A Latent Social Approach to YouTube Popularity Prediction
Amandianeze O Nwana, Salman Avestimehr, Tsuhan Chen

TL;DR
This paper introduces a novel social-based approach for predicting YouTube video popularity within a campus network, leveraging latent social network inference and epidemiological models to improve caching efficiency.
Contribution
It combines social network inference and virus propagation models to enhance popularity prediction accuracy over traditional caching strategies.
Findings
14% improvement in cache hit rate
Effective modeling of video sharing behavior
Integration of social diffusion with caching strategies
Abstract
Current works on Information Centric Networking assume the spectrum of caching strategies under the Least Recently/ Frequently Used (LRFU) scheme as the de-facto standard, due to the ease of implementation and easier analysis of such strategies. In this paper we predict the popularity distribution of YouTube videos within a campus network. We explore two broad approaches in predicting the popularity of videos in the network: consensus approaches based on aggregate behavior in the network, and social approaches based on the information diffusion over an implicit network. We measure the performance of our approaches under a simple caching framework by picking the k most popular videos according to our predicted distribution and calculating the hit rate on the cache. We develop our approach by first incorporating video inter-arrival time (based on the power-law distribution governing the…
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