编配
价值(数学)
价值创造
商业模式
价值网络
知识管理
资源(消歧)
过程(计算)
商业价值
计算机科学
价值捕获
多样性(控制论)
共同创造
随意的
数据科学
过程管理
业务
人工智能
营销
政治学
机器学习
经济
法学
视觉艺术
音乐剧
艺术
人力资本
操作系统
经济增长
计算机网络
作者
Arisa Shollo,Konstantin Hopf,Tiemo Thiess,Oliver Müller
标识
DOI:10.1016/j.jsis.2022.101734
摘要
Advancements in artificial intelligence (AI) technologies are rapidly changing the competitive landscape. In the search for an appropriate strategic response, firms are currently engaging in a large variety of AI projects. However, recent studies suggest that many companies are falling short in creating tangible business value through AI. As the current scientific body of knowledge lacks empirically-grounded research studies for explaining this phenomenon, we conducted an exploratory interview study focusing on 56 applications of machine learning (ML) in 29 different companies. Through an inductive qualitative analysis, we uncover three broad types and five subtypes of ML value creation mechanisms, identify necessary but not sufficient conditions for successfully leveraging them, and observe that organizations, in their efforts to create value, dynamically shift from one ML value creation mechanism to another by reconfiguring their ML applications (i.e., the shifting practice). We synthesize these findings into a process model of ML value creation, which illustrates how organizations engage in (resource) orchestration by shifting between ML value creation mechanisms as their capabilities evolve and business conditions change. Our model provides an alternative explanation for the current high failure rate of ML projects.
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