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A functional data approach to missing value imputation and outlier detection for traffic flow data

机译:一种功能数据方法,用于交通流数据的缺失值估算和异常值检测

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摘要

Missing values and outliers are frequently encountered in traffic monitoring data. We approach these problems by sampling the daily traffic flow rate trajectories from random functions and taking advantage of the data features using functional data analysis. We propose to impute missing values by using the conditional expectation approach to functional principal component analysis (FPCA). Our simulation study shows that the FPCA approach performs better than two commonly discussed methods in the literature, the probabilistic principal component analysis (PCA) and the Bayesian PCA, which have been shown to perform better than many conventional approaches. Based on the FPCA approach, the functional principal component scores can be applied to the functional bagplot and functional highest density region boxplot, which makes outlier detection possible for incomplete functional data. Our numerical results indicate that these two outlier detection approaches coupled with the proposed missing value imputation method can perform reasonably well. Although motivated by traffic flow data application, the proposed functional data methods for missing value imputation and outlier detection can be used in many applications with longitudinally recorded functional data.
机译:流量监控数据中经常会遇到缺失值和异常值。我们通过从随机函数中采样每日交通流量轨迹并利用功能数据分析来利用数据特征来解决这些问题。我们建议通过使用条件期望方法进行功能主成分分析(FPCA)来估算缺失值。我们的仿真研究表明,FPCA方法的性能优于文献中两个常用的方法,即概率主成分分析(PCA)和贝叶斯PCA,它们已被证明比许多常规方法的性能更好。基于FPCA方法,可以将功能主成分评分应用于功能袋图和功能最高密度区域盒图,这可以对不完整的功能数据进行异常检测。我们的数值结果表明,这两种离群值检测方法与所提出的缺失值插补方法相结合可以很好地执行。尽管受到交通流量数据应用程序的激励,但用于缺失值插补和离群值检测的建议功能数据方法可用于具有纵向记录功能数据的许多应用程序。

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