DocumentCode
1823597
Title
Clustering memes in social media
Author
Ferrara, Emilio ; JafariAsbagh, Mohsen ; Varol, Onur ; Qazvinian, Vahed ; Menczer, Filippo ; Flammini, A.
Author_Institution
Center for Complex Networks & Syst. Res., Indiana Univ., Bloomington, IN, USA
fYear
2013
fDate
25-28 Aug. 2013
Firstpage
548
Lastpage
555
Abstract
The increasing pervasiveness of social media creates new opportunities to study human social behavior, while challenging our capability to analyze their massive data streams. One of the emerging tasks is to distinguish between different kinds of activities, for example engineered misinformation campaigns versus spontaneous communication. Such detection problems require a formal definition of meme, or unit of information that can spread from person to person through the social network. Once a meme is identified, supervised learning methods can be applied to classify different types of communication. The appropriate granularity of a meme, however, is hardly captured from existing entities such as tags and keywords. Here we present a framework for the novel task of detecting memes by clustering messages from large streams of social data. We evaluate various similarity measures that leverage content, metadata, network features, and their combinations. We also explore the idea of pre-clustering on the basis of existing entities. A systematic evaluation is carried out using a manually curated dataset as ground truth. Our analysis shows that pre-clustering and a combination of heterogeneous features yield the best trade-off between number of clusters and their quality, demonstrating that a simple combination based on pairwise maximization of similarity is as effective as a non-trivial optimization of parameters. Our approach is fully automatic, unsupervised, and scalable for real-time detection of memes in streaming data.
Keywords
learning (artificial intelligence); meta data; pattern classification; pattern clustering; social networking (online); communication classification; ground truth; heterogeneous features; human social behavior; information unit; massive data streams; meme clustering; meme granularity; messages clustering; metadata; network features; pairwise maximization; preclustering; similarity measures; social data streams; social media; social network; supervised learning methods; Algorithm design and analysis; Clustering algorithms; Conferences; Media; Twitter; Vectors;
fLanguage
English
Publisher
ieee
Conference_Titel
Advances in Social Networks Analysis and Mining (ASONAM), 2013 IEEE/ACM International Conference on
Conference_Location
Niagara Falls, ON
Type
conf
Filename
6785757
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