Litcius/Paper detail

Large-Scale Community Detection on YouTube for Topic Discovery and Exploration

Ullas Gargi, Wenjun Lu, Vahab Mirrokni, Sang‐Ho Yoon

2021Proceedings of the International AAAI Conference on Web and Social Media91 citationsDOIOpen Access PDF

Abstract

Detecting coherent, well-connected communities in large graphs provides insight into the graph structure and can serve as the basis for content discovery. Clustering is a popular technique for community detection but global algorithms that examine the entire graph do not scale. Local algorithms are highly parallelizable but perform sub-optimally, especially in applications where we need to optimize multiple metrics. We present a multi-stage algorithm based on local-clustering that is highly scalable, combining a pre-processing stage, a lo- cal clustering stage, and a post-processing stage. We apply it to the YouTube video graph to generate named clusters of videos with coherent content. We formalize coverage, co- herence, and connectivity metrics and evaluate the quality of the algorithm for large YouTube graphs. Our use of local algorithms for global clustering, and its implementation and practical evaluation on such a large scale is a first of its kind.

Topics & Concepts

Parallelizable manifoldComputer scienceCluster analysisScalabilityClustering coefficientGraphData miningScale (ratio)Theoretical computer scienceArtificial intelligenceAlgorithmGeographyCartographyDatabaseComplex Network Analysis TechniquesPeer-to-Peer Network TechnologiesCaching and Content Delivery
Large-Scale Community Detection on YouTube for Topic Discovery and Exploration | Litcius