替代或互补:人工智能应用管理对创新的影响

杨祎 刘嫣然 李垣

科研管理 ›› 2021, Vol. 42 ›› Issue (4) : 46-54.

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PDF(435 KB)
科研管理 ›› 2021, Vol. 42 ›› Issue (4) : 46-54.
论文

替代或互补:人工智能应用管理对创新的影响

  • 杨祎1,刘嫣然2,李垣2
作者信息 +

Substitution or complementation: The impact of AI application and management on innovation

  • Yang Yi1, Liu Yanran2, Li Yuan2
Author information +
文章历史 +

摘要

数字经济背景下,人工智能(AI)技术的应用正在深入地影响着企业管理变革、业务边界的扩展和管理模式的改变。结合互补资产的观点和组织学习理论,本文提出了一个基于AI应用能力和AI管理能力的分析框架,强调人工智能与人类智慧结合的必要性,阐述了两种能力的功能和作用及其协同对企业效率和创新成本的影响。本文提出,企业必须具备管理AI的能力才能有效应对大数据、数字技术、AI的不断革新及技术带来的组织内部结构和外部环境变化以及风险;企业AI应用与管理能力的有效结合,有利于控制AI应用带来的成本和风险,增强企业在人工人力、协调沟通、和数据搜寻方面的效率,同时降低AI应用带来的数字基建、道德情感、数据安全、组织结构变革方面的成本,进而促进企业的组织学习、对内外部数字技术使能资源的获取和管理以及互补资产的形成,对企业创新绩效发挥正向作用。最后,本文为企业的数字化创新战略提供了新的发展思路。

Abstract

 In the context of digital economy, the application of artificial intelligence (AI) technology is deeply affecting the transformation of firm management, the expansion of business boundaries, and the change of management models. Although more and more firms are accelerating business model innovation through AI, we should see that the expansion of enterprise boundaries also brings challenges to firm management. Based on the nature of AI technology, our paper aims to explore and study how AI application capabilities and AI management capabilities act in promoting firm innovation so as to facilitate firms in making changes in accordance with AI technology. Combining the complementary assets view and the organizational learning theory, we propose an analytical framework based on firm′s application and management capabilities on AI technologies, emphasize the necessity of combining AI with human intelligence, and explain the functions and influences of the two capabilities with their complementary effect on the costs and benefits of firm innovation; the complementary effect of the two capabilities can help firms effectively acquire and control the complementary assets required for innovation, reduce the costs of digital innovation, improve operational efficiency and promote corporate innovation performance.In terms of the benefits of AI application, it helps firms automate the business processes, analyze data, coordinate the communication with customers, and facilitate the interaction between employees. With the development of AI application capabilities, firms can increase efficiency in processing structured and unstructured data. The cognitive abilities of AI can greatly reduce the cost of coordination and communication with customers and employees. Meanwhile, AI application have also brought new problems such as increasing costs in maintaining data security and privacy, and therefore it is important to establish AI management capabilities ( the ability to continuously learn in the process of applying AI to control the risks and costs brought by AI).We found that AI application capabilities can reduce cost in labor, communication and coordination, and data search, but will induce new cost in building digital infrastructure, dealing with ethical issues, securing critical data, and managing organizational structure change. More importantly, firms must establish AI management capabilities to effectively deal with the continuous innovation of big data, digital technology, AI technology, and to manage the internal organizational structure change as well as the external environment risks brought about by the technologies; the effective combination of the AI capabilities benefit firms in coordinating digital technology enabled resources, acquiring complementary assets, and controlling the cost and risks of AI. We also propose that with the interaction of AI application capabilities and management capabilities, firms will be able to reduce cost in labor, communication and coordination, and data search; meanwhile, firm will be able to control costs in building digital infrastructure, deal with ethical issues, secure critical data, and manage organizational structure change. Finally, this paper provides new insight for firm′s digital innovation strategies. We suggest firms not only should focus on the application of AI, but also need to establish management capabilities of AI, such that firms can take advantage of AI application while avoiding the risks and costs, form business models and operating models that are hard to imitate and maintain the benefits and competitive advantages brought by technology innovation.

关键词

人工智能;应用能力 / 管理能力 / 企业创新

Key words

Artificial intelligence (AI) / application capabilities;management capabilities;firm innovation

引用本文

导出引用
杨祎 刘嫣然 李垣. 替代或互补:人工智能应用管理对创新的影响[J]. 科研管理. 2021, 42(4): 46-54
Yang Yi, Liu Yanran, Li Yuan. Substitution or complementation: The impact of AI application and management on innovation[J]. Science Research Management. 2021, 42(4): 46-54

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基金

国家创新研究群体项目:“运营与创新管理”(71421002,2015—2020)。

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