Volume 25 , Issue 1 , PP: 358-369, 2025 | Cite this article as | XML | Html | PDF | Full Length Article
Luis A. Chicaiza Sánchez 1 , Patricia M. Andrade Aulestia 2 , César R. Delgado Acurio 3 , Rafael A. Garzón Jarrín 4 , Xavier C. Quishpe Mendoza 5
Doi: https://doi.org/10.54216/IJNS.250132
The article examines the neutrosophic approach as an innovative tool to optimize production in small guinea pig farming systems. Through the exploration of bipolar sets and interval values, the application of this methodology in improving breeding processes is investigated, thus identifying areas of improvement and opportunities for economic and sustainable growth in the sector. The research highlights the importance of considering the uncertainty and imprecision inherent in these systems, proposing a flexible and adaptive framework that allows informed and strategic decision making to increase productivity and profitability. Likewise, the study highlights the need for a holistic and multidisciplinary understanding of the challenges and opportunities in guinea pig farming, recognizing the complexity of the social, economic, and environmental factors involved. Through an interdisciplinary approach, we seek to integrate traditional knowledge and practices with innovative approaches, thus promoting sustainability and the well-being of both producers and animals. Ultimately, this article offers a comprehensive and dynamic perspective on how the neutrosophic approach can significantly contribute to the development and optimization of guinea pig farming systems, thereby driving progress and prosperity in the agricultural sector.
Neutrosophic , Guinea Pig Breeding , Decision Making , Neutrosophic Tree Soft Set
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