在产品决策过程中分析顾客使用数据的方法:系统的文献综述

IF 3.7 4区 管理学 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Christian Micus , Simon Schramm , Markus Boehm , Helmut Krcmar
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引用次数: 0

摘要

为了保持竞争力,公司必须开发新的、受欢迎的产品。这可以通过将客户如何使用产品的洞察整合到决定新产品的过程中来实现。目前,这个过程主要是基于市场调查,只能揭示消费者的意图。通过产品的数字化,公司可以访问大量的客户数据,从而可以应用数据分析方法。我们提供了人工智能、机器学习和数据分析的分类,这样就可以定义数据分析的概念。因此,定义了术语客户使用数据,以及通用的五阶段产品决策过程(PDP),并将其与消费者数据和产品开发过程区分开来。最后,我们展示了客户使用数据的哪些数据分析方法可以用来解决PDP中当前的挑战。我们通过将选定的例子与我们的PDP概念联系起来,将结构化文献综述的结果纳入其中。我们的见解有助于在PDP中应用适当的数据分析方法,从而解决产品决策和产品开发之间的相互作用。最后,提出了客户使用数据分析方法的未来研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Methods to analyze customer usage data in a product decision process:A systematic literature review

Methods to analyze customer usage data in a product decision process:A systematic literature review

To remain competitive, companies must decide on new, desirable products. This can be achieved by integrating insights how customers use a product into the process of deciding on a new product. Currently, this process is primarily based on market research that can only reveal the intention of consumers. Through the digitization of products, companies have access to large amounts of customer data that allow the application of data analytics methods. We provide a taxonomy of artificial intelligence, machine learning and data analysis, so that the notion of data analytics can be defined. Thus, the terms customer usage data, as well as a generic, five-stage product decision process (PDP) are defined and differentiated from consumer data and the product development process. Eventually, we show which data analytics methods on customer usage data can be used in order to tackle current challenges within the PDP. We incorporate the results of our structured literature review by connecting selected examples to our concept of the PDP. Our insights help to apply the proper data analytics methods in the PDP and thereby address the interplay between product decision and product development. Finally, future research directions for data analytics methods on customer usage data are put forward.

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来源期刊
Operations Research Perspectives
Operations Research Perspectives Mathematics-Statistics and Probability
CiteScore
6.40
自引率
0.00%
发文量
36
审稿时长
27 days
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