Publication | Closed Access
Graph-based submodular selection for extractive summarization
80
Citations
28
References
2009
Year
Unknown Venue
Natural Language ProcessingAutomatic Speech RecognitionInformation RetrievalData ScienceEngineeringComputational LinguisticsKnowledge DiscoverySemantic GraphKeyword ExtractionEntity SummarizationAutomatic SummarizationGraph-based Submodular SelectionSubmodular FunctionsInformation ExtractionCorpus LinguisticsText MiningMachine TranslationMulti-modal Summarization
We propose a novel approach for unsupervised extractive summarization. Our approach builds a semantic graph for the document to be summarized. Summary extraction is then formulated as optimizing submodular functions defined on the semantic graph. The optimization is theoretically guaranteed to be near-optimal under the framework of submodularity. Extensive experiments on the ICSI meeting summarization task on both human transcripts and automatic speech recognition (ASR) outputs show that the graph-based submodular selection approach consistently outperforms the maximum marginal relevance (MMR) approach, a concept-based approach using integer linear programming (ILP), and a recursive graph-based ranking algorithm using Google's PageRank.
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