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引用次数: 0
摘要
目的机器学习(ML)技术在帮助企业对企业(B2B)公司为企业客户提供个性化服务方面发挥着越来越重要的作用。另一方面,人类在处理不确定情况和 B2B 业务的关系建立方面发挥着至关重要的作用。现有的大多数研究都只是提出了人机交互增强的概念,却没有提供增强的详细视图。因此,本文旨在研究人类参与如何切实增强 ML 能力,从而为商业客户开发个性化信息系统(PIS)。然后在能源部门实施了该 PIS。接着,利用客户反馈评估了 PIS 的准确性。结果计算得出的精确度、召回率和 F1(分别为 0.73、0.72 和 0.72)均高于 0.5;因此,模型的准确性得到了证实。最后,本研究提出了一个研究模型,说明了在创建 PIS 的不同阶段,包括业务/市场理解、数据理解、数据收集和准备、模型创建和部署以及模型评估阶段,人工参与如何能够增强 ML 能力。此外,本研究还阐述了人类专家如何增强 ML 计算能力,从而为企业客户创建 PIS,为 B2B 个性化文献做出了贡献。
Augmenting machine learning with human insights: the model development for B2B personalization
Purpose
Machine learning (ML) techniques are increasingly important in enabling business-to-business (B2B) companies to offer personalized services to business customers. On the other hand, humans play a critical role in dealing with uncertain situations and the relationship-building aspects of a B2B business. Most existing studies advocating human-ML augmentation simply posit the concept without providing a detailed view of augmentation. Therefore, the purpose of this paper is to investigate how human involvement can practically augment ML capabilities to develop a personalized information system (PIS) for business customers.
Design/methodology/approach
The authors developed a research framework to create an integrated human-ML PIS for business customers. The PIS was then implemented in the energy sector. Next, the accuracy of the PIS was evaluated using customer feedback. To this end, precision, recall and F1 evaluation metrics were used.
Findings
The computed figures of precision, recall and F1 (respectively, 0.73, 0.72 and 0.72) were all above 0.5; thus, the accuracy of the model was confirmed. Finally, the study presents the research model that illustrates how human involvement can augment ML capabilities in different stages of creating the PIS including the business/market understanding, data understanding, data collection and preparation, model creation and deployment and model evaluation phases.
Originality/value
This paper offers novel insight into the less-known phenomenon of human-ML augmentation for marketing purposes. Furthermore, the study contributes to the B2B personalization literature by elaborating on how human experts can augment ML computing power to create a PIS for business customers.
期刊介绍:
The Journal of Business & Industrial Marketing (JBIM) publishes research on new ideas concerning business-to-business marketing, that is, how one company or organization markets its goods/services/ideas to another company or organization. It is a valuable source for academics, directors and executives of marketing, providing them with new, fresh insights which are applicable within real life settings. JBIM''s emphasis on insistence of proof is one of the cornerstones of its success and its reputation. Contributors to the journal must not only present new theories or ideas, but also back them up with research. In the process, many myths are exploded, philosophies reinvented and the scene set for topical debate on critical issues in B2B marketing. The B2B landscape evolves and so does the research that explores the emerging features and properties of B2B markets. From 2019 the journal hosts the IMP Forum that invites research advancing the boundaries of B2B marketing. Prior research has evidenced that interactivity and interdependences characterize interorganizational business relationships. The Forum aims to bring out research that explores interactivity and interdependences in business relationships and their implications for marketing management, business development and for society at large. Coverage: -Competition and cooperation- Networks in business markets- Buyer behaviour – purchasing and supply management- Managing product offerings- New product development and innovation- Networks in business markets- Distribution and routes to market- Market and customer communication - Customer relationship management- Sales and key account management- Organizing for global markets -