Title :
Incremental adaptation of resource-allocating network for non-stationary time series
Author :
Chan, Man-Chung ; Fung, Chi-Chng
Author_Institution :
Dept. of Comput., Hong Kong Polytech., Hung Hom, Hong Kong
Abstract :
A major restriction on a traditional artificial neural network (ANN) is the approximation capability will be frozen after the completion of the training process. This results in a gradual degradation of estimation performance when applied to a non-stationary environment. Accordingly, the paper suggests an incremental refinement approach (IRA), which enables a resource-allocating network (RAN) to learn online from environmental variances during the prediction period. During IRA development, the key challenge is the requirement to maintain a compromise between robustness toward interference and the adaptivity to environmental changes. This problem is known as the stability-plasticity dilemma. RAN-IRA is basically composed of three ingredients to achieve the incremental learning process. They are principal kernel selection, noise filtering and incremental refinement. An experiment is provided to evaluate the performance of RAN-IRA by predicting the closing price of Hang Seng Index time series. Finally, empirical results are briefly discussed and provide evidence to indicate that RAN-IRA considerably outperforms the traditional RAN model with a more promising estimation under a non-stationary environment
Keywords :
filtering theory; forecasting theory; learning (artificial intelligence); neural nets; noise; stock markets; time series; Hang Seng Index; adaptivity; closing price; environmental variances; estimation performance; incremental adaptation; incremental refinement approach; noise filtering; nonstationary time series; principal kernel selection; resource-allocating network; stability-plasticity dilemma; Acoustic noise; Artificial neural networks; Computer networks; Degradation; Economic forecasting; Environmental economics; Kernel; Neural networks; Neurofeedback; Radio access networks;
Conference_Titel :
Neural Networks, 1999. IJCNN '99. International Joint Conference on
Conference_Location :
Washington, DC
Print_ISBN :
0-7803-5529-6
DOI :
10.1109/IJCNN.1999.832601