Multi-document summarization using probabilistic topic-based network models

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作者
机构
[1] Yang, Cheng-Zen
[2] Fan, Jhih-Shang
[3] Liu, Yu-Fan
来源
| 1613年 / Institute of Information Science卷 / 32期
关键词
Integrated approach - Multi-document summarization - Network models - Performance evaluation - Probabilistic topic models - Research domains - Text summarization - Topic model;
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摘要
Multi-document summarization has obtained much attention in the research domain of text summarization. In the past, probabilistic topic models and network models have been leveraged to generate summaries. However, previous studies do not investigate different combinations of various topic models and network models. This paper describes an integrated approach considering both probabilistic topic models and network models. Two probabilistic topic models and four network models are investigated. We have conducted experiments to evaluate the effectiveness of the proposed approach with the DUC 2004-2007 datasets and make a systematic comparison between two representative topic models, PLSA and LDA. The results show that the PLSA-based network approach outperforms the TF-IDF baseline on all datasets. Moreover, PLSA has better ROUGE performance than LDA for multi-document summarization. © 2016, Institute of Information Science. All rights reserved.
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