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Mixture Imputation Based Missing Value Imputing Method for Traffic Flow Volume Data

机译:基于混合插补的交通流量数据缺失值插补方法

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In order to improve the imputing performance of traffic missing data, it is vital important to analyze on imputing method and data pattern. Firstly, a mixture imputation( MI) based on iterated local least squares imputing (ILL Simpute) and Bayesian principal component analysis imputing( BPCAimpute) is introduced into handling the problem, which combines the global correlation of BPCAimpute and the local correlation of ILL-Simpute by distributing different weights. Secondly, a new kind of data pattern is used to analyze the traffic missing data, which can enhance the data correlation. Finally, the experiments prove that the MI provides a significantly better imputing performance than both BPCAimpute and ILLSimpute, the new data pattern also make a great contribution to a large extent.
机译:为了提高流量丢失数据的插补性能,对插补方法和数据模式进行分析至关重要。首先,将基于迭代局部最小二乘插值(ILL Simpute)和贝叶斯主成分分析插值(BPCAimpute)的混合插值(MI)引入BPCAimpute的全局相关性和ILL-Simpute的局部相关性来处理该问题。通过分配不同的权重。其次,使用一种新型的数据模式来分析交通流失数据,可以增强数据的相关性。最后,实验证明,MI提供了比BPCAimpute和ILLSimpute更好的插补性能,新的数据模式在很大程度上也做出了很大的贡献。

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