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Multi-Document Summarization

Multi-Document Summarization is a process of representing a set of documents with a short piece of text by capturing the relevant information and filtering out the redundant information. Two prominent approaches to Multi-Document Summarization are extractive and abstractive summarization. Extractive summarization systems aim to extract salient snippets, sentences or passages from documents, while abstractive summarization systems aim to concisely paraphrase the content of the documents.

Source: Multi-Document Summarization using Distributed Bag-of-Words Model

Papers

Showing 251275 of 359 papers

TitleStatusHype
CIST System for CL-SciSumm 2016 Shared Task0
Sentence Similarity based on Dependency Tree Kernels for Multi-document Summarization0
TGSum: Build Tweet Guided Multi-Document Summarization Dataset0
Joint semantic discourse models for automatic multi-document summarization0
On Strategies of Human Multi-Document Summarization0
A Discursive Grid Approach to Model Local Coherence in Multi-document Summaries0
Abstractive Multi-document Summarization with Semantic Information Extraction0
AllSummarizer system at MultiLing 2015: Multilingual single and multi-document summarizationCode0
System Combination for Multi-document Summarization0
MultiLing 2015: Multilingual Summarization of Single and Multi-Documents, On-line Fora, and Call-center Conversations0
Extractive Summarization by Aggregating Multiple Similarities0
Measuring Semantic Similarity for Bengali Tweets Using WordNet0
ExB Text Summarizer0
Privacy-Preserving Multi-Document Summarization0
Extending a Single-Document Summarizer to Multi-Document: a Hierarchical Approach0
Multi-Document Summarization via Discriminative Summary Reranking0
Predicting Salient Updates for Disaster Summarization0
From TimeLines to StoryLines: A preliminary proposal for evaluating narratives0
End-to-end Argument Generation System in Debating0
Abstractive Multi-Document Summarization via Phrase Selection and Merging0
Vector Space Models for Scientific Document Summarization0
A Method of Accounting Bigrams in Topic Models0
Improving Update Summarization via Supervised ILP and Sentence Reranking0
Topic Models: Accounting Component Structure of Bigrams0
Using External Resources and Joint Learning for Bigram Weighting in ILP-Based Multi-Document Summarization0
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