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2023
DOI: 10.3389/fsufs.2022.992054
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Modeling adoption of genetically modified foods: Application of Rough Set Theory and Flow Network Graph

Abstract: IntroductionThe main purpose of this study is to extract the rules and patterns governing the behavioral intention of consumers towards the adoption of genetically modified foods (GMFs).MethodThe proposed method is a combination of Rough Set Theory (RST) and Flow Network Graph (FNG). Data was collected from 386 consumers to extract rough rules. 13 rules have been chosen from 289 original rules that were divided into three groups: low, medium, and high intention to use GMFs. They were chosen because of the supp… Show more

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