Non-Linear Statistical Analysis and Self-Organizing Hebbian Networks
Shapiro, Jonathan L., Prügel-Bennett, Adam
–Neural Information Processing Systems
Linear neurons learning under an unsupervised Hebbian rule can learn to perform a linear statistical analysis ofthe input data. This was first shown by Oja (1982), who proposed a learning rule which finds the first principal component of the variance matrix of the input data. Based on this model, Oja (1989), Sanger (1989), and many others have devised numerous neural networks which find many components of this matrix. These networks perform principal component analysis (PCA), a well-known method of statistical analysis.
Neural Information Processing Systems
Dec-31-1994
- Technology: