基于海量序列数据的分组用户出行预测研究

Mengna Bai, Lu Feng, Hua Yuan, Yu Qian
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引用次数: 0

摘要

预测分组用户未来的行为是一个有意义的研究问题。本文以公交用户为例,介绍了相空间重构方法,利用海量序列数据建立了大系统的动态演化模型。同时,考虑到一般预测方法在大数据集中存在的不足,提出了拐点法在预测前自动选择相似点。该方法不仅降低了预测过程中相似性的计算复杂度,而且显著提高了预测效果。实验结果表明,本文提出的方法为利用海量序列数据进行系统建模和群体行为预测提供了新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On prediction of grouped users' trip based on massive sequence data
Prediction of the behavior of the grouped users in the future is a meaningful research question. In this paper, we take the transit users as an example to introduce the phase space reconstruction method and use the massive sequence data to model the large-scale system with a dynamic evolution model. At the same time, considering the shortcomings of the general prediction method in large data set, an inflection point method is proposed for the automatic selection of similar points before prediction. This method does not only reduce the computational complexity of similarity in prediction process, but also significantly improve the prediction effect. Experiments show that the method proposed in this paper provides a new idea for both system modeling and group behavior predicting by using mass sequence data.
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