標題: LATENT DIRICHLET LEARNING FOR HIERARCHICAL SEGMENTATION
作者: Chien, Jen-Tzung
Chueh, Chuang-Hua
電機資訊學士班
Undergraduate Honors Program of Electrical Engineering and Computer Science
關鍵字: Machine Learning;Topic Model;Graphical Model;Hierarchical Segmentation
公開日期: 2012
摘要: Topic model can be established by using Dirichlet distributions as the prior model to characterize latent topics in natural language. However, topics in real-world stream data are non-stationary. Training a reliable topic model is a challenging study. Further, the usage of words in different paragraphs within a document is varied due to different composition styles. This study presents a hierarchical segmentation model by compensating the heterogeneous topics in stream level and the heterogeneous words in document level. The topic similarity between sentences is calculated to form a beta prior for stream-level segmentation. This segmentation prior is adopted to group topic-coherent sentences into a document. For each pseudo-document, we incorporate a Markov chain to detect stylistic segments within a document. The words in a segment are generated by identical composition style. This new model is inferred by a variational Bayesian EM procedure. Experimental results show benefits by using the proposed model in terms of perplexity and F measure.
URI: http://hdl.handle.net/11536/20765
ISBN: 978-1-4673-1026-0
期刊: 2012 IEEE INTERNATIONAL WORKSHOP ON MACHINE LEARNING FOR SIGNAL PROCESSING (MLSP)
Appears in Collections:Conferences Paper