Fact-Preserved Personalized News Headline Generation
Journal:
arXiv
Published Date:
Jan 21, 2025
Abstract
Personalized news headline generation, aiming at generating user-specific
headlines based on readers' preferences, burgeons a recent flourishing research
direction. Existing studies generally inject a user interest embedding into an
encoderdecoder headline generator to make the output personalized, while the
factual consistency of headlines is inadequate to be verified. In this paper,
we propose a framework Fact-Preserved Personalized News Headline Generation
(short for FPG), to prompt a tradeoff between personalization and consistency.
In FPG, the similarity between the candidate news to be exposed and the
historical clicked news is used to give different levels of attention to key
facts in the candidate news, and the similarity scores help to learn a
fact-aware global user embedding. Besides, an additional training procedure
based on contrastive learning is devised to further enhance the factual
consistency of generated headlines. Extensive experiments conducted on a
real-world benchmark PENS validate the superiority of FPG, especially on the
tradeoff between personalization and factual consistency.