Security Risk and Attacks in AI: A Survey of Security and Privacy

Md Mostafizur Rahman, Aiasha Siddika Arshi, Md. Golam Moula Mehedi Hasan, Sumayia Farzana Mishu, H. Shahriar, Fan Wu
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引用次数: 1

Abstract

This survey paper provides an overview of the current state of AI attacks and risks for AI security and privacy as artificial intelligence becomes more prevalent in various applications and services. The risks associated with AI attacks and security breaches are becoming increasingly apparent and cause many financial and social losses. This paper will categorize the different types of attacks on AI models, including adversarial attacks, model inversion attacks, poisoning attacks, data poisoning attacks, data extraction attacks, and membership inference attacks. The paper also emphasizes the importance of developing secure and robust AI models to ensure the privacy and security of sensitive data. Through a systematic literature review, this survey paper comprehensively analyzes the current state of AI attacks and risks for AI security and privacy and detection techniques.
人工智能中的安全风险和攻击:安全和隐私调查
随着人工智能在各种应用和服务中变得越来越普遍,本调查报告概述了人工智能攻击的现状以及人工智能安全和隐私的风险。与人工智能攻击和安全漏洞相关的风险正变得越来越明显,并造成许多经济和社会损失。本文将对针对AI模型的不同类型的攻击进行分类,包括对抗性攻击、模型反转攻击、中毒攻击、数据中毒攻击、数据提取攻击和成员推理攻击。本文还强调了开发安全可靠的人工智能模型以确保敏感数据的隐私和安全的重要性。本调查论文通过系统的文献综述,全面分析了人工智能攻击的现状以及人工智能安全和隐私以及检测技术的风险。
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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