Social Event Detection with Interaction Graph Modeling

Date

2012

Authors

Wang, Yanxiang
Sundaram, Hari
Xie, Lexing

Journal Title

Journal ISSN

Volume Title

Publisher

Association for Computing Machinery Inc (ACM)

Abstract

This paper focuses on detecting social, physical-world events from photos posted on social media sites. The problem is important: cheap media capture devices have significantly increased the number of photos shared on these sites. The main contribution of this paper is to incorporate online social interaction features in the detection of physical events. We believe that online social interaction reflect important signals among the participants on the "social affinity" of two photos, thereby helping event detection. We compute social affinity via a random-walk on a social interaction graph to determine similarity between two photos on the graph. We train a support vector machine classifier to combine the social affinity between photos and photo-centric metadata including time, location, tags and description. Incremental clustering is then used to group photos to event clusters. We have very good results on two large scale real-world datasets: Upcoming and MediaEval. We show an improvement between 0.06-0.10 in F1 on these datasets.

Description

Keywords

Keywords: Data sets; Event detection; Incremental clustering; Interaction graphs; Media capture; Real-world datasets; Similarity metrics; Social events; Social interactions; Social media; Metadata; Social networking (online); Social sciences; Image retrieval event detection; similarity metric; social media

Citation

Source

MM 2012 - Proceedings of the 20th ACM International Conference on Multimedia

Type

Conference paper

Book Title

Entity type

Access Statement

License Rights

Restricted until

2037-12-31