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Toward Adversarial Online Learning and the Science of Deceptive Machines

机译:朝着对抗的在线学习和欺骗性机器的科学

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Intelligent systems rely on pattern recognition and signaturebased approaches for a wide range of sensors enhancing situational awareness. For example, autonomous systems depend on environmental sensors to perform their tasks and secure systems depend on anomaly detection methods. The availability of large amount of data requires the processing of data in a "streaming" fashion with online algorithms. Yet, just as online learning can enhance adaptability to a non-stationary environment, it introduces vulnerabilities that can be manipulated by adversaries to achieve their goals while evading detection. Although human intelligence might have evolved from social interactions, machine intelligence has evolved as a human intelligence artifact and been kept isolated to avoid ethical dilemmas. As our adversaries become sophisticated, it might be time to revisit this question and examine how we can combine online learning and reasoning leading to the science of deceptive and counter-deceptive machines.
机译:智能系统依赖于模式识别和签名的方法,用于广泛的传感器,增强情境意识。例如,自治系统依赖于环境传感器,以执行其任务和安全系统取决于异常检测方法。大量数据的可用性需要在具有在线算法的“流”时尚中的数据处理。然而,正如在线学习可以提高对非静止环境的适应性,它引入了可能因对手而可以操纵的漏洞,同时在逃避检测时实现目标。虽然人类的智慧可能已经从社会互动中发展,但机器智能已经发展为人类智力伪影,并被避开避开道德困境。由于我们的对手变得复杂,可能是时候重新审视了这个问题,并审查我们如何将在线学习和推理能够导致欺骗性和反欺骗机器的科学。

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