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An Introduction to Adversarial Machine Learning

机译:对抗机器学习介绍

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Machine learning based system are increasingly being used for sensitive tasks such as security surveillance, guiding autonomous vehicle, taking investment decisions, detecting and blocking network intrusion and malware etc. However, recent research has shown that machine learning models are venerable to attacks by adversaries at all phases of machine learning (e.g., training data collection, training, operation). All model classes of machine learning systems can be misled by providing carefully crafted inputs making them wrongly classify inputs. Maliciously created input samples can affect the learning process of a ML system by either slowing the learning process, or affecting the performance of the learned model or causing the system make error only in attacker's planned scenario. Because of these developments, understanding security of machine learning algorithms and systems is emerging as an important research area among computer security and machine learning researchers and practitioners. We present a survey of this emerging area named Adversarial machine learning.
机译:基于机器学习的系统越来越多地用于安全监控,指导自主车辆,投资决策,检测和阻止网络入侵和恶意软件等敏感任务等,但最近的研究表明,机器学习模型是由对手攻击的机器学习模式机器学习的所有阶段(例如,培训数据收集,培训,操作)。通过提供仔细制作的输入,可以误导所有模型的机器学习系统,使其错误地分类输入。恶意创建的输入样本可以通过减慢学习过程来影响ML系统的学习过程,或影响学习模型的性能或导致系统仅在攻击者计划方案中发出错误。由于这些发展,了解机器学习算法和系统的安全性是计算机安全和机器学习研究人员和从业者之间的重要研究领域。我们展示了对这个名为对抗机器学习的新兴区域的调查。

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