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A Method of Latent Semantic Information Mining for Trajectory Data

机译:一种轨迹数据潜在语义信息挖掘方法

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To explore the potential characteristics of trajectory data, this paper presents a method of latent semantic information mining for trajectory data (T-LSI). We aim to solve the problem of structuring the spatio-temporal data and discovering potential patterns from the trajectory data. First, a vector space model is proposed for trajectory data. Then, by the singular value decomposition of the trajectory matrix, we extract its low-dimensional semantic subspace to further mining its latent semantic information. Finally, we evaluate this research method with a mass of practical trajectory data, which has a total mileage of more than three million kilometers. The experimental results showed that this approach can be employed to analyze the potential characteristics of road network with trajectory data, and can be further used to uncover the driving behavior patterns.
机译:为了探索轨迹数据的潜在特征,本文提出了一种用于轨迹数据(T-LSI)的潜在语义信息挖掘方法。我们的目标是解决从轨迹数据构建时空数据和发现潜在模式的问题。首先,提出了一种用于轨迹数据的矢量空间模型。然后,通过轨迹矩阵的奇异值分解,我们提取其低维语义子空间,以进一步挖掘其潜在语义信息。最后,我们评估了具有大量实际轨迹数据的研究方法,其总线超过300万公里。实验结果表明,这种方法可以用于分析具有轨迹数据的道路网络的潜在特征,并且可以进一步用于揭示驾驶行为模式。

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