Socioeconomic and Proximate Determinants of High Fertility in Timor-Leste
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Asian Institute of Research, Journal Publication, Journal Academics, Education Journal, Asian Institute
Asian Institute of Research, Journal Publication, Journal Academics, Education Journal, Asian Institute

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asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, managemet journal
asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, managemet journal
asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, managemet journal
asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, managemet journal
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Published: 18 December 2023

Socioeconomic and Proximate Determinants of High Fertility in Timor-Leste

Wilson Rajagukguk

Universitas Kristen Indonesia

asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, management journal

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doi

10.31014/aior.1992.06.04.549

Pages: 230-243

Keywords: Socioeconomic Determinants, Proximate Determinants, High Fertility, Timor-Leste

Abstract

The purpose of this study was to examine the role of socioeconomic and proximate determinants in high fertility in Timor-Leste. The data used came from the 2016 Timor-Leste Demographic and Health Survey. The unit of analysis was women in union aged 35–49 years. The explanatory variables were socioeconomic and proximate background characteristics. The response variable was the number of children ever born. A Poisson regression analysis was employed to investigate the association between socioeconomic and proximate determinants and fertility. Government should improve maternal and child health care to reduce infant mortality and promote smaller ideal family size and marriage postponement, reduce unmet need for contraception, increase access to a mobile phone, enhance education access and employment opportunity for women, and socialize family planning and enhancing reproductive health and family planning program and fostering female labor force participation to encourage women and men to prioritize education and career over childbearing.

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