构建电子商务中人工智能应用分类的复杂性矩阵:价值创造的新视角

N. Babayev, Khalil Israfilzade
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摘要

本研究报告全面探讨了人工智能(AI)在电子商务领域价值创造中的作用,重点关注任务和信息复杂性如何影响人工智能的部署。首先概述了价值理论和价值创造的历史发展,突出了从传统模式到现代互动和共同创造模式的转变。接下来,本文深入探讨了人工智能在电子商务各个方面的潜力,包括个性化、产品推荐、供应链效率等。这项研究的核心是一个详细的矩阵,根据人工智能执行任务的复杂性和它们分析的信息,将人工智能分为自动智能、辅助智能和增强智能。这项研究聘请了一个由15名行业和学术专家组成的小组,对电子商务和类似领域的各种人工智能应用进行严格检查和分配复杂性分数。专家们评估了任务和信息的复杂性,从而能够将应用程序分类到一个可理解的矩阵中。这种分类不仅为人工智能系统的设计和评估提供了指导,而且增强了对其功能动态的理解。这篇论文从理论上促进了我们对人工智能作为电子商务价值创造者的理解,从实践上为企业采用和利用人工智能技术提供了路线图。随着人工智能不断革新电子商务领域,本研究的结果为寻求在数字市场中获得竞争优势的企业提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Creating complexity matrix for classifying artificial intelligence applications in e-commerce: New perspectives on value creation
This research paper provides a comprehensive exploration of the role of Artificial Intelligence (AI) in value creation within the e-commerce sector, focusing on how task and information complexity affect AI deployment. It first outlines the historical development of value theory and value creation, highlighting the shift from traditional modes to modern interactive and co-creation models. Following this, the paper delves into AI’s potential in various e-commerce dimensions including personalization, product recommendation, supply chain efficiency, and more. The centrepiece of the study is a detailed matrix classifying AI into Automated Intelligence, Assisted Intelligence, and Augmented Intelligence, based on the complexity of tasks they execute and the information they analyse. This research study engaged a panel of fifteen industry and academic experts to critically examine and assign complexity scores to various Artificial Intelligence applications within the e-commerce and similar sectors. The experts evaluated task and information complexity, thereby enabling a classification of the applications into a comprehensible matrix. This classification not only provides a guide for AI system design and evaluation but also enhances understanding of their functional dynamics. The paper contributes theoretically by advancing our understanding of AI as a value creator in e-commerce and practically by offering a roadmap for businesses to adopt and leverage AI technologies. As AI continues to revolutionize the e-commerce sector, the findings of this study provide invaluable insights for businesses seeking to gain a competitive advantage in the digital marketplace.
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