Estimating Attention Flow in Online Video Networks
Siqi Wu, Marian-Andrei Rizoiu, Lexing Xie

TL;DR
This paper analyzes how human attention is distributed over large-scale online video networks, specifically YouTube, and introduces a model to estimate attention flow influenced by recommendation links.
Contribution
It constructs a large YouTube video network, analyzes its structure, and proposes a model to predict video popularity considering network effects and attention dynamics.
Findings
Core videos receive 82.6% of views
Recommendation links contribute to attention inequality
Proposed model outperforms baselines in predicting popularity
Abstract
Online videos have shown tremendous increase in Internet traffic. Most video hosting sites implement recommender systems, which connect the videos into a directed network and conceptually act as a source of pathways for users to navigate. At present, little is known about how human attention is allocated over such large-scale networks, and about the impacts of the recommender systems. In this paper, we first construct the Vevo network -- a YouTube video network with 60,740 music videos interconnected by the recommendation links, and we collect their associated viewing dynamics. This results in a total of 310 million views every day over a period of 9 weeks. Next, we present large-scale measurements that connect the structure of the recommendation network and the video attention dynamics. We use the bow-tie structure to characterize the Vevo network and we find that its core component…
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Taxonomy
TopicsComplex Network Analysis Techniques · Caching and Content Delivery · Recommender Systems and Techniques
