Can threshold networks be trained directly

作者: Guang-Bin Huang , Qin-Yu Zhu , K.Z. Mao , Chee-Kheong Siew , P. Saratchandran

DOI: 10.1109/TCSII.2005.857540

关键词:

摘要: … small, the gain parameter is gradually increased during the training until the slope of the sigmoid is sufficiently large to allow a transfer to a threshold network with the same architecture. …

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