Constructive Algorithms for Hierarchical Mixtures of Experts
Waterhouse, Steve R., Robinson, Anthony J.
–Neural Information Processing Systems
By applying a likelihood splitting criteria to each expert in the HME we "grow" the tree adaptively during training. Secondly, by considering only the most probable path through the tree we may "prune" branches away, either temporarily, or permanently if they become redundant. We demonstrate results for the growing and path pruning algorithms which show significant speed ups and more efficient use of parameters over the standard fixed structure in discriminating between two interlocking spirals and classifying 8-bit parity patterns. INTRODUCTION The HME (Jordan & Jacobs 1994) is a tree structured network whose terminal nodes are simple function approximators in the case of regression or classifiers in the case of classification. The outputs of the terminal nodes or experts are recursively combined upwards towards the root node, to form the overall output of the network, by "gates" which are situated at the non-terminal nodes.
Neural Information Processing Systems
Dec-31-1996
- Country:
- Asia > Middle East
- Jordan (0.25)
- Europe > United Kingdom (0.28)
- North America > United States (0.47)
- Asia > Middle East
- Technology: