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Topology of a Neural Network

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Neural network architecture; Connectivity; Structure


Topology of a neural network refers to the way the Neurons are connected, and it is an important factor in network functioning and learning. A common topology in unsupervised learning is a direct mapping of inputs to a collection of units that represents categories (e.g., Self-organizing maps). The most common topology in supervised learning is the fully connected, three-layer, feedforward network (see Backpropagation, Radial Basis Function Networks). All input values to the network are connected to all neurons in the hidden layer (hidden because they are not visible in the input or the output), the outputs of the hidden neurons are connected to all neurons in the output layer, and the activations of the output neurons constitute the output of the whole network. Such networks are popular partly because theoretically they are known to be universal function approximators (with e.g., a sigmoid or gaussian...

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Miikkulainen, R. (2011). Topology of a Neural Network. In: Sammut, C., Webb, G.I. (eds) Encyclopedia of Machine Learning. Springer, Boston, MA.

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