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首页> 外文期刊>Journal of Computational Methods in Sciences and Engineering >Brain-computer fusion artificial intelligence system based on transfer learning
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Brain-computer fusion artificial intelligence system based on transfer learning

机译:基于转移学习的脑电脑融合人工智能系统

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摘要

In order to solve the problems faced in the transfer learning of artificial intelligence system modeling technology, a new method of TSK transfer learning fuzzy system was proposed to enhance knowledge transfer. The two key problems of the precursor learning and the post learning of the TSK type transfer fuzzy system were solved by using this method. And also a novel transfer fuzzy clustering method was proposed for solving the problem. At the same time, a post learning mechanism was proposed to enhance the ability of knowledge transfer which effectively improved the performance of the final model. The experimental results showed that the proposed method integrated the transfer clustering and the transfer fuzzy system modeling successfully, making the modeling process of the fuzzy system more intelligent with better learning ability. In addition, the proposed method provided a new research idea for the development of transfer learning in the field of intelligent modeling.
机译:为了解决人工智能系统建模技术转移学习面临的问题,提出了一种新的TSK转移学习模糊系统方法,提升了知识转移。通过使用该方法解决了前体学习和TSK型转移模糊系统的后期学习的两个关键问题。还提出了一种新的转移模糊聚类方法来解决问题。与此同时,提出了一个后学习机制,提高了知识转移能力,有效提高了最终模型的性能。实验结果表明,所提出的方法成功集成了转移聚类和转移模糊系统建模,使模糊系统的建模过程更加智能,具有更好的学习能力。此外,该方法还为智能建模领域的转移学习提供了新的研究理念。

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