Abstract:
Semi- and non-parametric mixture of normal regression models are a flexible class of mixture
of regression models. These models assume that the component mixing proportions, regression
functions and/or variances are non-parametric functions of the covariates. Among this class of
models, the semi-parametric mixture of partially linear models (SPMPLMs) combine the desirable
interpretability of a parametric model and the flexibility of a non-parametric model. However,
local-likelihood estimation of the non-parametric term poses a computational challenge. Traditional
EM optimisation of the local-likelihood functions is not appropriate due to the label-switching problem.
Separately applying the EM algorithm on each local-likelihood function will likely result in
non-smooth function estimates. This is because the local responsibilities calculated at the E-step of
each local EM are not guaranteed to be aligned. To prevent this, the EM algorithm must be modified
so that the same (global) responsibilities are used at each local M-step. In this paper, we propose
a one-step backfitting EM-type algorithm to estimate the SPMPLMs and effectively address the
label-switching problem. The proposed algorithm estimates the non-parametric term using each
set of local responsibilities in turn and then incorporates a smoothing step to obtain the smoothest
estimate. In addition, to reduce the computational burden imposed by the use of the partial-residuals
estimator of the parametric term, we propose a plug-in estimator. The performance and practical
usefulness of the proposed methods was tested using a simulated dataset and two real datasets,
respectively. Our finite sample analysis revealed that the proposed methods are effective at solving
the label-switching problem and producing reasonable and interpretable results in a reasonable
amount of time.
Description:
DATA AVAILABILITY STATEMENT: The data used in the application can be obtained from a public database:
https://ourworldindata.org/urbanization (accessed on 2 September 2022); https://ourworldindata.
org/energy (accessed on 2 September 2022); https://ourworldindata.org/co2-emissions (accessed on
2 September 2022); https://ourworldindata.org/renewable-energy (accessed on 2 September 2022);
https://ourworldindata.org/grapher/real-gdp-per-capita-pennwt (accessed on 2 September 2022).