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- Learns weights for a multilayer network, given a fixed set of units and interconnections
- It uses gradient descent to minimize the squashed error between
the network outputs and the target values for these outputs.
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- is the set of output units in the network,
and are the target and output values associated with the
th output unit and the training example
- In multilayer networks the error surface can have multiple
minima, but in practice Backpropagation has produced
excellent results in many real-world applications
- the algorithm is for two layers of sigmoid units and does
stochastic gradient descent
Patricia Riddle
Fri May 15 13:00:36 NZST 1998