一种基于深度学习的快递序列预测模型deepexpress,它扩展了经典的seq2seq框架来学习特征序列耦合。DeepExpress利用快递seq2seq学习、精心设计的异构特征表示和新颖的联合训练注意机制,自适应处理异构问题并捕获特征序列耦合,以实现准确的预测。实际数据的实验结果表明,该方法优于浅基线和深基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeepExpress: Heterogeneous and Coupled Sequence Modeling for Express Delivery Prediction
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. Despite that various methods have integrated external features to enhance the effects, extant works fail to address complex feature-sequence couplings in the following aspects: weaken the inter-dependencies when processing heterogeneous data and ignore the cumulative and evolving situation of coupling relationships. To address these issues, we propose DeepExpress—a deep-learning-based express delivery sequence prediction model, which extends the classic seq2seq framework to learn feature-sequence couplings. DeepExpress leverages an express delivery seq2seq learning, a carefully designed heterogeneous feature representation, and a novel joint training attention mechanism to adaptively handle heterogeneity issues and capture feature-sequence couplings for accurate prediction. Experimental results on real-world data demonstrate that the proposed method outperforms both shallow and deep baseline models.
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