Boosting and Other Ensemble Methods 论文

1994Neural Computation引用 355
Neural Networks and ApplicationsMachine Learning and Data ClassificationBlind Source Separation Techniques

详细信息

发表期刊/会议
Neural Computation
发表日期
1994-11-01
发表年份
1994

关键词

Neural Networks and ApplicationsMachine Learning and Data ClassificationBlind Source Separation Techniques

摘要

We compare the performance of three types of neural network-based ensemble techniques to that of a single neural network. The ensemble algorithms are two versions of boosting and committees of neural networks trained independently. For each of the four algorithms, we experimentally determine the test and training error curves in an optical character recognition (OCR) problem as both a function of training set size and computational cost using three architectures. We show that a single machine is best for small training set size while for large training set size some version of boosting is best. However, for a given computational cost, boosting is always best. Furthermore, we show a surprising result for the original boosting algorithm: namely, that as the training set size increases, the training error decreases until it asymptotes to the test error rate. This has potential implications in the search for better training algorithms.