可解释的人工智能和机器学习为智能城市提供强大的网络安全

Shruti Gupta , Jyotsna Singh , Rashmi Agrawal , Usha Batra
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引用次数: 0

摘要

这些新技术的一个新兴应用是在城市发展中,城市越来越多地利用它们来解决社会、环境和城市问题。物联网为智慧城市铺平了道路,而人工智能推动的大数据则彻底改变了渐进式城市化。然而,推广技术的举措必须在可持续性和宜居性原则之间取得平衡。随着深度学习的迅速发展,创造越来越复杂的技术导致了高度复杂(通常是不透明的)模型,这些模型很难解释。当决策系统以这种不透明和复杂的结构为基础时,建立信任和保持透明度就变得越来越困难。本文探讨了人工智能的城市前景,并提出了将人工智能注入城市景观的新框架。新的方向是社会导向的,包括价值观、城市新陈代谢和治理等要素。对网络安全中机器学习应用的系统回顾还讨论了可解释性对于克服其带来的挑战的重要性。确保自治系统的可解释性、可解释性和可理解性的重要性也将成为本次讨论的一部分,特别是在使用基于人工智能的技术开发智慧城市的背景下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable AI and machine learning for robust cybersecurity in smart cities
An emerging application of such new technologies is in urban development, with cities increasingly utilizing them to address social, environmental, and urban issues. IoT has paved the way for Smart Cities,  while AI-fueled big data has revolutionized progressive urbanization. However, initiatives to promote technology must be balanced by principles of sustainability and livability. As deep learning has advanced rapidly, creating increasingly sophisticated technologies has led to highly complex — and often opaque — models that can be difficult to interpret. It becomes increasingly difficult to establish trust and maintain transparency when decision-making systems are based on such opaque and complex structures. This article explores the urban promise of AI and presents a new framework infusion of AI into cityscapes. The new direction is socially oriented through the inclusion of elements such as values, urban metabolism, and governance. A systematic review of machine-learning applications in cybersecurity also discusses the importance of explainability for overcoming the challenges it entails. The importance of assuring the explainability, interpretability, and intelligibility of autonomous systems will also be part of this discussion, especially in the context of developing smart cities using AI-based technologies.
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