A Study on Functional Requirements and Inspection Items for AI System Change Management and Model Improvement on the Web Platform

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING Journal of Web Engineering Pub Date : 2024-09-01 DOI:10.13052/jwe1540-9589.2366
Dongsoo Moon;Seongjin Ahn
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Abstract

The rapid adoption of artificial intelligence (AI) on the web platform across multiple sectors has highlighted not only its inherent technical hurdles, such as unpredictability and lack of transparency, but also significant societal concerns. These include the misuse of AI technology, invasions of privacy, discrimination fueled by biased data, and infringements of copyright. Such challenges jeopardize the sustainable growth of AI and risk the erosion of societal trust, industry adoption and financial investment. This analysis explores the AI system's lifecycle, emphasizing the essential continuous monitoring and the need for creating trustworthy AI technologies. It advocates for an ethically oriented development process to mitigate adverse effects and support sustainable progress. The dynamic and unpredictable nature of AI, compounded by variable data inputs and evolving distributions, requires consistent model updates and retraining to preserve the integrity of services. Addressing the ethical aspects, this paper outlines specific guidelines and evaluation criteria for AI development, proposing an adaptable feed-back loop for model improvement. This method aims to detect and rectify performance declines through prompt retraining, thereby cultivating robust, ethically sound AI systems. Such systems are expected to maintain performance while ensuring user trust and adhering to data science and web technology standards. Ultimately, the study seeks to balance AI's technological advancements with societal ethics and values, ensuring its role as a positive, reliable force across different industries. This balance is crucial for harmonizing innovation with the ethical use of data and science, thereby facilitating a future where AI contributes significantly and responsibly to societal well-being.
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网络平台上人工智能系统变更管理和模型改进的功能要求和检查项目研究
人工智能(AI)在网络平台上被多个领域迅速采用,这不仅凸显了其固有的技术障碍,如不可预测性和缺乏透明度,而且还引发了重大的社会关切。这些问题包括滥用人工智能技术、侵犯隐私、有偏见的数据助长歧视以及侵犯版权。这些挑战危及人工智能的可持续发展,并有可能削弱社会信任、行业采用和金融投资。本分析探讨了人工智能系统的生命周期,强调了持续监控的重要性以及创造值得信赖的人工智能技术的必要性。它倡导以道德为导向的开发过程,以减轻不利影响并支持可持续发展。人工智能的动态性和不可预测性,再加上数据输入的可变性和分布的不断变化,要求对模型进行持续更新和再训练,以保持服务的完整性。针对伦理方面的问题,本文概述了人工智能发展的具体指导方针和评估标准,并提出了一种用于改进模型的适应性反馈回路。这种方法旨在通过及时的再训练来检测和纠正性能下降,从而培养出稳健、符合道德规范的人工智能系统。这种系统有望在保持性能的同时确保用户信任,并遵守数据科学和网络技术标准。归根结底,这项研究旨在平衡人工智能的技术进步与社会伦理和价值观,确保其在不同行业中发挥积极可靠的作用。这种平衡对于协调创新与合乎道德地使用数据和科学至关重要,从而促进未来人工智能以负责任的方式为社会福祉做出重大贡献。
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来源期刊
Journal of Web Engineering
Journal of Web Engineering 工程技术-计算机:理论方法
CiteScore
1.80
自引率
12.50%
发文量
62
审稿时长
9 months
期刊介绍: The World Wide Web and its associated technologies have become a major implementation and delivery platform for a large variety of applications, ranging from simple institutional information Web sites to sophisticated supply-chain management systems, financial applications, e-government, distance learning, and entertainment, among others. Such applications, in addition to their intrinsic functionality, also exhibit the more complex behavior of distributed applications.
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