Constrained maximum likelihood estimation of clusterwise linear regression models with unknown number of components

04/14/2018
by   R. Di Mari, et al.
0

We consider an equivariant approach imposing data-driven bounds for the variances to avoid singular and spurious solutions in maximum likelihood (ML) estimation of clusterwise linear regression models. We investigate its use in the choice of the number of components and we propose a computational shortcut, which significantly reduces the computational time needed to tune the bounds on the data. In the simulation study and the two real-data applications, we show that the proposed methods guarantee a reliable assessment of the number of components compared to standard unconstrained methods, together with accurate model parameters estimation and cluster recovery.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/26/2020

Empirical Likelihood Estimation for Linear Regression Models with AR(p) Error Terms

Linear regression models are useful statistical tools to analyze data se...
research
12/25/2013

Modèle à processus latent et algorithme EM pour la régression non linéaire

A non linear regression approach which consists of a specific regression...
research
04/28/2018

Novel Prediction Techniques Based on Clusterwise Linear Regression

In this paper we explore different regression models based on Clusterwis...
research
04/11/2023

A Data-Driven State Aggregation Approach for Dynamic Discrete Choice Models

We study dynamic discrete choice models, where a commonly studied proble...
research
12/26/2018

BlinkML: Efficient Maximum Likelihood Estimation with Probabilistic Guarantees

The rising volume of datasets has made training machine learning (ML) mo...
research
02/08/2019

Accounting for Significance and Multicollinearity in Building Linear Regression Models

We derive explicit Mixed Integer Optimization (MIO) constraints, as oppo...
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...

Please sign up or login with your details

Forgot password? Click here to reset