利用Twitter预测下一个位置

C. Comito
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引用次数: 2

摘要

与tweet序列相关的时间和地理坐标显示了人们在现实生活中的时空运动。本文旨在分析这种运动,以预测个体在一段时间内的移动行为和最近访问过的位置为基础的下一个位置。为此,我们定义了一种基于一组时空特征的预测方法,这些特征表征了它们之间的位置和运动。然后,我们将这些特征结合到基于M5模型树的监督学习方法中。使用实际数据集进行的实验结果表明,该方法可以有效地预测用户的下一个位置,并取得了显著的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Twitter for next-place prediction
The time- and geo-coordinates associated with a sequence of tweets manifest the spatial-temporal movements of people in real life. This paper aims to analyze such movements to predict the next location of an individual based on the observations of his mobility behavior over some period of time and the recent locations that he has visited. To this end, we defined a prediction methodology based on a set of spatio-temporal features characterizing locations and movements among them. We then combined the features in a supervised learning approach based on M5 model trees. The experimental results obtained by using a real-world dataset show that the supervised method is effective in predicting the users next places achieving a remarkable accuracy.
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