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PREVE: A Policy Recommendation Engine based on Vector Equilibria Applied to Reducing LeT's Attacks

机译:Preve:一种基于向量均衡的策略推荐引擎,适用于减少让我们攻击的攻击

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We consider the problem of dealing with the terrorist group Lashkar-e-Taiba (LeT), responsible for the 2008 Mumbai attacks, as a five-player game. However, as different experts vary in their assessment of players' payoffs in this game (and other games), we identify multi-payoff equilibria through a novel combination of vector payoffs and well-supported ε approximate equilibria. We develop a grid search algorithm for computing such equilibria, and provide experimental validation using three payoff matrices filled in by experts in India-Pakistan relations. The resulting system, called PREVE, allows us to analyze the equilibria thus generated and suggest policies to reduce attacks by LeT. We briefly discuss the suggested policies and identify their strengths and weaknesses.
机译:我们认为处理恐怖主义群体Lashkar-e-Taiba(Let),负责2008年孟买攻击的问题,作为五名球员游戏。然而,随着不同专家在这场比赛(和其他游戏)的评估中,我们通过对矢量收益的新组合以及支持ε近似均衡的新组合来确定多付费均衡。我们开发了一种计算诸如均衡的网格搜索算法,并使用印度 - 巴基斯坦关系专家填写的三个收益矩阵提供实验验证。由此产生的系统称为Preve,允许我们分析如此生成的均衡,并建议通过让Let减少攻击的策略。我们简要介绍了建议的政策,并确定了他们的优势和劣势。

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