標題: Deep Unfolding for Topic Models
作者: Chien, Jen-Tzung
Lee, Chao-Hsi
電機工程學系
Department of Electrical and Computer Engineering
關鍵字: Deep unfolding;topic model;variational inference;deep neural network;unsupervised/supervised learning
公開日期: 1-Feb-2018
摘要: Deep unfolding provides an approach to integrate the probabilistic generative models and the deterministic neural networks. Such an approach is benefited by deep representation, easy interpretation, flexible learning and stochastic modeling. This study develops the unsupervised and supervised learning of deep unfolded topic models for document representation and classification. Conventionally, the unsupervised and supervised topic models are inferred via the variational inference algorithm where the model parameters are estimated by maximizing the lower bound of logarithm of marginal likelihood using input documents without and with class labels, respectively. The representation capability or classification accuracy is constrained by the variational lower bound and the tied model parameters across inference procedure. This paper aims to relax these constraints by directly maximizing the end performance criterion and continuously untying the parameters in learning process via deep unfolding inference (DUI). The inference procedure is treated as the layer-wise learning in a deep neural network. The end performance is iteratively improved by using the estimated topic parameters according to the exponentiated updates. Deep learning of topic models is therefore implemented through a back-propagation procedure. Experimental results show the merits of DUI with increasing number of layers compared with variational inference in unsupervised as well as supervised topic models.
URI: http://dx.doi.org/10.1109/TPAMI.2017.2677439
http://hdl.handle.net/11536/144372
ISSN: 0162-8828
DOI: 10.1109/TPAMI.2017.2677439
期刊: IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE
Volume: 40
起始頁: 318
結束頁: 331
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