2.2 Functional estimation in high dimensional data : Application to classification (Sophie Dabo-Niang)
Description
Functional data are becoming increasingly common in a variety of fields. Many studies underline the importance to consider the representation of data as functions. This has sparked a growing attention in the development of adapted statistical tools that allow to analyze such kind of data : functional data analysis (FDA). The aims of FDA are mainly the same as in the classical statistical analysis, e.g. representing and visualizing the data, studying variability and trends, comparing different data sets, as well as modeling and predicting,... Recent advances in FDA allow to construct different classification methods, based on the comparison between centrality curves or using change points,... We review some procedures that have been used to classify functional data. The main point is to show the good practical behaviors of these procedures on a sample of curves. In addition, theoretical advances on functional estimations related to these classification methods are provided.
The idea of selecting a model via penalizing a log-likelihood type criterion goes back to the early seventies with the pioneering works of Mallows and Akaike. One can find many consistency results in the literature for such criteria. These results are asymptotic in the sense that one deals with a...
Published 12/03/14
In this communication, we focus on data arriving sequentially by block in a stream. A semiparametric regression model involving a common EDR (Effective Dimension Reduction) direction B is assumed in each block. Our goal is to estimate this direction at each arrival of a new block. A simple direct...
Published 12/03/14