Improved prediction of household expenditure by living standard measures via a unique neural network: the case of Iran

Improved prediction of household expenditure by living standard measures via a unique neural network: the case of Iran

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Article ID: iaor2016516
Volume: 17
Issue: 2
Start Page Number: 142
End Page Number: 182
Publication Date: Jan 2016
Journal: International Journal of Productivity and Quality Management
Authors: , , ,
Keywords: economics, neural networks, statistics: regression, heuristics: genetic algorithms, networks
Abstract:

There is a growing interest in predicting of household expenditure and poverty measures by combining detailed information from a household budget survey. But very few researchers have gathered information on household incomes or consumption expenditures in developing countries. The objective of this work is to analyse the relationship between household expenditure, income and living standard measures (LSM). To achieve this, models of household expenditure were developed using the data available in the Statistical Center of Iran. A unique neural network is developed to forecast and estimate household expenditures. Four different model including linear regression, quadratic regression, cubic regression and genetic algorithm are developed in order to forecast LSM. The superiority of the proposed ANN in comparison with the stated approaches is shown numerically. This is the first study that utilises an intelligent network model to improve the prediction of household expenditure.

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