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Broad Learning System (BLS) is a very fast and effective discriminative learning which is developed by C. L. P. Chen, Z. Liu and others. It avoids the shortcomings of complex model design and large amount of calculation in deep learning. This paper studies the approximation capability of BLS for continuous functions defined on a compact set. It is proved that if the activation function of the enhancement node of BLS is not polynomial, for any continuous function f(x) e C(K) defined on the compact set K, there is limmq→ ∞,nk→ ∞ f(x)-fw(x) 22=0, that is >0, nk e N, mq e N', and parameter set w, so that f(x)-fw(x) 22 © 2022 The authors and IOS Press.
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ISSN: 2352-751X
年份: 2022
卷: 30
页码: 622-629
语种: 英文
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