Predicting next location using a variable order Markov model

Jie Yang, Jian Xu, Ming Xu, Ning Zheng, Yu Chen
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引用次数: 47

Abstract

Due to the booming industry of location-based services, the analysis of human location histories is increasingly important. Next location prediction is essential to many location-based services. Predicting user's next location usually involves obtaining significant places from the history trajectories and predicting location with a certain statistic model. This paper presents new approaches to deal with both of above problems. For the former problem, a hierarchical clustering algorithm is proposed. We first identify specific features of stay points and then group the GPS points satisfying the identified features to form stay points by a new algorithm which is a variant of DBSCAN clustering algorithm. After that these stay points can be clustered to form significant places. For the later problem, taking the drawbacks like high space complexity and zero frequency problem in N-order Markov Model into consideration, we train a variable order Markov Model to predict next location. The variable order Markov Model uses escape mechanism to address the zero frequency problem and uses a tree structure to decrease the amount of memory needed in N-order Markov Model. An extensive set of experiments have been conducted to demonstrate the performance of proposed methods based on a real-world dataset, GeoLife.
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使用变阶马尔可夫模型预测下一个位置
随着基于位置的服务行业的蓬勃发展,对人类位置历史的分析变得越来越重要。其次,位置预测对许多基于位置的服务至关重要。预测用户的下一个位置通常需要从历史轨迹中获取有意义的位置,并利用一定的统计模型进行位置预测。本文提出了解决这两个问题的新方法。针对前一个问题,提出了一种层次聚类算法。首先识别待停留点的特定特征,然后采用一种改进的DBSCAN聚类算法对满足特征的GPS点进行分组形成待停留点。之后,这些停留点可以聚集在一起形成重要的地方。对于后一个问题,考虑到n阶马尔可夫模型存在空间复杂度高、零频率问题等缺点,我们训练了一个变阶马尔可夫模型来预测下一个位置。变阶马尔可夫模型采用转义机制解决零频率问题,并采用树形结构减少n阶马尔可夫模型所需的内存量。一组广泛的实验已经进行,以证明基于真实世界数据集GeoLife提出的方法的性能。
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