Version 2 2024-06-05, 11:50Version 2 2024-06-05, 11:50
Version 1 2018-09-13, 16:55Version 1 2018-09-13, 16:55
conference contribution
posted on 2024-06-05, 11:50authored byTD Nguyen, D Phung, V Huynh, T Le
We propose in this paper the supervised re- stricted Boltzmann machine (sRBM), a unified framework which combines the versatility of RBM to simultaneously learn the data representation and to perform supervised learning (i.e., a nonlinear classifier or a nonlinear regressor). Unlike the current state-of-the-art classification formulation proposed for RBM in (Larochelle et al., 2012), our model is a hybrid probabilistic graphical model consisting of a distinguished genera- tive component for data representation and a dis- criminative component for prediction. While the work of (Larochelle et al., 2012) typically incurs no extra difficulty in inference compared with a standard RBM, our discriminative component, modeled as a directed graphical model, renders MCMC-based inference (e.g., Gibbs sampler) very slow and unpractical for use. To this end, we further develop scalable variational inference for the proposed sRBM for both classification and regression cases. Extensive experiments on realworld datasets show that our sRBM achieves better predictive performance than baseline methods. At the same time, our proposed framework yields learned representations which are more discriminative, hence interpretable, than those of its counterparts. Besides, our method is probabilistic and capable of generating meaningful data conditioning on specific classes - a topic which is of current great interest in deep learning aiming at data generation.
History
Location
Sydney, N.S.W.
Start date
2017-08-11
End date
2017-08-15
Language
eng
Publication classification
E Conference publication, E1 Full written paper - refereed
Copyright notice
2017, UAI
Title of proceedings
Uncertainty in Artificial Intelligence - Proceedings of the 33rd Conference, UAI 2017
Publisher
Association for Uncertainty in Artificial Intelligence