Litcius/Paper detail

Generating Representative Headlines for News Stories

Xiaotao Gu, Yuning Mao, Jiawei Han, Jialu Liu, You Wu, Cong Yu, Daniel Finnie, Hongkun Yu, Jiaqi Zhai, Nicholas Zukoski

202053 citationsDOIOpen Access PDF

Abstract

Millions of news articles are published online every day, which can be overwhelming for readers to follow. Grouping articles that are reporting the same event into news stories is a common way of assisting readers in their news consumption. However, it remains a challenging research problem to efficiently and effectively generate a representative headline for each story. Automatic summarization of a document set has been studied for decades, while few studies have focused on generating representative headlines for a set of articles. Unlike summaries, which aim to capture most information with least redundancy, headlines aim to capture information jointly shared by the story articles in short length and exclude information specific to each individual article.

Topics & Concepts

HeadlineAutomatic summarizationComputer scienceRedundancy (engineering)Information retrievalEvent (particle physics)Set (abstract data type)Data scienceWorld Wide WebAdvertisingQuantum mechanicsProgramming languageBusinessOperating systemPhysicsTopic ModelingNatural Language Processing TechniquesWeb Data Mining and Analysis