Logo image
Cross-validation in Fuzzy ARTMAP for large databases
Journal article   Open access   Peer reviewed

Cross-validation in Fuzzy ARTMAP for large databases

Anna Koufakou, Michael Georgiopoulos, George Anagnostopoulos and Takis Kasparis
Neural networks, Vol.14(9), pp.1279-1291
2001
PMID: 11718426

Abstract

Artificial intelligence Computer science; control theory; systems Connectionism. Neural networks Exact sciences and technology Applied Sciences
In this paper we are examining the issue of overtraining in Fuzzy ARTMAP. Over-training in Fuzzy ARTMAP manifests itself in two different ways: (a) it degrades the generalization performance of Fuzzy ARTMAP as training progresses; and (b) it creates unnecessarily large Fuzzy ARTMAP neural network architectures. In this work, we are demonstrating that overtraining happens in Fuzzy ARTMAP and we propose an old remedy for its cure: cross-validation. In our experiments, we compare the performance of Fuzzy ARTMAP that is trained (i) until the completion of training, (ii) for one epoch, and (iii) until its performance on a validation set is maximized. The experiments were performed on artificial and real databases. The conclusion derived from those experiments is that cross-validation is a useful procedure in Fuzzy ARTMAP, because it produces smaller Fuzzy ARTMAP architectures with improved generalization performance. The trade-off is that cross-validation introduces additional computational complexity in the training phase of Fuzzy ARTMAP.
url
http://ktisis.cut.ac.cy/handle/10488/7148View
Open

Related links

Metrics

Details

Logo image