Input space partitioning for neural network learning
journal contribution
posted on 2024-11-01, 14:53authored byShujuan Guo, Sheng-Uei Guan, Weifan Li, Ka Lok Man, Fei Liu, Kai Qin
To improve the learning performance of neural network NN, this paper introduces an input attribute grouping based NN ensemble method. All of the input attributes are partitioned into exclusive groups according to the degree of inter-attribute promotion or correlation that quantifies the supportive interactions between attributes. After partitioning, multiple NNs are trained by taking each group of attributes as their respective inputs. The final classification result is obtained by integrating the results from each NN. Experimental results on several UCI datasets demonstrate the effectiveness of the proposed method.