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Fuzzy-AI Model

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Fuzzy-AI Model and Big Data Exploration

Abstract

Fuzzy-AI Model is an efficient approach of information digging treatment combined with artificial intelligence and fuzzy information technology. Since AI can be understood as using a computer to simulate human intelligence, yet the latter one is nothing better than the immense capability of massive fuzzy information processing. Therefore, the combination of AI and fuzzy information processing will have a broad perspective for applied information technology. The majority of practical problems in nature, in society and in engineering essentially possess uncertainty, and the problem solution is not only to make a qualitative judgment, but also the quantitative evaluation, and in this point, the fuzzy set theorem can be fully adaptable. Therefore, the introduction of the Fuzzy-AI Model may explore a new approach of solving non-structured problems by means of AI.

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Correspondence to Shaopei Lin .

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Lin, S. (2022). Fuzzy-AI Model. In: Fuzzy-AI Model and Big Data Exploration. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-662-56339-7_2

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  • DOI: https://doi.org/10.1007/978-3-662-56339-7_2

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