Quantum Machine Learning Techniques based on Nurturing Agri-Ontology Framework in Agricultural Science

Deepa, R and Jayalakshmi, V and Thilakavathy, P and Bennet Prabhu, A and Surendran, R (2024) Quantum Machine Learning Techniques based on Nurturing Agri-Ontology Framework in Agricultural Science. In: 2024 3rd International Conference on Applied Artificial Intelligence and Computing (ICAAIC), Salem, India.

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Abstract

The absence of a consistent ontological framework often impedes efficient knowledge organization and sharing within the agricultural community, despite the quantity of data created in agricultural research. The lack of defined vocabulary and conceptual frameworks hinders data integration, agricultural research, and innovation by preventing interoperability between databases and systems. To address these issues, this research work proposes the Nurturing Agri-Ontology Framework (NAOF), which offers a systematic approach to creating and updating agricultural ontologies. Ontologies that faithfully portray agricultural ideas and connections can be more easily created with the help of NAOF, which combines ideas from knowledge management, agricultural science, and ontology engineering. NAOF aims to ensure that the ontologies produced reflect the wide range of viewpoints and terminology used in agricultural research by encouraging cooperation among stakeholders, ontology engineers, and domain specialists. In this study, the improvement of knowledge organization, sharing and integration in the agricultural area is shown with the application of NAOF. Using this research study, scientists can build ontologies that improve agricultural decision-making, data interoperability, and the discovery of new information. Using quantum machine learning techniques, a strong foundation of knowledge can be laid for several agricultural applications, such as precision agriculture, crop management, and the formulation of agricultural policies. Ontology coverage, interoperability, scalability, and usability are established evaluation parameters that are used to assess the efficacy of NAOF in this research work. The analysis shows that NAOF effectively solves the problems and creates a better agricultural knowledge ecosystem by thoroughly evaluating it using these standards.

Item Type: Conference or Workshop Item (Paper)
Subjects: Computer Science Engineering > Machine Learning
Divisions: Computer Science Engineering
Depositing User: Mr IR Admin
Date Deposited: 07 Oct 2024 09:56
Last Modified: 07 Oct 2024 09:56
URI: https://ir.vistas.ac.in/id/eprint/9337

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