Title :
An incremental learning approach for restricted boltzmann machines
Author :
Jongmin Yu; Jeonghwan Gwak; Sejeong Lee; Moongu Jeon
Author_Institution :
Machine Learning and Vision Laboratory, School of Information and Communication, Gwangju Institute of Science and Technology, 61005, Republic of Korea
Abstract :
Determination of model complexity is a challenging issue to solve computer vision problems using restricted boltzmann machines (RBMs). Many algorithms for feature learning depend on cross-validation or empirical methods to optimize the number of features. In this work, we propose an learning algorithm to find the optimal model complexity for the RBMs by incrementing the hidden layer. The proposed algorithm is composed of two processes: 1) determining incrementation necessity of neurons and 2) computing the number of additional features for the increment. Specifically, the proposed algorithm uses a normalized reconstruction error in order to determine incrementation necessity and prevent unnecessary increment for the number of features during training. Our experimental results demonstrated that the proposed algorithm converges to the optimal number of features in a single layer RBMs. In the classification results, our model could outperform the non-incremental RBM.
Keywords :
"Neurons","Complexity theory","Computational modeling","Training","Error analysis","Training data","Standards"
Conference_Titel :
Control, Automation and Information Sciences (ICCAIS), 2015 International Conference on
DOI :
10.1109/ICCAIS.2015.7338643