通过机器学习技术测试制造业中的服务导入:回顾与展望

Oscar F. Bustinza, Ferran Vendrell-Herrero, Phil Davies, G. Parry
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摘要

目的为了响应对制造业服务渗透的概念基础进行深入分析的呼吁,本文对以下基本假设进行了研究:(i)融入服务的制造企业遵循从纯产品到纯服务产品的路径,以及(ii)利润随这一过程线性增长。我们提出,这些假设与行为理论和学习理论的前提不一致。设计/方法/途径应用机器学习算法来检验从基本产品到更高级产品的连续过程是否能创造最佳绩效。数据是通过 2021 年和 2023 年对美国制造企业进行的两次调查收集的。分析结果表明,按照基础--中级--高级服务的路径并不能最好地预测最佳绩效。实际意义制造业企业在服务发展过程中遵循不同的路径。非服务型企业在选择初始服务产品时,需要仔细考虑其背景条件。与提供多种服务相比,从提供单一服务开始似乎是一种更优越的策略。 原创性/价值机器学习方法是该领域的一种新方法,它捕捉到了制造商成功实现服务化的关键条件。该方法从以往定性研究中描述的 17 种服务的采用和实施年数据集中获得启示。所提出的方法可扩展用于评估相关管理领域(如沙锥)中其他基于流程的模型。
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Testing service infusion in manufacturing through machine learning techniques: looking back and forward
PurposeResponding to calls for deeper analysis of the conceptual foundations of service infusion in manufacturing, this paper examines the underlying assumptions that: (i) manufacturing firms incorporating services follow a pathway, moving from pure-product to pure-service offerings, and (ii) profits increase linearly with this process. We propose that these assumptions are inconsistent with the premises of behavioural and learning theories.Design/methodology/approachMachine learning algorithms are applied to test whether a successive process, from a basic to a more advanced offering, creates optimal performance. The data were gathered through two surveys administered to USA manufacturing firms in 2021 and 2023. The first included a training sample comprising 225 firms, whilst the second encompassed a testing sample of 105 firms.FindingsAnalysis shows that following the base-intermediate-advanced services pathway is not the best predictor of optimal performance. Developing advanced services and then later adding less complex offerings supports better performance.Practical implicationsManufacturing firms follow heterogeneous pathways in their service development journey. Non-servitised firms need to carefully consider their contextual conditions when selecting their initial service offering. Starting with a single service offering appears to be a superior strategy over providing multiple services.Originality/valueThe machine learning approach is novel to the field and captures the key conditions for manufacturers to successfully servitise. Insight is derived from the adoption and implementation year datasets for 17 types of services described in previous qualitative studies. The methods proposed can be extended to assess other process-based models in related management fields (e.g., sand cone).
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