Litcius/Paper detail

Summarizing User-Contributed Comments

Elham Khabiri, James Caverlee, Chiao-Fang Hsu

2021Proceedings of the International AAAI Conference on Web and Social Media85 citationsDOIOpen Access PDF

Abstract

User-contributed comments are one of the hallmarks of the Social Web, widely adopted across social media sites and mainstream news providers alike. While comments encourage higher-levels of user engagement with online media, their wide success places new burdens on users to process and assimilate the perspectives of a huge number of user-contributed perspectives. Toward overcoming this problem we study in this paper the comment summarization problem: for a set of n user-contributed comments associated with an online resource, select the best top-k comments for summarization. In this paper we propose (i) a clustering-based approach for identifying correlated groups of comments; and (ii) a precedence-based ranking framework for automatically selecting informative user-contributed comments. We find that in combination, these two salient features yield promising results.

Topics & Concepts

Automatic summarizationSalientComputer scienceMainstreamSocial mediaRanking (information retrieval)Set (abstract data type)Cluster analysisWorld Wide WebUser engagementProcess (computing)Resource (disambiguation)Information retrievalData scienceArtificial intelligencePolitical scienceOperating systemLawProgramming languageComputer networkTopic ModelingSentiment Analysis and Opinion MiningWeb Data Mining and Analysis