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Learning Periodic Human Behaviour Models from Sparse Data for Crowdsourcing Aid Delivery in Developing Countries

机译:从稀疏数据中学习周期性人类行为模型,以在发展中国家进行众包援助

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In many developing countries, half the population lives in rural locations, where access to essentials such as school materials, mosquito nets, and medical supplies is restricted. We propose an alternative method of distribution (to standard road delivery) in which the existing mobility habits of a local population are leveraged to deliver aid, which raises two technical challenges in the areas optimisation and learning. For optimisation, a standard Markov decision process applied to this problem is intractable, so we provide an exact formulation that takes advantage of the periodicities in human location behaviour. To learn such behaviour models from sparse data (i.e., cell tower observations), we develop a Bayesian model of human mobility. Using real cell tower data of the mobility behaviour of 50,000 individuals in Ivory Coast, we find that our model outperforms the state of the art approaches in mobility prediction by at least 25% (in held-out data likelihood). Furthermore, when incorporating mobility prediction with our MDP approach, we find a 81.3% reduction in total delivery time versus routine planning that minimises just the number of participants in the solution path.
机译:在许多发展中国家,一半的人口居住在农村地区,那里的生活必需品如学校材料,蚊帐和医疗用品的供应受到限制。我们提出了另一种分配方法(标准道路运输),其中利用了当地居民的现有流动习惯来提供援助,这在优化和学习领域提出了两个技术挑战。为了优化,适用于此问题的标准马尔可夫决策过程很棘手,因此我们提供了一种精确的公式,该公式利用了人类位置行为的周期性。要从稀疏数据(例如,细胞塔观测)中学习此类行为模型,我们开发了一种人类移动性的贝叶斯模型。使用象牙海岸50,000个人移动行为的真实细胞塔数据,我们发现我们的模型在移动性预测方面比最先进的方法至少高出25%(在保持数据的可能性下)。此外,将移动性预测与我们的MDP方法结合使用时,与常规计划相比,我们发现总交付时间减少了81.3%,从而使解决方案路径中的参与者数量最小化。

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