Adversarial and Uncertain Reasoning for Adaptive Cyber Defense: Control- And Game-Theoretic Approaches to Cyber Security
暫譯: 對抗性與不確定推理在自適應網路防禦中的應用:控制與博弈理論方法於網路安全
Jajodia, Sushil, Cybenko, George, Liu, Peng
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商品描述
Today's cyber defenses are largely static allowing adversaries to pre-plan their attacks. In response to this situation, researchers have started to investigate various methods that make networked information systems less homogeneous and less predictable by engineering systems that have homogeneous functionalities but randomized manifestations.
The 10 papers included in this State-of-the Art Survey present recent advances made by a large team of researchers working on the same US Department of Defense Multidisciplinary University Research Initiative (MURI) project during 2013-2019. This project has developed a new class of technologies called Adaptive Cyber Defense (ACD) by building on two active but heretofore separate research areas: Adaptation Techniques (AT) and Adversarial Reasoning (AR). AT methods introduce diversity and uncertainty into networks, applications, and hosts. AR combines machine learning, behavioral science, operations research, control theory, and game theory to address the goal of computing effective strategies in dynamic, adversarial environments.
商品描述(中文翻譯)
當前的網路防禦大多是靜態的,這使得對手能夠預先計劃攻擊。針對這種情況,研究人員開始探索各種方法,通過設計具有同質功能但隨機表現的系統,使網路資訊系統變得不那麼同質化和可預測。
本次最先進調查中包含的10篇論文展示了2013年至2019年間,參與美國國防部多學科大學研究倡議(MURI)項目的大型研究團隊所取得的最新進展。該項目開發了一類稱為自適應網路防禦(Adaptive Cyber Defense, ACD)的新技術,這是基於兩個活躍但迄今為止獨立的研究領域:適應技術(Adaptation Techniques, AT)和對抗推理(Adversarial Reasoning, AR)。AT方法為網路、應用程式和主機引入多樣性和不確定性。AR則結合了機器學習、行為科學、運籌學、控制理論和博弈論,以解決在動態對抗環境中計算有效策略的目標。