Abstract

Women in Colombia face difficulties related to the patriarchal traits of their societies and well-known conflict afflicting the country since 1948. In this critical context, our aim is to study the relationship between baseline socio-demographic factors and variables associated to fertility, partnership patterns, and work activity. To best exploit the explanatory structure, we propose a Bayesian multivariate density regression model, which can accommodate mixed responses with censored, constrained, and binary traits. The flexible nature of the models allows for nonlinear regression functions and non-standard features in the errors, such as asymmetry or multi-modality. The model has interpretable covariate-dependent weights constructed through normalization, allowing for combinations of categorical and continuous covariates. Computational difficulties for inference are overcome through an adaptive truncation algorithm combining adaptive Metropolis-Hastings and sequential Monte Carlo to create a sequence of automatically truncated posterior mixtures. For our study on Colombian women’s life patterns, a variety of quantities are visualised and described, and in particular, our findings highlight the detrimental impact of family violence on women’s choices and behaviors.

Highlights

  • Colombian women face difficulties that are quite typical in Latin American countries, related to the patriarchal traits of their society

  • We focus on the latter work of MacEachern (1999), which extends the Bayesian nonparametric mixture model by allowing the mixing measure to depend on the covariates

  • It consists of two main steps, namely an Markov chain Monte Carlo (MCMC) step for a fixed truncation level, J0, followed by a sequential Monte Carlo (SMC) step used to increase the number of components of the mixture

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Summary

Introduction

Colombian women face difficulties that are quite typical in Latin American countries, related to the patriarchal traits of their society. Different studies discuss the detrimental effects of teenage pregnancy (see e.g., Gimenez Duarte et al, 2015; Azevedo et al, 2012) and its socio-demographic drivers, such as poverty, low levels of education, and living in rural areas In such a critical context, we are interested in studying women’s life events, focusing on the interplay between sexual initiation (debut), fertility, partnership, and participation in the labor market. We propose a Bayesian multivariate density regression model that extends the univariate model of Antoniano-Villalobos et al (2014) to the case of multiple mixed-type responses with censoring and constraints This approach is promising for our data, due to its ability to capture their peculiar features. The Supplementary Material (SM) (Wade et al, 2021) includes derivations and details for predictive inference, as well as additional results for both the simulated data example and the case study

The data
Bayesian nonparametric density regression
Adaptive truncation algorithm
Application: life patterns of Colombian women
Posterior predictive checks
Results
Concluding remarks
Full Text
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