[MINI] The Vanishing Gradient
Data Skeptic - A podcast by Kyle Polich - Lunedì
Categorie:
This episode discusses the vanishing gradient - a problem that arises when training deep neural networks in which nearly all the gradients are very close to zero by the time back-propagation has reached the first hidden layer. This makes learning virtually impossible without some clever trick or improved methodology to help earlier layers begin to learn.