assessment of the barriers to the consumers' uptake of genetically modified foods: a neural network analysis

BACKGROUND: This paper studies which of the attitudinal, cognitive and socio‐economic factors determine the willingness to purchase genetically modified (GM) food, enabling the forecasting of consumers' behaviour in Andalusia, southern Spain. This classification has been made by a standard mult...

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Veröffentlicht in:Journal of the science of food and agriculture 2016-03, Vol.96 (5), p.1548-1555
Hauptverfasser: Rodríguez‐Entrena, Macario, Salazar‐Ordóñez, Melania, Becerra‐Alonso, David
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container_end_page 1555
container_issue 5
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container_title Journal of the science of food and agriculture
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creator Rodríguez‐Entrena, Macario
Salazar‐Ordóñez, Melania
Becerra‐Alonso, David
description BACKGROUND: This paper studies which of the attitudinal, cognitive and socio‐economic factors determine the willingness to purchase genetically modified (GM) food, enabling the forecasting of consumers' behaviour in Andalusia, southern Spain. This classification has been made by a standard multilayer perceptron neural network trained with extreme learning machine. Later, an ordered logistic regression was applied to determine whether the neural network can outperform this traditional econometric approach. RESULTS: The results show that the highest relative contributions lie in the variables related to perceived risks of GM food, while the perceived benefits have a lower influence. In addition, an innovative attitude towards food presents a strong link, as does the perception of food safety. The variables with the least relative contribution are subjective knowledge about GM food and the consumers' age. The neural network approach outperforms the correct classification percentage from the ordered logistic regression. CONCLUSION: The perceived risks must be considered as a critical factor. A strategy to improve the GM food acceptance is to develop a transparent and balanced information framework that makes the potential risk understandable by society, and make them aware of the risk assessments for GM food in the EU. For its success, it is essential to improve the trust in EU institutions and scientific regulatory authorities. © 2015 Society of Chemical Industry
doi_str_mv 10.1002/jsfa.7247
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This classification has been made by a standard multilayer perceptron neural network trained with extreme learning machine. Later, an ordered logistic regression was applied to determine whether the neural network can outperform this traditional econometric approach. RESULTS: The results show that the highest relative contributions lie in the variables related to perceived risks of GM food, while the perceived benefits have a lower influence. In addition, an innovative attitude towards food presents a strong link, as does the perception of food safety. The variables with the least relative contribution are subjective knowledge about GM food and the consumers' age. The neural network approach outperforms the correct classification percentage from the ordered logistic regression. CONCLUSION: The perceived risks must be considered as a critical factor. A strategy to improve the GM food acceptance is to develop a transparent and balanced information framework that makes the potential risk understandable by society, and make them aware of the risk assessments for GM food in the EU. 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Sci. Food Agric</addtitle><description>BACKGROUND: This paper studies which of the attitudinal, cognitive and socio‐economic factors determine the willingness to purchase genetically modified (GM) food, enabling the forecasting of consumers' behaviour in Andalusia, southern Spain. This classification has been made by a standard multilayer perceptron neural network trained with extreme learning machine. Later, an ordered logistic regression was applied to determine whether the neural network can outperform this traditional econometric approach. RESULTS: The results show that the highest relative contributions lie in the variables related to perceived risks of GM food, while the perceived benefits have a lower influence. In addition, an innovative attitude towards food presents a strong link, as does the perception of food safety. The variables with the least relative contribution are subjective knowledge about GM food and the consumers' age. 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Sci. Food Agric</addtitle><date>2016-03-30</date><risdate>2016</risdate><volume>96</volume><issue>5</issue><spage>1548</spage><epage>1555</epage><pages>1548-1555</pages><issn>0022-5142</issn><eissn>1097-0010</eissn><coden>JSFAAE</coden><abstract>BACKGROUND: This paper studies which of the attitudinal, cognitive and socio‐economic factors determine the willingness to purchase genetically modified (GM) food, enabling the forecasting of consumers' behaviour in Andalusia, southern Spain. This classification has been made by a standard multilayer perceptron neural network trained with extreme learning machine. Later, an ordered logistic regression was applied to determine whether the neural network can outperform this traditional econometric approach. RESULTS: The results show that the highest relative contributions lie in the variables related to perceived risks of GM food, while the perceived benefits have a lower influence. In addition, an innovative attitude towards food presents a strong link, as does the perception of food safety. The variables with the least relative contribution are subjective knowledge about GM food and the consumers' age. The neural network approach outperforms the correct classification percentage from the ordered logistic regression. CONCLUSION: The perceived risks must be considered as a critical factor. A strategy to improve the GM food acceptance is to develop a transparent and balanced information framework that makes the potential risk understandable by society, and make them aware of the risk assessments for GM food in the EU. For its success, it is essential to improve the trust in EU institutions and scientific regulatory authorities. © 2015 Society of Chemical Industry</abstract><cop>Chichester, UK</cop><pub>John Wiley &amp; Sons, Ltd</pub><pmid>25959585</pmid><doi>10.1002/jsfa.7247</doi><tpages>8</tpages></addata></record>
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subjects Adolescent
Adult
Aged
algorithms
Classification
cognition
Consumer Behavior
consumer behaviour
Consumers
econometrics
European Union
Female
food acceptability
Food Safety
Food, Genetically Modified
Foods
Genetic modification
Genetically altered foods
genetically modified food
genetically modified foods
Health Knowledge, Attitudes, Practice
Humans
Logistics
Male
Middle Aged
neural network
Neural networks
Neural Networks (Computer)
ordered logistic regression
Perception
purchasing
Regression
regression analysis
Risk Assessment
Risk perception
society
Socioeconomic Factors
Spain
willingness to pay
title assessment of the barriers to the consumers' uptake of genetically modified foods: a neural network analysis
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