Query-Oriented Multi-Document Summarization via Unsupervised Deep Learning
Liu, Yan (The Hong Kong Polytechnic University) | Zhong, Sheng-hua (The Hong Kong Polytechnic University) | Li, Wenjie (The Hong Kong Polytechnic University)
Extractive style query oriented multi document summariza tion generates the summary by extracting a proper set of sentences from multiple documents based on the pre given query. This paper proposes a novel multi document summa rization framework via deep learning model. This uniform framework consists of three parts: concepts extraction, summary generation, and reconstruction validation, which work together to achieve the largest coverage of the docu ments content. A new query oriented extraction technique is proposed to concentrate distributed information to hidden units layer by layer. Then, the whole deep architecture is fi ne tuned by minimizing the information loss of reconstruc tion validation. According to the concentrated information, dynamic programming is used to seek most informative set of sentences as the summary. Experiments on three bench mark datasets demonstrate the effectiveness of the proposed framework and algorithms.
Jul-21-2012
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