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RD-PCA: A Traffic Condition Data Imputation Method Based on Robust Distance

机译:RD-PCA:基于鲁棒距离的流量数据载旋方法

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Dynamic Transportation Information Service has penetrated into residents' travels. The current problems that transportation information services face are variable such as real-time traffic forecasting, traffic managing and traffic induction. The above problems are related to the quality of historical traffic condition data. Due to a limited of GPS data collecting, the collected GPS data which scarcely covers the whole road network leads to incomplete and error traffic condition data. In consequence, two serious problems of traffic condition data quality manifest in incompleteness and low accuracy. This paper extends RD-PCA method which preliminarily focuses on the accuracy of imputing to prevent the estimating results from being impacted by outliers and aims at guaranteeing the completeness of imputing. The method excludes error data taking data quality measurement criterions. By adopting a measure factor, this method detects outliers and standardizes them, then constructs a robust feature space and imputes the missing data. The experimental results show that the proposed method can guarantee a high completeness and high accuracy under the condition of different missing rates.
机译:动态运输信息服务已渗透到居民的旅行中。运输信息服务面部的当前问题是可变的,如实时流量预测,流量管理和流量诱导。上述问题与历史交通状况数据的质量有关。由于GPS数据收集的限制,几乎没有覆盖整个道路网络的收集的GPS数据导致不完整和交通状况数据。结果,交通条件数据质量的两个严重问题,以不完整和低的准确性表现出来。本文扩展了RD-PCA方法,初步侧重于抵消的准确性,以防止估计结果因异常值影响而受到影响,并旨在保证抵抗的完整性。该方法不包括错误数据,以获取数据质量测量标准。通过采用度量因子,该方法检测异常值并标准化它们,然后构建强大的特征空间并赋予缺失的数据。实验结果表明,该方法可以在不同缺失率的条件下保证高完整性和高精度。

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