LGIRApr 23, 2025

A Unified Retrieval Framework with Document Ranking and EDU Filtering for Multi-document Summarization

arXiv:2504.16711v11 citationsh-index: 11SIGIR
Originality Incremental advance
AI Analysis

This addresses context-length constraints in multi-document summarization, offering a more practical alternative to manually crafted queries, though it appears incremental in improving existing retrieval-based approaches.

The paper tackles the problem of input length limitations in transformer-based multi-document summarization by proposing a unified retrieval framework that uses elementary discourse units as latent queries for document ranking and filtering, achieving consistent improvements in ROUGE metrics across multiple datasets.

In the field of multi-document summarization (MDS), transformer-based models have demonstrated remarkable success, yet they suffer an input length limitation. Current methods apply truncation after the retrieval process to fit the context length; however, they heavily depend on manually well-crafted queries, which are impractical to create for each document set for MDS. Additionally, these methods retrieve information at a coarse granularity, leading to the inclusion of irrelevant content. To address these issues, we propose a novel retrieval-based framework that integrates query selection and document ranking and shortening into a unified process. Our approach identifies the most salient elementary discourse units (EDUs) from input documents and utilizes them as latent queries. These queries guide the document ranking by calculating relevance scores. Instead of traditional truncation, our approach filters out irrelevant EDUs to fit the context length, ensuring that only critical information is preserved for summarization. We evaluate our framework on multiple MDS datasets, demonstrating consistent improvements in ROUGE metrics while confirming its scalability and flexibility across diverse model architectures. Additionally, we validate its effectiveness through an in-depth analysis, emphasizing its ability to dynamically select appropriate queries and accurately rank documents based on their relevance scores. These results demonstrate that our framework effectively addresses context-length constraints, establishing it as a robust and reliable solution for MDS.

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