Advances in Electrical Engineering and Automation pp 191-197 | Cite as
Research of Algorithm Based on Improved Self-Organization Neural Network of Fuzzy Clustering
Conference paper
Abstract
This paper introduced an improved fuzzy SOFM clustering algorithm. In the initialization phase, by the way of subtractive clustering, optimized initial weights of network and determined the number of clusters. To verify the effectiveness of the algorithm, this algorithm will be applied to web log mining. Experimental results showed that the improved fuzzy SOFM neural network training speed and convergence results have improved to some extent, and for a variety of users interested in mining provides a feasible approach.
Keywords
Web log mining Fuzzy clustering SOFM neural networkPreview
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