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An Improved k-Nearest Neighbours Method for Traffic Time Series Imputation

机译:用于交通时间序列估算的改进的K-Collect邻居方法

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摘要

Intelligent transportation systems (ITS) are becoming more and more effective, benefiting from big data. Despite this, missing data is a problem that prevents many prediction algorithms in ITS from working effectively. Much work has been done to impute those missing data. Among different imputation methods, k-nearest neighbours (kNN) has shown excellent accuracy and efficiency. However, the general kNN is designed for matrix instead of time series so it lacks the usage of time series characteristics such as windows and weights that are gap-sensitive. This work introduces gap-sensitive windowed kNN (GSW-kNN) imputation for time series. The results show that GSW-kNN is 34% more accurate than benchmarking methods, and it is still robust even if the missing ratio increases to 90%.
机译:智能交通系统(其)越来越有效,受益于大数据。尽管如此,缺少的数据是一个问题,它可以有效地防止许多预测算法。已经完成了很多工作来赋予那些缺失的数据。在不同的估算方法中,K-CORMALT邻居(KNN)已经显示出优异的精度和效率。但是,通用KNN专为矩阵而不是时间序列设计,因此它缺乏时间序列特性的使用,例如窗口和重量是间隙敏感的。这项工作引入了时间序列的间隙敏感窗口KNN(GSW-KNN)估算。结果表明,GSW-KNN比基准测试方法更准确,即使缺失比率增加到90%,它仍然是坚固的。

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