HeteroSales: Utilizing Heterogeneous Social Networks to Identify the Next Enterprise Customer

Qingbo Hu, Sihong Xie, Jiawei Zhang, Qiang Zhu, Songtao Guo, Philip S. Yu
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引用次数: 22

Abstract

Nowadays, a modern e-commerce company may have both online sales and offline sales departments. Normally, online sales attempt to sell in small quantities to individual customers through broadcasting a large amount of emails or promotion codes, which heavily rely on the designed backend algorithms. Offline sales, on the other hand, try to sell in much larger quantities to enterprise customers through contacts initiated by sales representatives, which are more costly compared to online sales. Unlike many previous research works focusing on machine learning algorithms to support online sales, this paper introduces an approach that utilizes heterogenous social networks to improve the effectiveness of offline sales. More specifically, we propose a two-phase framework, HeteroSales, which first constructs a company-to-company graph, a.k.a. Company Homophily Graph (CHG), from semantics based meta-path learning, and then adopts label propagation on the graph to predict promising companies that we may successfully close an offline deal with. Based on the statistical analysis on the world's largest professional social network, LinkedIn, we demonstrate interesting discoveries showing that not all the social connections in a heterogeneous social network are useful in this task. In other words, some proper data preprocessing is essential to ensure the effectiveness of offline sales. Finally, through the experiments on LinkedIn social network data and third-party offline sales records, we demonstrate the power of HereroSales to identify potential enterprise customers in offline sales.
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异质销售:利用异质社会网络识别下一个企业客户
如今,一家现代电子商务公司可能同时拥有线上销售和线下销售部门。通常情况下,在线销售试图通过大量的电子邮件或促销代码向个人客户少量销售,这在很大程度上依赖于设计好的后端算法。另一方面,线下销售试图通过销售代表发起的联系向企业客户大量销售,这比线上销售成本更高。与许多先前的研究工作专注于机器学习算法来支持在线销售不同,本文介绍了一种利用异质社交网络来提高线下销售效率的方法。更具体地说,我们提出了一个两阶段框架,HeteroSales,它首先从基于语义的元路径学习构建一个公司到公司的图,又称公司同质图(CHG),然后在图上采用标签传播来预测我们可能成功完成线下交易的有前途的公司。基于对世界上最大的职业社交网络LinkedIn的统计分析,我们展示了有趣的发现,表明并非异构社交网络中的所有社会联系都对这项任务有用。换句话说,为了保证线下销售的有效性,适当的数据预处理是必不可少的。最后,通过对LinkedIn社交网络数据和第三方线下销售记录的实验,验证了HereroSales在线下销售中识别潜在企业客户的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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