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Research Hotspots and Trends of Brain-Inspired Intelligence |
Liu Jie, Wu Hui* |
(Shanghai Jiao Tong University School of Medicine, Shanghai 200025, China) |
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Abstract Inspired by the brain's neural operation and cognitive behavior mechanisms, the brain-inspired intelligence uses computational modeling as a means to achieve machine intelligence through hardware and software collaboration with characteristics of brain-like information processing mechanism, human-like cognitive behavior, and human intelligence or more, attracting more and more attention. From the point of co-citation and co-words, articles about the research of brain-inspired intelligence between 2010 and 2019 were retrieved in Web of Science and CiteSpace software was used to evaluate the global scientific output. Research hotspots and trends, that is, the construction of brain-like neural network computing models and learning methods with the help of brain science and the in-depth and cross-study of brain-computer interface and deep learning, were discussed in detail.
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Received: 29 February 2020
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Corresponding Authors:
*E-mail: hwu@shsmu.edu.cn
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