Regression Models for Directional Data Based on Nonnegative Trigonometric Sums

01/25/2023
by   J. J. Fernández-Durán, et al.
0

The parameter space of nonnegative trigonometric sums (NNTS) models for circular data is the surface of a hypersphere; thus, constructing regression models for a circular-dependent variable using NNTS models can comprise fitting great (small) circles on the parameter hypersphere that can identify different regions (rotations) along the great (small) circle. We propose regression models for circular- (angular-) dependent random variables in which the original circular random variable, which is assumed to be distributed (marginally) as an NNTS model, is transformed into a linear random variable such that common methods for linear regression can be applied. The usefulness of NNTS models with skewness and multimodality is shown in examples with simulated and real data.

READ FULL TEXT
research
03/24/2021

Flexible Predictive Distributions from Varying-Thresholds Modelling

A general class of models is proposed that is able to estimate the whole...
research
09/25/2020

Regressor: A C program for Combinatorial Regressions

In statistics, researchers use Regression models for data analysis and p...
research
03/22/2021

Modeling Random Directions in 2D Simplex Data

We propose models and algorithms for learning about random directions in...
research
04/26/2022

Multivariate and regression models for directional data based on projected Pólya trees

Projected distributions have proved to be useful in the study of circula...
research
05/16/2022

CurFi: An automated tool to find the best regression analysis model using curve fitting

Regression analysis is a well known quantitative research method that pr...
research
04/23/2018

On the circular correlation coefficients for bivariate von Mises distributions on a torus

This paper studies circular correlations for the bivariate von Mises sin...

Please sign up or login with your details

Forgot password? Click here to reset