Robust multivariate and functional archetypal analysis with application to financial time series analysis

10/01/2018
by   Jesús Moliner, et al.
0

Archetypal analysis approximates data by means of mixtures of actual extreme cases (archetypoids) or archetypes, which are a convex combination of cases in the data set. Archetypes lie on the boundary of the convex hull. This makes the analysis very sensitive to outliers. A robust methodology by means of M-estimators for classical multivariate and functional data is proposed. This unsupervised methodology allows complex data to be understood even by non-experts. The performance of the new procedure is assessed in a simulation study, where a comparison with a previous methodology for the multivariate case is also carried out, and our proposal obtains favorable results. Finally, robust bivariate functional archetypoid analysis is applied to a set of companies in the S&P 500 described by two time series of stock quotes. A new graphic representation is also proposed to visualize the results. The analysis shows how the information can be easily interpreted and how even non-experts can gain a qualitative understanding of the data.

READ FULL TEXT
research
02/07/2017

Robust Clustering for Time Series Using Spectral Densities and Functional Data Analysis

In this work a robust clustering algorithm for stationary time series is...
research
01/26/2016

Functional archetype and archetypoid analysis

Archetype and archetypoid analysis can be extended to functional data. E...
research
01/16/2018

Testing Separability of Functional Time Series

We derive and study a significance test for determining if a panel of fu...
research
01/31/2017

Prototypal Analysis and Prototypal Regression

Prototypal analysis is introduced to overcome two shortcomings of archet...
research
02/28/2020

Finding archetypal patterns for binary questionnaires

Archetypal analysis is an exploratory tool that explains a set of observ...
research
09/22/2021

Quantile-based fuzzy C-means clustering of multivariate time series: Robust techniques

Three robust methods for clustering multivariate time series from the po...
research
06/01/2019

Functional time series prediction under partial observation of the future curve

Providing reliable predictions is one of the fundamental topics in funct...

Please sign up or login with your details

Forgot password? Click here to reset