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A Convolutional Neural Network Approach for Modeling Semantic Trajectories and Predicting Future Locations

机译:一种模拟语义轨迹和预测未来位置的卷积神经网络方法

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In recent years, Location Based Service (LBS) providers rely increasingly on predictive models in order to offer their users timely and tailored solutions. Current location prediction algorithms go beyond using plain location data and show that additional context information can lead to a higher performance. Moreover, it has been shown that using semantics and projecting GPS trajectories on so called semantic trajectories can further improve the model. At the same time, Artificial Neural Networks (ANNs) have been proven to be very reliable when it comes to modeling and predicting time series. Recurrent network architectures show a particularly good performance. However, very little research has been done on the use of Convolutional Neural Networks (CNNs) in connection with modeling human movement patterns. In this work, we introduce a CNN-based approach for representing semantic trajectories and predicting future locations. Furthermore, we included an additional embedding layer to raise the efficiency. In order to evaluate our approach, we use the MIT Reality Mining dataset and use a Feed-Forward (FFNN) -, a Recurrent (RNN) - and a LSTM network to compare it with on two different semantic trajectory levels. We show that CNNs are more than capable of handling semantic trajectories, while providing high prediction accuracies at the same time.
机译:近年来,基于位置的服务(LBS)提供商越来越依赖预测模型,以便为用户提供及时和量身定制的解决方案。当前位置预测算法超出使用普通位置数据,并显示其他上下文信息可能导致更高的性能。此外,已经表明,使用语义和投影GPS轨迹,所谓的语义轨迹可以进一步改善模型。与此同时,在建模和预测时间序列时,人工神经网络(ANNS)已被证明是非常可靠的。经常性网络架构表现出特别好的性能。然而,在使用与建模人体运动模式相关的卷积神经网络(CNNS)上使用了很少的研究。在这项工作中,我们介绍了基于CNN的方法来代表语义轨迹和预测未来位置。此外,我们包括一个额外的嵌入层以提高效率。为了评估我们的方法,我们使用MIT现实挖掘数据集和使用前馈(FFNN) - ,一个经常性的(RNN) - 和LSTM网络,它在两个不同的语义轨迹的水平进行比较。我们表明CNNS的速度不仅仅是处理语义轨迹,同时提供高预测精度。

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