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Assessing reliable human mobility patterns from higher order memory in mobile communications

机译:从移动通信中的高阶存储器评估可靠的人类移动性模式

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摘要

Understanding how people move within a geographical area, e.g. a city, a country or the whole world, is fundamental in several applications, from predicting the spatio-temporal evolution of an epidemic to inferring migration patterns. Mobile phone records provide an excellent proxy of human mobility, showing that movements exhibit a high level of memory. However, the precise role of memory in widely adopted proxies of mobility, as mobile phone records, is unknown. Here we use 560 million call detail records from Senegal to show that standard Markovian approaches, including higher order ones, fail in capturing real mobility patterns and introduce spurious movements never observed in reality. We introduce an adaptive memory-driven approach to overcome such issues. At variance with Markovian models, it is able to realistically model conditional waiting times, i.e. the probability to stay in a specific area depending on individuals' historical movements. Our results demonstrate that in standard mobility models the individuals tend to diffuse faster than observed in reality, whereas the predictions of the adaptive memory approach significantly agree with observations. We show that, as a consequence, the incidence and the geographical spread of a disease could be inadequately estimated when standard approaches are used, with crucial implications on resources deployment and policy-making during an epidemic outbreak.
机译:了解人们在某个地理区域内的移动方式,例如一个城市,一个国家或整个世界,在预测流行病的时空演变到推断移民模式等多种应用中都是至关重要的。手机记录可以很好地代表人类的移动性,表明移动具有很高的记忆力。但是,记忆在移动电话代理广泛采用的代理中的确切作用尚不清楚。在这里,我们使用来自塞内加尔的5.6亿个呼叫详细记录,以显示标准的马尔可夫方法(包括高阶方法)无法捕获实际的移动性模式,并引入了现实中从未观察到的虚假运动。我们介绍了一种自适应内存驱动的方法来克服此类问题。与马尔可夫模型不同的是,它能够现实地对条件等待时间建模,即根据个人的历史运动而留在特定区域的概率。我们的结果表明,在标准移动性模型中,个体的扩散速度往往比实际观察到的快,而自适应记忆方法的预测与观察值明显吻合。我们的结果表明,使用标准方法时,可能无法充分估计疾病的发生率和地理分布,这对流行病爆发期间的资源配置和决策至关重要。

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