Title :
A new simple ∞OH neuron model as a biologically plausible principal component analyzer
Author :
Jankovic, Marko V.
Author_Institution :
Inst. of Electr. Eng. "Nikola Tesla", Belgrade, Serbia
fDate :
7/1/2003 12:00:00 AM
Abstract :
A new approach to unsupervised learning in a single-layer neural network is discussed. An algorithm for unsupervised learning based upon the Hebbian learning rule is presented. A simple neuron model is analyzed. A dynamic neural model, which contains both feed-forward and feedback connections between the input and the output, has been adopted. The, proposed learning algorithm could be more correctly named self-supervised rather than unsupervised. The solution proposed here is a modified Hebbian rule, in which the modification of the synaptic strength is proportional not to pre- and postsynaptic activity, but instead to the presynaptic and averaged value of postsynaptic activity. It is shown that the model neuron tends to extract the principal component from a stationary input vector sequence. Usually accepted additional decaying terms for the stabilization of the original Hebbian rule are avoided. Implementation of the basic Hebbian scheme would not lead to unrealistic growth of the synaptic strengths, thanks to the adopted network structure.
Keywords :
Hebbian learning; feedback; feedforward; neural nets; principal component analysis; self-adjusting systems; unsupervised learning; ∞OH neuron model; Hebbian learning rule; biologically plausible principal component analyzer; dynamic neural model; feedback connections; feedforward connections; modified Hebbian rule; postsynaptic activity; presynaptic activity; selfsupervised learning; single-layer neural network; stationary input vector sequence; stochastic approximation; synaptic plasticity; synaptic strength; unsupervised learning; Biological system modeling; Feature extraction; Feedforward systems; Hebbian theory; Multi-layer neural network; Neural networks; Neurofeedback; Neurons; Output feedback; Unsupervised learning;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2003.813836