Abstract
The main idea of this study is to investigate Türkiye’s meat consumption, projection and supplies by using the structure of the Turkish meat industry and Turkish economic indicators. This present study develops several models for the analysis of meat consumption and makes future estimations based on the Regression Analysis Meat Consumption Model (RAMCM). Four forms of Regression Analysis models are used to estimate meat consumption. These models are named Multiple Linear Regression Analysis (MULIRA), Linear Regression Analysis (LIRA), Polynomial Linear Regression Analysis (POLIRA), and Logarithmic Linear Regression Analysis. The models developed in the linear and non-linear forms are applied to estimate meat consumption in Türkiye based on social and economic indicators; Population, Gross National Product (GNP) per capita, Imports of goods and services (% of GDP), Exports of goods and services (% of GDP), electricity consumption per capita, unemployment, Gross capital formation (% of GDP) figures. It may be concluded that the Multiple Linear Regression Analysis models can be used as alternative solutions and estimation techniques for any country's future meat consumption values.
Publisher
Scientific Web Journals (SWJ)
Reference36 articles.
1. Regression and multilayer perceptron-based models to fore-cast hourly O-3 and NO2 levels in the Bilbao area;Agirre-Basurko;Environmental Modelling & Software,2006
2. Consumption versus expenditure;Aguiar;Journal of political Economy 113 (5),2005
3. Aiken, L.S., West, S.G., Pitts, S.C. (2003). Multiple linear regression. In Schinka, J. A., Velicer, N. F. (Eds.), Research Methods in Psychology. New Jersey: John Wiley & Sons.
4. Economic crisis and the unemployment effect on household food expenditure: The case of Spain;Antelo;Food Policy,2017
5. Was the economic crisis of 2008 good for Icelanders? Impact on health behaviours;Ásgeirsdóttir;Economics & Human Biology,2014