[[abstract]]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 b...
In Functional Data Analysis (FDA), the underlying structure of a raw observation is functional and d...
This paper reports on the application of suitable techniques for detecting outliers and suggesting e...
There are increasing concerns about missing traffic data in recent years. In this paper, a robust mi...
[[abstract]]Missing values and outliers are frequently encountered in traffic monitoring data. We ap...
In traffic monitoring data analysis, the magnitude of traffic density plays an important role in det...
Patterns of traffic flow trajectories play an essential role in analysing traffic monitoring data in...
[[sponsorship]]統計科學研究所[[note]]出版中(submitted);[SCI],[SSCI];有審查制度;具代表性[[note]]http://gateway.isiknowle...
The growth of vehicle mobility in the past decades and increased traffic complexity leads to a need ...
Functional Data Analysis (FDA) is a collection of statistical techniques for the analysis of informa...
This study proposes two methods for detecting outliers in functional time series. Both methods take ...
Research on traffic data analysis is becoming more available and important. One of the key challenge...
The increase in traffic in cities world-wide has led to a need for better traffic management systems...
The increase in traffic in cities world-wide has led to a need for better traffic management systems...
Missing value imputation approaches have been widely used to support and maintain the quality of tra...
A functional data analysis (FDA) based methodology for detecting anomalous flows in urban water netw...
In Functional Data Analysis (FDA), the underlying structure of a raw observation is functional and d...
This paper reports on the application of suitable techniques for detecting outliers and suggesting e...
There are increasing concerns about missing traffic data in recent years. In this paper, a robust mi...
[[abstract]]Missing values and outliers are frequently encountered in traffic monitoring data. We ap...
In traffic monitoring data analysis, the magnitude of traffic density plays an important role in det...
Patterns of traffic flow trajectories play an essential role in analysing traffic monitoring data in...
[[sponsorship]]統計科學研究所[[note]]出版中(submitted);[SCI],[SSCI];有審查制度;具代表性[[note]]http://gateway.isiknowle...
The growth of vehicle mobility in the past decades and increased traffic complexity leads to a need ...
Functional Data Analysis (FDA) is a collection of statistical techniques for the analysis of informa...
This study proposes two methods for detecting outliers in functional time series. Both methods take ...
Research on traffic data analysis is becoming more available and important. One of the key challenge...
The increase in traffic in cities world-wide has led to a need for better traffic management systems...
The increase in traffic in cities world-wide has led to a need for better traffic management systems...
Missing value imputation approaches have been widely used to support and maintain the quality of tra...
A functional data analysis (FDA) based methodology for detecting anomalous flows in urban water netw...
In Functional Data Analysis (FDA), the underlying structure of a raw observation is functional and d...
This paper reports on the application of suitable techniques for detecting outliers and suggesting e...
There are increasing concerns about missing traffic data in recent years. In this paper, a robust mi...