There has been extensive work on data depth-based methods for robust multivariate data analysis. Recent developments have moved to infinite-dimensional objects such as functional data. In this work, we propose a new notion of depth, the total variation depth, for functional data. As a measure of depth, its properties are studied theoretically, and the associated outlier detection performance is investigated through simulations. Compared to magnitude outliers, shape outliers are often masked among the rest of samples and harder to identify. We show that the proposed total variation depth has many desirable features and is well suited for outlier detection. In particular, we propose to decompose the total variation depth into two components t...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Recent advances of powerful computing and data acquisition technologies have made large complex data...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
There has been extensive work on data depth-based methods for robust multivariate data analysis. Rec...
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...
The statistical analysis of functional data is a growing need in many research areas. We propose a n...
Data Science is the new and exciting interdisciplinary response that has emerged as a consequence of...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
We propose a new method to visualize and detect shape outliers in samples of curves. In functional d...
The direction of outlyingness is crucial to describing the centrality of multivariate functional dat...
Statistical depth functions provide from the “deepest ” point a “center-outward ordering ” of multi-...
<p>This article proposes a new graphical tool, the magnitude-shape (MS) plot, for visualizing both t...
In the last years the concept of data depth has been increasingly used in Statistics as a center-out...
International audienceThe increasing ubiquity of multivariate functional data (MFD) requires methods...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Recent advances of powerful computing and data acquisition technologies have made large complex data...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
There has been extensive work on data depth-based methods for robust multivariate data analysis. Rec...
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...
The statistical analysis of functional data is a growing need in many research areas. We propose a n...
Data Science is the new and exciting interdisciplinary response that has emerged as a consequence of...
This paper proposes methods to detect outliers in functional datasets. We are interested in challeng...
We propose a new method to visualize and detect shape outliers in samples of curves. In functional d...
The direction of outlyingness is crucial to describing the centrality of multivariate functional dat...
Statistical depth functions provide from the “deepest ” point a “center-outward ordering ” of multi-...
<p>This article proposes a new graphical tool, the magnitude-shape (MS) plot, for visualizing both t...
In the last years the concept of data depth has been increasingly used in Statistics as a center-out...
International audienceThe increasing ubiquity of multivariate functional data (MFD) requires methods...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...
Recent advances of powerful computing and data acquisition technologies have made large complex data...
Classification is an important task when data are curves. Recently, the notion of statistical depth ...