Bounds for the computational power and learning complexity of analog neural nets.
It is shown that high-order feedforward neural nets of constant depth with piecewise-polynomial activation functions and arbitrary real weights can be simulated for Boolean inputs and outputs by neural nets of a somewhat larger size and depth with Heaviside gates and weights from {-1,0,1}. This prov...
發表在: | SIAM journal on computing. 26, 3 (1997). |
---|---|
主要作者: | |
格式: | Article |
語言: | English |
主題: |