TAX-B2BREC:基于税收数据的多级级联下游公司推荐系统

Shengmin Wang, Y. Chu, Zhenhao Qiao, Lan Ma, Hao Zhang, Zehao Wang, Yu Qiao
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引用次数: 0

摘要

新冠疫情引发的公共危机对B2B市场产生了灾难性的影响。随着供应链和贸易的中断,公司的利益受到了不同程度的影响。为了帮助企业发现潜在客户,恢复供应链,我们提出了一个基于税收数据的多级级联下游企业推荐系统。该系统可以为上游企业推荐潜在买家,帮助上游企业寻找新的销售渠道。该系统包括数据处理、匹配模块、排序模块和系统部署。在匹配模块中,我们提出了一种混合召回算法来生成候选企业。在排名模块中,我们使用DCNV2模型对候选公司进行排名。此外,在B2B推荐系统中,多级级联推荐算法比传统推荐算法取得了更好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TAX-B2BREC: Multi-Stage Cascade Downstream Company Recommender System Based on Taxation Data
The public crisis triggered by the COVID-19 pandemic has disastrous effects for B2B markets. With the supply chain and trade disrupted, the benefits of the company have been affected to varying degrees. In order to help companies find potential customers and recover the supply chain, we propose a multi-stage cascade downstream company recommender system based on taxation data. The proposed system can recommend potential buyers for upstream companies, which can help upstream companies find new sales channels. This system includes data processing, matching module, ranking module and system deployment. In the match module, we propose a hybrid recall algorithm to generate the candidate enterprises. In the ranking module, we use DCNV2 model to rank the candidate companies. Moreover, the multistage cascade recommendation algorithm achieves better results compared with the traditional algorithm in B2B recommender system.
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