Skip to content

Religious Affiliation in the Twenty-First Century: A Machine Learning Perspective on the World Value Survey

Notifications You must be signed in to change notification settings

ElahehJafarigol/World-Value-Survey-Analysis

Repository files navigation

Religious Affiliation in the Twenty-First Century: A Machine Learning Perspective on the World Value Survey

This repository is the source code for the paper implemented in Python. The link to access the paper: https://link.springer.com/article/10.1007/s12115-023-00887-0

Abstract

This paper is a quantitative analysis of the data collected globally by the World Value Survey. The data is used to study the trajectories of change in individuals’ religious beliefs, values, and behaviors in societies. Utilizing random forest, we aim to identify the key factors of religiosity and classify respondents of the survey as religious and non-religious using country-level data. We use resampling techniques to balance the data and improve imbalanced learning performance metrics. The results of the variable importance analysis suggest that Age and Income are the most important variables in the majority of countries. The results are discussed with fundamental sociological theories regarding religion and human behavior. This study is an application of machine learning in identifying the underlying patterns in the data of 30 countries participating in the World Value Survey. The results from variable importance analysis and classification of imbalanced data provide valuable insights beneficial to theoreticians and researchers of social sciences.

image

About

Religious Affiliation in the Twenty-First Century: A Machine Learning Perspective on the World Value Survey

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages