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Modeling Human Location Data with Mixtures of Kernel Densities

机译:使用核密度混合来建模人类位置数据

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Location-based data is increasingly prevalent with the rapid increase and adoption of mobile devices. In this paper we address the problem of learning spatial density models, focusing specifically on individual-level data. Modeling and predicting a spatial distribution for an individual is a challenging problem given both (a) the typical sparsity of data at the individual level and (b) the heterogeneity of spatial mobility patterns across individuals. We investigate the application of kernel density estimation (KDE) to this problem using a mixture model approach that can interpolate between an individual's data and broader patterns in the population as a whole. The mixture-KDE approach is evaluated on two large geolocation/check-in data sets, from Twitter and Gowalla, with comparisons to non-KDE base-lines, using both log-likelihood and detection of simulated identity theft as evaluation metrics. Our experimental results indicate that the mixture-KDE method provides a useful and accurate methodology for capturing and predicting individual-level spatial patterns in the presence of noisy and sparse data.
机译:随着移动设备的快速增长和采用,基于位置的数据越来越普遍。在本文中,我们解决了学习空间密度模型的问题,特别关注于单个级别的数据。考虑到(a)个人水平上数据的典型稀疏性和(b)个人之间空间移动性模式的异质性,为个人建模和预测空间分布是一个具有挑战性的问题。我们使用混合模型方法研究内核密度估计(KDE)在此问题上的应用,该模型方法可以在个人数据与总体人口中的更广泛模式之间进行内插。在Twitter和Gowalla的两个大型地理位置/签入数据集上对混合KDE方法进行了评估,并与非KDE基准进行了比较,同时使用对数似然率和模拟身份盗窃的检测作为评估指标。我们的实验结果表明,混合KDE方法为存在噪声和稀疏数据的情况下捕获和预测个体水平的空间格局提供了一种有用且准确的方法。

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