The Gender Wealth Gap in Europe: Application of Machine Learning to Predict Individual-level Wealth |
| |
Authors: | Merike Kukk Jaanika Meriküll Tairi Rõõm |
| |
Institution: | 1. Bank of Estonia;2. Bank of Estonia
University of Tartu;3. Bank of Estonia
Tallinn University of Technology |
| |
Abstract: | This article provides comparative estimates of the gender wealth gaps for 22 European countries, employing data from the Household Finance and Consumption Survey. The data on wealth are collected at the household level, while individual-level data are needed for the estimates of gender wealth gaps. We propose a novel approach using machine learning and model averaging methods to predict individual-level wealth data for multi-person households. Our results suggest that random forest performs best as the predicting tool for this exercise, outperforming elastic net and Bayesian model averaging. The estimated gender wealth gaps tend to be in favor of men, especially at the top of the wealth distribution. Men have 24 percent more wealth than women on average. We also find that a high home ownership rate is associated with a smaller country-level gender wealth gap. Our estimates suggest that the individual-level wealth inequality is on average 3 pp higher than the household-level wealth inequality in multi-member households. |
| |
Keywords: | gender gap inequality machine learning random forest wealth distribution |
|