| Literature DB >> 20713387 |
Xavier Cirera1, Edoardo Masset.
Abstract
This paper surveys the theoretical literature on the relationship between income distribution and food demand, and identifies main gaps of current food modelling techniques that affect the accuracy of food demand projections. At the heart of the relationship between income distribution and food demand is Engel's law. Engel's law establishes that as income increases, households' demand for food increases less than proportionally. A consequence of this law is that the particular shape of the distribution of income across individuals and countries affects the rate of growth of food demand. Our review of the literature suggests that existing models of food demand fail to incorporate the required Engel flexibility when (i) aggregating different food budget shares among households; and (ii) changing budget shares as income grows. We perform simple simulations to predict growth in food demand under alternative income distribution scenarios taking into account nonlinearity of food demand. Results suggest that (i) distributional effects are to be expected from changes in between-countries inequality, rather than within-country inequality; and (ii) simulations of an optimistic and a pessimistic scenario of income inequality suggest that world food demand in 2050 would be 2.7 per cent higher and 5.4 per cent lower than distributional-neutral growth, respectively.Entities:
Mesh:
Year: 2010 PMID: 20713387 PMCID: PMC2935126 DOI: 10.1098/rstb.2010.0164
Source DB: PubMed Journal: Philos Trans R Soc Lond B Biol Sci ISSN: 0962-8436 Impact factor: 6.237
Food expenditure shares in rural India (2004–2005). Source: calculated from NSSO–National Sample Survey Office (2006)–India data.
| food category | share |
|---|---|
| cereals | 38.2 |
| pulses | 6.4 |
| dairy products | 9.9 |
| oils and fats | 9.1 |
| meat, egg and fish | 7.7 |
| vegetable and fruit | 14.8 |
| other | 13.9 |
Figure 1.Average food demand in a two-individual economy.
Figure 2.Effect of an income transfer on food demand in a two-individual economy.
Figure 3.An illustration of Bennet's law.
Figure 4.Changes in income distribution and food demand.
Main food demand models. Source: authors' own elaboration from literature.
| model | description |
|---|---|
| FAO ( | multi-country partial equilibrium model with 52 separate commodities in each country. Simulations are based on assumptions of mean growth of |
| The World Bank ( | non-spatial, partial-equilibrium trade model used to forecast commodity projections. It is also based on constant income demand elasticities. |
| The International Model for Policy Analysis of Agricultural Commodities and Trade (IMPACT); International Food Policy Research Institute. | multi-country/region model where markets are linked through trade. It uses estimated income demand elasticities and covers 36 countries and regions, and 16 commodities, including all cereals, soya beans, roots and tubers, meats, milk, eggs, oils, oilcakes, and meals. Demand is a function of prices, income, and population growth. The IMPACT income demand parameters are based on average aggregate income elasticities for each country, given the income level and distribution of population between urban and rural areas as they evolve over the projection. |
| Food and Agricultural Policy Research Institute. | multi-market, partial-equilibrium model of world agriculture, food and biofuel markets. It is based on estimated constant elasticities from the FAPRI elasticity database, and the simulations are based on exogenous changes on growth, population and exchange rates. |
| The Static World Policy Simulation; US Department for Agriculture. | comparative statics, multi-product, multi-region partial equilibrium with 20 agricultural commodities. Income demand elasticities are based on estimated elasticities from a large number of sources at the SWOPSIM database. |
| comparative–static model with several country or regional sub-models aimed at analysing policy changes in the medium term. In this model, also exogenous constant elasticities are imposed. | |
| The Global Income Distribution Dynamics (GIDD) model; ( | model that links simulations from a CGE model to household surveys in order to generate changes and predictions on income distribution. While it has the advantage of considering income dynamics, the demand side of the CGE model is based on a single representative household in each country that maximizes an extended linear expenditure system (ELES). The system captures various substitution possibilities across commodities and shifts in demand towards commodities with higher income elasticities over time. However, changes on income distribution do not feed back to shaping aggregate demand elasticities and the potential bias from aggregation, in addition to linear Engel curves, still remain. |
| The Environmental Impact and Sustainability Applied General Equilibrium Model ( | dynamic general equilibrium model calibrated using the GTAP database with 2004 as base year with a carbon emission database. The model can run with the 113 countries/regions and 57 commodity groups of the GTAP database. There is a single representative household that consumes goods and services and saves, and the model is designed with several different consumer demand specifications including the CDE (see |
Figure 5.Engel curves in Andhra Pradesh. Source: calculated from NSSO (2006) data of 2005.
Figure 6.Food consumption and income inequality in Andhra Pradesh. Source: calculated from NSSO (2006) data of 2005.
Figure 7.Projected food consumption in Andhra Pradesh over the next 40 years. Source: calculated from NSSO (2006) data of 2005.
Figure 8.Engel curves for six different categories in share form. Source: calculated from NSSO (2006) data.
Figure 9.World food Engel curves. Source: calculated from the International Comparison Programme data.
Figure 10.Food consumption and income inequality in the world. Source: calculated from the International Comparison Programme data.
Figure 11.Projected world per capita food consumption over the next 40 years. Source: calculated from the International Comparison Programme data.