#
multi-document-summarization
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12 public repositories
matching this topic...
An Automatic Answer Summariser developed using Python, PyTorch, and HuggingFace trained on Quora Dataset aimed at summarizing and providing a single answer to a question using answers from multiple users.
Updated
Sep 15, 2023
Python
[Computer Speech & Language, Elsevier] - Neural Sentence Fusion for Diversity Driven Abstractive Multi-Document Summarization.
Updated
Apr 6, 2021
Python
A multilingual and multi-document model that uses an enhanced version of TF-IDF and knowledge graphs to generate an abstractive summary
Updated
May 4, 2022
Python
LongT5-based model pre-trained on a large amount of unlabeled Vietnamese news texts and fine-tuned with ViMS and VMDS collections
Updated
May 24, 2023
Python
Extractive Multi-document Summarization
Updated
Oct 10, 2023
Perl
Code for "Multi-document Summarization with Maximal Marginal Relevance-guided Reinforcement Learning", EMNLP 2020
Updated
Jun 20, 2021
Python
Code for the paper: Improving Multi-Document Summarization through Referenced Flexible Extraction with Credit-Awareness
Updated
Oct 22, 2023
Python
Multi-XScience: A Large-scale Dataset for Extreme Multi-document Summarization of Scientific Articles
A curated list of Multi-Document Summarization papers, articles, tutorials, slides , datasets, and projects
A simple python implementation of the Maximal Marginal Relevance (MMR) baseline system for text summarization.
Updated
Jan 20, 2017
Python
SUPERT: Unsupervised multi-document summarization evaluation & generation
Updated
Dec 8, 2022
Python
Large-scale multi-document summarization dataset and code
Updated
May 8, 2023
Python
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