基于树形记忆模块LSTM的出租车目的地预测

Dan Song, Yadong Li, Meng-Yun Zhang, Ting Zhang
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引用次数: 0

摘要

出租车目的地预测可以掌握出租车的流向,方便出租车调度。滑行轨迹预测一直存在长期依赖问题。虽然LSTM可以在一定程度上解决长期依赖问题,但对于长轨迹序列之间的深度相关处理能力不强。为了解决上述问题,我们提出了一种基于树记忆模块LSTM (TMM-LSTM)的出租车目的地预测方法。TMM-LSTM通过外部存储结构存储输入轨迹的状态。它采用树形结构来处理更多的历史信息,更好地处理轨迹点之间的长期关系。TMM-LSTM能较好地解决滑行轨迹序列的长期依赖问题。实验表明,该模型的平均误差距离比传统LSTM模型小6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Taxi destination prediction based on LSTM with tree memory module
Taxi destination prediction can grasp the flow direction of the taxi, facilitate the taxi dispatches. There has always been a long-term dependency problem in taxi trajectory prediction. Although LSTM can solve the long-term dependency problem to a certain extent, it does not have a good ability to deal with the deep correlation between long trajectory sequences. To address the above problem, we propose a taxi destination prediction method based on LSTM with Tree Memory Module (TMM-LSTM). TMM-LSTM stores the state of the input trajectory through an external memory structure. It uses a tree structure to process more historical information and better deal with the long-term relationship between trajectory points. TMM-LSTM can better solve the long-term dependency problem in the taxi trajectory sequence. Experiments demonstrate that the average error distance is 6% lower than traditional LSTM model.
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