%0 Journal Article %@ 2076-3417 %A García Villena, Eduardo %A Pascual Barrera, Alina Eugenia %A Álvarez, Roberto Marcelo %A Dzul López, Luis Alonso %A Tutusaus, Kilian %A Vidal Mazón, Juan Luis %A Miró Vera, Yini Airet %A Brie, Santiago %A López Flores, Miguel A. %D 2022 %F uneatlantico:4474 %J Applied Sciences %K SMOTE; artificial intelligence; projects; fuzzy logic %N 21 %P 11188 %T Evaluation of the Sustainable Development Goals in the Diagnosis and Prediction of the Sustainability of Projects Aimed at Local Communities in Latin America and the Caribbean %U http://repositorio.uneatlantico.es/id/eprint/4474/ %V 12 %X The purpose of this article is to help to bridge the gap between sustainability and its application to project management by developing a methodology based on artificial intelligence to diagnose, classify, and forecast the level of sustainability of a sample of 186 projects aimed at local communities in Latin American and Caribbean countries. First, the compliance evaluation with the Sustainable Development Goals (SDGs) within the framework of the 2030 Agenda served to diagnose and determine, through fuzzy sets, a global sustainability index for the sample, resulting in a value of 0.638, in accordance with the overall average for the region. Probabilistic predictions were then made on the sustainability of the projects using a series of supervised learning classifiers (SVM, Random Forest, AdaBoost, KNN, etc.), with the SMOTE resampling technique, which provided a significant improvement toward the results of the different metrics of the base models. In this context, the Support Vector Machine (SVM) + SMOTE was the best classification algorithm, with accuracy of 0.92. Lastly, the extrapolation of this methodology is to be expected toward other realities and local circumstances, contributing to the fulfillment of the SDGs and the development of individual and collective capacities through the management and direction of projects.