The integration of neutrosophic sets into neural networks presents a novel approach to handling uncertainty, indeterminacy, and falsity in data. Traditional neural networks typically operate under the assumption of precise and complete data, but real-world applications often involve noisy, incomplete, or ambiguous information. Neutrosophic sets extend fuzzy logic by incorporating three components: truth, indeterminacy, and falsity, allowing for a more nuanced representation of uncertain data. This paper explores the theoretical foundations of neutrosophic sets and their integration with neural networks, highlighting the challenges in computational complexity, training, and optimization. The paper also discusses the potential applications of neutrosophic neural networks in fields such as medical diagnosis, robotics, and image recognition. Despite challenges, neutrosophic sets offer significant promise for improving the robustness and accuracy of neural network models in uncertain environments. Future research should focus on developing efficient algorithms, standardized libraries, and novel evaluation metrics to unlock the full potential of neutrosophic neural networks for real-world applications.
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Vladimir Simić
Dragan Pamucar
Hafiz Muhammad Athar Farid
Neutrosophic Systems with Applications
University of Belgrade
University of Huddersfield
Korea University
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Simić et al. (Tue,) studied this question.
synapsesocial.com/papers/69d1fdbfa79560c99a0a3f77 — DOI: https://doi.org/10.63689/2993-7159.1326