[1]XIAO Jing,WANG Lei,YANG Yujiu,et al.A systematic review of perceptual cognitive technology and its application in the field of financial risk early warning[J].CAAI Transactions on Intelligent Systems,2021,16(5):941-961.[doi:10.11992/tis.202107027]
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A systematic review of perceptual cognitive technology and its application in the field of financial risk early warning

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