What Should we Reasonably Expect from Artificial Intelligence?

L. Parentoni
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引用次数: 0

Abstract

Objective: the objective of this article is to address the misalignment between the expectations of Artificial Intelligence (or just AI) systems and what they can currently deliver. Despite being a pervasive and cutting-edge technology present in various sectors, such as agriculture, industry, commerce, education, professional services, smart cities, and cyber defense, there exists a discrepancy between the results some people anticipate from AI and its current capabilities. This misalignment leads to two undesirable outcomes: Firstly, some individuals expect AI to achieve results beyond its current developmental stage, resulting in unrealistic demands. Secondly, there is dissatisfaction with AI's existing capabilities, even though they may be sufficient in many contexts.Methods: the article employs an analytical approach to tackle the misalignment issue, analyzing various market applications of AI and unveils their diversity, demonstrating that AI is not a homogeneous, singular concept. Instead, it encompasses a wide range of sector-specific applications, each serving distinct purposes, possessing inherent risks, and aiming for specific accuracy levels.Results: the primary finding presented in this article is that the misalignment between expectations and actual AI capabilities arises from the mistaken premise that AI systems should consistently achieve accuracy rates far surpassing human standards, regardless of the context. By delving into different market applications, the author advocates for evaluating AI's potential and accepted levels of accuracy and transparency in a context-dependent manner. The results highlight that each AI application should have different accuracy and transparency targets, tailored on a case-by-case basis. Consequently, AI systems can still be valuable and welcomed in various contexts, even if they offer accuracy or transparency rates lower or much lower than human standards.Scientific novelty: the scientific novelty of this article lies in challenging the widely held misconception that AI should always operate with superhuman accuracy and transparency in all scenarios. By unraveling the diversity of AI applications and their purposes, the author introduces a fresh perspective, emphasizing that expectations and evaluations should be contextualized and adapted to the specific use case of AI.Practical significance: the practical significance of this article lies in providing valuable guidance to stakeholders within the AI field, including regulators, developers, and customers. The article's realignment of expectations based on context fosters informed decision-making and promotes responsible AI development and implementation. It seeks to enhance the overall utilization and acceptance of AI technologies by promoting a realistic understanding of AI's capabilities and limitations in different contexts. By offering more comprehensive guidance, the article aims to support the establishment of robust regulatory frameworks and promote the responsible deployment of AI systems, contributing to the improvement of AI applications in diverse sectors. The author's call for fine-tuned expectations aims to prevent dissatisfaction arising from unrealistic demands and provide solid guidance for AI development and regulation.
我们应该对人工智能抱有怎样的合理期望?
目的:本文旨在探讨人们对人工智能(或简称 AI)系统的期望与它们目前所能提供的结果之间的偏差。尽管人工智能是一种普遍存在于农业、工业、商业、教育、专业服务、智能城市和网络防御等各个领域的尖端技术,但一些人对人工智能的预期结果与人工智能目前的能力之间存在着差距。这种错位导致了两种不理想的结果:首先,一些人期望人工智能取得超出其当前发展阶段的成果,从而提出了不切实际的要求。方法:文章采用分析方法来解决错位问题,分析了人工智能的各种市场应用,并揭示了其多样性,表明人工智能并不是一个同质的、单一的概念。结果:本文提出的主要发现是,人工智能的预期与实际能力之间的错位源于一个错误的前提,即无论在什么情况下,人工智能系统都应始终达到远远超过人类标准的准确率。通过深入研究不同的市场应用,作者主张根据具体情况来评估人工智能的潜力和公认的准确性和透明度水平。研究结果突出表明,每种人工智能应用都应根据具体情况制定不同的准确性和透明度目标。因此,即使人工智能系统提供的准确率或透明度低于或远低于人类标准,它们仍然可以在各种情况下发挥价值并受到欢迎。科学新颖性:本文的科学新颖性在于挑战了人们普遍持有的误解,即人工智能应该在所有场景下都以超人的准确率和透明度运行。实践意义:本文的实践意义在于为人工智能领域的利益相关者(包括监管者、开发者和客户)提供了宝贵的指导。文章根据具体情况重新调整预期,有助于做出明智的决策,促进负责任的人工智能开发和实施。文章旨在通过促进对人工智能在不同环境下的能力和局限性的现实理解,提高人工智能技术的整体利用率和接受度。通过提供更全面的指导,文章旨在支持建立健全的监管框架,促进负责任地部署人工智能系统,从而推动人工智能在各行各业的应用。作者呼吁对预期进行微调,旨在防止不切实际的要求引起不满,并为人工智能的发展和监管提供坚实的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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