Back to Search Start Over

Text Summarization with Latent Queries

Authors :
Xu, Yumo
Lapata, Mirella
Xu, Yumo
Lapata, Mirella
Publication Year :
2021

Abstract

The availability of large-scale datasets has driven the development of neural models that create summaries from single documents, for generic purposes. When using a summarization system, users often have specific intents with various language realizations, which, depending on the information need, can range from a single keyword to a long narrative composed of multiple questions. Existing summarization systems, however, often either fail to support or act robustly on this query focused summarization task. We introduce LaQSum, the first unified text summarization system that learns Latent Queries from documents for abstractive summarization with any existing query forms. Under a deep generative framework, our system jointly optimizes a latent query model and a conditional language model, allowing users to plug-and-play queries of any type at test time. Despite learning from only generic summarization data and requiring no further optimization for downstream summarization tasks, our system robustly outperforms strong comparison systems across summarization benchmarks with different query types, document settings, and target domains.<br />Comment: 12 pages

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1269554263
Document Type :
Electronic Resource