Meng Wenjun, Chen Lili, Dong Zhaomin
School of Computer Science and Technology, Beijing Institute of Technology, Beijing, China.
Beijing Huadian E-commerce Technology Co., Ltd, Beijing, China.
Front Big Data. 2024 Jul 31;7:1374980. doi: 10.3389/fdata.2024.1374980. eCollection 2024.
The advent of the digital era has transformed E-commerce platforms into critical tools for industry, yet traditional recommendation systems often fall short in the specialized context of the electric power industry. These systems typically struggle with the industry's unique challenges, such as infrequent and high-stakes transactions, prolonged decision-making processes, and sparse data. This research has developed a novel recommendation engine tailored to these specific conditions, such as to handle the low frequency and long cycle nature of Business-to-Business (B2B) transactions. This approach includes algorithmic enhancements to better process and interpret the limited data available, and data pre-processing techniques designed to enrich the sparse datasets characteristic of this industry. This research also introduces a methodological innovation that integrates multi-dimensional data, combining user E-commerce activities, product specifics, and essential non-tendering information. The proposed engine employs advanced machine learning techniques to provide more accurate and relevant recommendations. The results demonstrate a marked improvement over traditional models, offering a more robust and effective tool for facilitating B2B transactions in the electric power industry. This research not only addresses the sector's unique challenges but also provides a blueprint for adapting recommendation systems to other industries with similar B2B characteristics.
数字时代的到来已将电子商务平台转变为行业的关键工具,但传统推荐系统在电力行业的特定环境中往往存在不足。这些系统通常难以应对该行业的独特挑战,例如交易频率低且风险高、决策过程冗长以及数据稀疏。本研究开发了一种针对这些特定条件量身定制的新型推荐引擎,例如处理企业对企业(B2B)交易的低频和长周期特性。这种方法包括算法增强,以更好地处理和解释可用的有限数据,以及旨在丰富该行业稀疏数据集特征的数据预处理技术。本研究还引入了一种方法创新,即整合多维数据,将用户电子商务活动、产品细节和重要的非招标信息结合起来。所提出的引擎采用先进的机器学习技术来提供更准确和相关的推荐。结果表明,与传统模型相比有显著改进,为促进电力行业的B2B交易提供了一个更强大、有效的工具。本研究不仅解决了该行业的独特挑战,还为将推荐系统应用于其他具有类似B2B特征的行业提供了蓝图。