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Cloudy with a Chance of Poaching: Adversary Behavior Modeling and Forecasting with Real-World Poaching Data

机译:多云与偷猎的机会:对现实世界偷猎数据的对手行为建模和预测

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Wildlife conservation organizations task rangers to deter and capture wildlife poachers. Since rangers are responsible for patrolling vast areas, adversary behavior modeling can help more effectively direct future patrols. In this innovative application track paper, we present an adversary behavior modeling system, INTER-CEPT (INTERpretable Classification Ensemble to Protect Threatened species), and provide the most extensive evaluation in the AI literature of one of the largest poaching datasets from Queen Elizabeth National Park (QENP) in Uganda, comparing INTERCEPT with its competitors; we also present results from a month-long test of INTERCEPT in the field. We present three major contributions. First, we present a paradigm shift in modeling and fore-casting wildlife poacher behavior. Some of the latest work in the AI literature (and in Conservation) has relied on models similar to the Quantal Response model from Behavioral Game Theory for poacher behavior prediction. In contrast, INTERCEPT presents a behavior model based on an ensemble of decision trees (i) that more effectively predicts poacher attacks and (ii) that is more effectively interpretable and verifiable. We augment this model to account for spatial correlations and construct an ensemble of the best models, significantly improving performance. Second, we conduct an extensive evaluation on the QENP dataset, comparing 41 models in prediction performance over two years. Third, we present the results of deploying INTERCEPT for a one-month field test in QENP - a first for adversary behavior modeling applications in this domain. This field test has led to finding a poached elephant and more than a dozen snares (including a roll of elephant snares) before they were deployed, potentially saving the lives of multiple animals - including elephants.
机译:野生动物保护组织任务游侠阻止并捕捉野生动物偷猎者。由于游侠负责巡逻广阔的领域,逆境行为建模可以帮助更有效地直接导致未来的巡逻。在这篇创新的应用程序赛道中,我们提出了一个对手行为建模系统,CELT-CELED(可解释的分类集合来保护受威胁物种),并为来自伊丽莎白女王国家公园的最大偷猎数据集之一的AI文学提供了最广泛的评价(QENP)在乌干达,比较拦截与竞争对手;我们还提出了一个月长期拦截的结果。我们提出了三项主要贡献。首先,我们提出了建模和前铸造野生动物挖掘行为的范式转变。 AI文献(和在保护)中的一些最新工作依赖于类似于Poacher行为预测的行为博弈理论的模型类似的模型。相反,截距基于决策树(i)的集合提出了一种行为模型,其更有效地预测挖掘攻击和(ii)更有效地解释和可验证。我们增强了该模型以考虑空间相关性并构建最佳模型的集合,显着提高性能。其次,我们对QENP数据集进行了广泛的评估,比较了两年多的预测性能中的41个模型。第三,我们介绍了在QENP中的一个月字段测试部署截距的结果 - 这是一个在这个域中的对手行为建模应用程序。该场测试导致在部署后找到偷猎大象,并超过十几个陷阱(包括一卷大象陷阱),潜在地节省了多种动物的生命 - 包括大象。

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