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On the learning patterns and adaptive behavior of terrorist organizations

机译:论恐怖组织的学习模式与自适应行为

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The threat to national security posed by terrorists makes the design of evidence-based counter-terrorism strategies paramount. As terrorist organizations are purposeful entities, it is crucial to understand their decision processes if we want to plan defenses and counter-measures. In particular, there is evidence that terrorist organizations are both adaptive in their behavior and driven by multiple objectives in their actions. In this paper, we use insights from learning theory and compare several different reinforcement learning models regarding their ability to predict terrorist organizations' actions. Using data on target choices of terrorist attacks and two different objectives (renown and revenge), we show that a total reinforcement learning with power (Luce) choice probabilities and information discounting can be used to model the adaptive behavior of terrorist organizations. The model renders out-of-sample predictions which are comparable in their validity to those observed for learning in laboratory studies. We draw implications for counter-terrorism strategies by comparing the predictive validity of the different models and their calibrated parameters. Our results also offer a starting point for studying the convergence process in game theoretic analyses of conflicts involving terrorists. (C) 2019 Elsevier B.V. All rights reserved.
机译:恐怖分子构成的国家安全威胁使得基于证据的反恐战略的设计成为最重要的。由于恐怖主义组织是有目的的实体,如果我们想计划防御和反措施,就可以了解他们的决策流程至关重要。特别是,有证据表明恐怖主义组织在其行为中适应,并受到他们行动中的多个目标的驱动。在本文中,我们使用学习理论的见解,并比较了几种不同的加强学习模型,了解他们预测恐怖组织的行为的能力。利用数据关于恐怖主义攻击的目标选择和两种不同的目标(着名和复仇),我们表明,具有权力(Luce)选择概率和信息折扣的总增强学习可用于建模恐怖组织的自适应行为。该模型呈现出样品预测,其有效性与观察到在实验室研究中学习的人的有效性相当。我们通过比较不同模型的预测有效性及其校准参数来吸引对抗恐怖主义策略的影响。我们的结果还提供了研究涉及恐怖分子的冲突的游戏理论分析中的收敛过程的起点。 (c)2019 Elsevier B.v.保留所有权利。

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