This project aims to gain new insights into these causes of inequality and poverty and develop effective policy solutions.
Principal Investigators:Dr Mauro Bambi, Economics, mauro.bambi@durham.ac.ukDr Alpár Mészáros, Mathematical Sciences, alpar.r.meszaros@durham.ac.uk
Visiting IAS Fellows: Professor Raouf Boucekkine, Aix-Marseille UniversityProfessor Diogo Aguiar Gomes, King Abdullah University of Science and Technology
Income inequality and poverty have become increasingly pressing issues in developed countries in recent decades. Despite various policy efforts, these problems persist, and their underlying causes remain poorly understood. To gain new insights into the causes of inequality and poverty, and to develop effective policy solutions, the project will use Mean Field Games theory, a cutting-edge mathematical model in macroeconomics.
Income inequality and poverty have become increasingly pressing issues in developed countries over the past few decades. Despite various policy efforts, these problems persist, and their underlying causes remain poorly understood. This project aims to gain new insights into these causes of inequality and poverty and develop effective policy solutions. To achieve this, the project proposes the use of Mean Field Games theory, a cutting-edge mathematical model in macroeconomics. By fostering interdisciplinary and exploratory discussions among scholars from all four Faculties of Durham University, as well as distinguished fellows, the project seeks to identify the fundamental driving forces of social inequality and poverty. With these insights, the project aims to develop innovative models and approaches that can help shape a more equitable and just global community. The ultimate goal is to establish Durham as a world-class research hub on inequality and poverty. The project’s evidence-base research will inform policymakers and the wider community and contribute to creating a more inclusive and equal society. Overall, this project aims to provide a lasting legacy that will help to tackle one of the most pressing challenges facing our world today.
In developed countries, several empirical studies have documented significant changes in the distribution of household incomes over the past five decades. These studies show that societies have become increasingly unequal, with a significant shrinkage of the middle class and a rise in both the upper and lower classes. Over time, the distribution of household incomes has become flatter with fatter tails (see for example FT article). This fact is also confirmed by a dramatic increase in the Gini coefficient, which is an index capturing the degree of inequality in a society (a Gini coefficient of 0 indicates perfect income equality, while a Gini coefficient of 1 reflects maximal inequality).
The question of what mechanisms are driving developed societies towards greater income inequality and increasing poverty has been central to economics and numerous other disciplines. However, only recent advances in mathematics (e.g., mean field games1, Huang et al. 2006, Lasry and Lions 2007) could make the rigorous economic analysis of these facts viable.
It is now possible to study macroeconomic models that include both aggregate shocks to the economy, such as a recession, as well as individual-specific (idiosyncratic) shocks, for example, the varying likelihood across individuals to become unemployed.
Consequently, these models perform much better in reproducing the actual evolution of the households’ income distribution (see Achdou et al. 2022) than previous generations of models (see Caselli and Ventura 2000, among others). So far, this new approach has been applied to study models which are relatively simplistic on several dimensions. The PIs aim to enhance these models to explain facts which are relevant not only for economists but also for other disciplines like sociology, psychology, etc. Several key questions will be addressed:
Notes:
1) Mean Field Games theory is a mathematical framework that allows for the modelling of large populations of interacting agents who seek to optimise their behaviour in response to the behaviour of others.
___________