Title :
Learning profile in routing: comparison between relevance and gradient back-propagation
Author :
Tmar, M. ; Boughan, M.
Author_Institution :
IRIT/SIG, Campus Univ., Toulouse, France
Abstract :
Compares two learning profile strategies in an information routing task: relevance backpropagation and gradient backpropagation. Gradient backpropagation is a learning approach used in multilayered neural networks in general. The convergence of the gradient backpropagation algorithm is still to be discussed, but we show its convergence in the majority of cases. Relevance backpropagation is a relevance feedback method used in our connectionist model called Mercure. Experiments carried out on Amaryllis documents showed the effectiveness of both methods, with a slight benefit for the relevance backpropagation strategy
Keywords :
backpropagation; convergence; feedforward neural nets; gradient methods; relevance feedback; Amaryllis documents; Mercure connectionist model; convergence; gradient backpropagation; information routing task; learning profile strategies; multilayered neural networks; relevance backpropagation; relevance feedback method; Convergence; Data mining; Decision making; Information filtering; Information filters; Information retrieval; Multi-layer neural network; Neural networks; Neurofeedback; Routing;
Conference_Titel :
String Processing and Information Retrieval, 2000. SPIRE 2000. Proceedings. Seventh International Symposium on
Conference_Location :
A Curuna
Print_ISBN :
0-7695-0746-8
DOI :
10.1109/SPIRE.2000.878203