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Large-Scale Fine-Grained Spatial and Temporal Analysis and Prediction of Mobile Phone Users’ Distributions Based upon a Convolution Long Short-Term Model

机译:基于卷积长短期模型的移动电话用户分布的大规模细粒度时空分析和预测

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摘要

Accurate and timely estimations of large-scale population distributions are a valuable input for social geography and economic research and for policy-making. The most popular large-scale method to calculate such estimations uses mobile phone data. We propose a novel method, firstly based upon using a kernel density estimation (KDE) to estimate dynamic mobile phone users’ distributions at a two-hourly scale temporal resolution. Secondly, a convolutional long short-term memory (ConvLSTM) model was used in our study to predict mobile phone users’ spatial and temporal distributions for the first time at such a fine-grained temporal resolution. The evaluation results show that the predicted people’s mobility derived from the mobile phone users’ density correlates much better with the actual density, both temporally and spatially, as compared to traditional methods such as time-series prediction, autoregressive moving average model (ARMA), and LSTM.
机译:准确及时地估计大规模人口分布情况,对于社会地理和经济研究以及政策制定都具有重要意义。计算此类估计的最流行的大规模方法是使用手机数据。我们提出一种新颖的方法,首先基于使用核密度估计(KDE)来估计动态手机用户在两个小时尺度上的时间分辨率分布。其次,在我们的研究中,使用了卷积长短期记忆(ConvLSTM)模型,以这种细粒度的时间分辨率首次预测了手机用户的空间和时间分布。评估结果显示,与传统方法(例如时间序列预测,自回归移动平均模型(ARMA),和LSTM。

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