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A Markov Decision Process approach for balancing intelligence and interdiction operations in city-level drug trafficking enforcement

机译:马尔科夫决策过程方法,用于在城市一级的贩毒执法中平衡情报和拦截行动

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摘要

We study a resource allocation problem in which law enforcement aims to balance intelligence and interdiction decisions to fight against illegal city-level drug trafficking. We propose a Markov Decision Process framework, apply a column generation technique, and develop a heuristic to solve this problem. Our approaches provide insights into how law enforcement should prioritize its actions when there are multiple criminals of different types known to them. We prove that when only one action can be implemented, law enforcement will take action (either target or arrest) on the highest known criminal type to them. Our results demonstrate that: (i) it may be valuable to diversify the action taken on the same criminal type when more than one action can be implemented; (ii) the marginal improvement in terms of the value of the criminals interdicted per unit time by increasing available resources decreases as resource level increases; and (iii) there are losses that arise from not holistically planning the actions of all available resources across distinct operations against drug trafficking networks.
机译:我们研究了一种资源分配问题,其中执法旨在平衡情报和拦截决定,以打击非法的城市一级的毒品交易。我们提出了一个马尔可夫决策过程框架,应用了列生成技术,并开发了启发式方法来解决此问题。我们的方法提供了洞悉执法人员在已知多名不同类型罪犯时应如何优先采取行动的见解。我们证明,只有一种行动可以实施时,执法人员才会对他们采取的已知最高犯罪类型采取行动(针对或逮捕)。我们的结果表明:(i)当可以实施一项以上的行动时,使针对同一犯罪类型采取的行动多样化可能是有价值的; (ii)随着资源水平的提高,通过增加可用资源而使单位时间内被拦截的罪犯的价值略有提高; (iii)由于没有针对毒品贩运网络整体规划跨不同行动的所有可用资源的行动而造成的损失。

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