The direction of outlyingness is crucial to describing the centrality of multivariate functional data. Motivated by this idea, we generalize classical depth to directional outlyingness for functional data. We investigate theoretical properties of functional directional outlyingness and find that it naturally decomposes functional outlyingness into two parts: magnitude outlyingness and shape outlyingness which represent the centrality of a curve for magnitude and shape, respectively. Using this decomposition, we provide a visualization tool for the centrality of curves. Furthermore, we design an outlier detection procedure based on functional directional outlyingness. This criterion applies to both univariate and multivariate curves and simu...
We present definitions and properties of the fast massive unsupervised outlier detection (FastMUOD) ...
Surface, image and video data can be considered as functional data with a bivariate domain. To detec...
A new definition of depth for functional observations is introduced based on the notion of “half-reg...
<p>This article proposes a new graphical tool, the magnitude-shape (MS) plot, for visualizing both t...
Functional data analysis covers a wide range of data types. They all have in common that the observe...
© 2018, © The Author(s). Published with license by Taylor & Francis. © 2018, © 2018 Peter J. Rouss...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
There has been extensive work on data depth-based methods for robust multivariate data analysis. Rec...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
Surface, image and video data can be considered as functional data with a bivariate domain. It is we...
Most outlier detection rules for multivariate data are based on the assumption of elliptical symmetr...
International audienceThe increasing ubiquity of multivariate functional data (MFD) requires methods...
We propose a new method to visualize and detect shape outliers in samples of curves. In functional d...
The statistical analysis of functional data is a growing need in many research areas. We propose a n...
We present definitions and properties of the fast massive unsupervised outlier detection (FastMUOD) ...
Surface, image and video data can be considered as functional data with a bivariate domain. To detec...
A new definition of depth for functional observations is introduced based on the notion of “half-reg...
<p>This article proposes a new graphical tool, the magnitude-shape (MS) plot, for visualizing both t...
Functional data analysis covers a wide range of data types. They all have in common that the observe...
© 2018, © The Author(s). Published with license by Taylor & Francis. © 2018, © 2018 Peter J. Rouss...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
There has been extensive work on data depth-based methods for robust multivariate data analysis. Rec...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
Surface, image and video data can be considered as functional data with a bivariate domain. It is we...
Most outlier detection rules for multivariate data are based on the assumption of elliptical symmetr...
International audienceThe increasing ubiquity of multivariate functional data (MFD) requires methods...
We propose a new method to visualize and detect shape outliers in samples of curves. In functional d...
The statistical analysis of functional data is a growing need in many research areas. We propose a n...
We present definitions and properties of the fast massive unsupervised outlier detection (FastMUOD) ...
Surface, image and video data can be considered as functional data with a bivariate domain. To detec...
A new definition of depth for functional observations is introduced based on the notion of “half-reg...