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Comparison of missing data imputation methods for traffic flow

机译:流量缺失数据插补方法的比较

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摘要

The complete and reliable field traffic data are vital for the planning, design and operation of urban traffic management systems. However, the problem of traffic data missing widely exists in many traffic information systems, which brings great troubles to the further utilization. Some approaches for imputing missing traffic data are needed, therefore, to minimize the effect of incomplete data on utilization. There are also problems of value missing in microarray data and several methods to estimate the missing values are proposed. These methods don't exploit any biology knowledge to estimate the missing value and they are just methods for data mining which can also be applied to the imputation of traffic flow data. In the paper, ten imputation methods for handling missing value problem of microarray data are compared with Bayesian Principle Component Analysis (BPCA) imputation method which is convinced to outperform many conventional approaches. Experiment analysis shows that LSI_gene, LSI_array, LSI_combined, LSI_adaptive, EM_gene and local least square imputation methods outperform BPCA and be good choices to deal with the problem of missing traffic data imputation.
机译:完整而可靠的现场交通数据对于城市交通管理系统的规划,设计和运营至关重要。但是,许多交通信息系统普遍存在交通数据丢失的问题,给进一步利用带来了很大的麻烦。因此,需要一些方法来估算丢失的流量数据,以最大程度地减少不完整数据对利用率的影响。在微阵列数据中还存在价值缺失的问题,并且提出了几种估计缺失值的方法。这些方法没有利用任何生物学知识来估计缺失值,它们只是数据挖掘的方法,也可以应用于交通流量数据的估算。本文将十种处理微阵列数据缺失值问题的插补方法与贝叶斯主成分分析(BPCA)插补方法进行了比较,该方法被认为优于许多传统方法。实验分析表明,LSI_gene,LSI_array,LSI_combined,LSI_adaptive,EM_gene和局部最小二乘插补方法优于BPCA,是解决交通数据插补遗漏问题的较好选择。

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