Title :
Learn++: an incremental learning algorithm for supervised neural networks
Author :
Polikar, Robi ; Upda, L. ; Upda, S.S. ; Honavar, Vasant
Author_Institution :
Dept. of Electr. & Comput. Eng., Rowan Univ., Glassboro, NJ, USA
fDate :
11/1/2001 12:00:00 AM
Abstract :
We introduce Learn++, an algorithm for incremental training of neural network (NN) pattern classifiers. The proposed algorithm enables supervised NN paradigms, such as the multilayer perceptron (MLP), to accommodate new data, including examples that correspond to previously unseen classes. Furthermore, the algorithm does not require access to previously used data during subsequent incremental learning sessions, yet at the same time, it does not forget previously acquired knowledge. Learn++ utilizes ensemble of classifiers by generating multiple hypotheses using training data sampled according to carefully tailored distributions. The outputs of the resulting classifiers are combined using a weighted majority voting procedure. We present simulation results on several benchmark datasets as well as a real-world classification task. Initial results indicate that the proposed algorithm works rather well in practice. A theoretical upper bound on the error of the classifiers constructed by Learn++ is also provided
Keywords :
data analysis; knowledge acquisition; learning (artificial intelligence); neural nets; pattern classification; Learn++; MLP; benchmark datasets; catastrophic forgetting; classification algorithms; incremental learning; incremental learning algorithm; incremental learning sessions; incremental training; knowledge acquisition; multilayer perceptron; multiple hypotheses; neural network pattern classifiers; pattern recognition; previously acquired knowledge; real-world classification task; supervised NN paradigms; supervised neural networks; training data; unseen classes; weighted majority voting procedure; Classification algorithms; Costs; Knowledge acquisition; Multilayer perceptrons; Neural networks; Pattern recognition; Stability; Training data; Upper bound; Voting;
Journal_Title :
Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on
DOI :
10.1109/5326.983933