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Application of a multigranular approach based on the 2-tuple fuzzy linguistic model for the evaluation of forestry policy indicators
Introduction: The need for quality indicators is well recognized by users and proponents of public policy evaluation. Indicators recurrently include qualitative attributes for which there are few studies assessing the level of compliance. Objective: To apply a multigranu...
Autores principales: | , , , |
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Formato: | Online Artículo |
Lenguaje: | spa |
Publicado: |
Universidad Autónoma Chapingo
2021
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Materias: | |
Acceso en línea: | https://revistas.chapingo.mx/forestales/article/view/r.rchscfa.2020.06.043 https://dx.doi.org/10.5154/r.rchscfa.2020.06.043 |
Sumario: | Introduction: The need for quality indicators is well recognized by users and proponents of public policy evaluation. Indicators recurrently include qualitative attributes for which there are few studies assessing the level of compliance. Objective: To apply a multigranular approach, based on the 2-tuple fuzzy linguistic model, to evaluate 13 indicators of the National Forestry Program, established in the system of social policy indicators derived from the National Development Plan 2012-2018 of Mexico. Materials and methods: The method uses the 2-tuple fuzzy linguistic representation model and an extension called extended linguistic hierarchies,designed to solve problems with multigranular linguistic information. The indicators'level of compliance was evaluated based on four criteria: clarity, relevance, monitoring, and adequacy. Results and discussion: The structure defined in evaluating social policy indicators corresponds appropriately to that used with the 2-tuple fuzzy linguistic model. The evaluation resulted in a sorted list in which the indicator “Rate of change of timber forest production” had the best rating with a “very high” level of compliance; 10 other indicators had the “high” level of compliance, and the remaining two indicators were rated with “moderate” compliance. Conclusions: The 2-tuple fuzzy linguistic model allowed the appropriate evaluation of the level of compliance with the desirable attributes of indicators.
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