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A choice model with a diverging choice set for POI data analysis

机译:带有不同选择集的POI数据分析选择模型

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A point of interest (POI) is a geographical location, that might carry interest for the public. A POI provides a convenient way to register people's locations through mobile devices, which leads to POI data. POI data contain accurate location information and are extremely valuable for location based services (LBS). Accordingly, principled statistical methods, which can be used for regression and/or prediction are required. To partially fulfill this theoretical gap, we propose a conditional logit approach for POI choice analysis. This new model is a natural extension of the classical choice model (McFadden, 1974, 1978) but with two key characteristics. First, POIs located far away from the current position are less likely to be selected as the next POI choice. As a result, the distance (or its appropriate transformation) between the current position and the next POI candidate is an important predictor and should be included in the model. Second, the classical choice model considers a finite choice set. By contrast, the new model studies a diverging choice set, mainly because the total number of POI locations in practice is typically large. The diverging choice set produces an expensive computation of the maximum likelihood estimation (MLE). To alleviate computational costs, we further propose a constrained maximum likelihood estimation (CMLE) method. Compared with MLE, CMLE utilizes only those POIs located within a reasonable distance. This prioritization leads to a significant reduction in computation at a reasonable efficiency loss. To demonstrate the finite sample performance of the method, numerical studies based on both simulated and real datasets are presented.
机译:兴趣点(POI)是一个地理位置,可能会引起公众的兴趣。 POI提供了一种方便的方式,可以通过移动设备注册人们的位置,从而获得POI数据。 POI数据包含准确的位置信息,对于基于位置的服务(LBS)极为有价值。因此,需要可以用于回归和/或预测的原理统计方法。为了部分弥补这一理论空白,我们提出了一种用于POI选择分析的条件logit方法。这个新模型是经典选择模型(McFadden,1974,1978)的自然扩展,但具有两个关键特征。首先,远离当前位置的POI不太可能被选作下一个POI选择。结果,当前位置和下一个POI候选者之间的距离(或其适当的变换)是重要的预测因素,应将其包括在模型中。其次,经典选择模型考虑了有限选择集。相比之下,新模型研究的是不同的选择集,主要是因为实践中POI位置的总数通常很大。不同的选择集产生了最大似然估计(MLE)的昂贵计算。为了减轻计算成本,我们进一步提出了一种约束最大似然估计(CMLE)方法。与MLE相比,CMLE仅利用合理距离内的POI。这种优先次序导致以合理的效率损失显着减少计算。为了证明该方法的有限样本性能,提出了基于模拟和真实数据集的数值研究。

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