This paper proposes a novel method to predict increases in YouTube viewcount driven from the Twitter social network. Specifically, we aim to predict two types of viewcount increases: a sudden increase in viewcount (named as JUMP), and the viewcount shortly after the upload of a new video (named as EARLY). Experiments on hundreds of thousands of videos and millions of tweets show that Twitter-derived features alone can predict whether a video will be in the top 5% for EARLY popularity with 0.7 Precision@100. Furthermore, our results reveal that while individual influence is indeed important for predicting how Twitter drives YouTube views, it is a diversity of interest from the most active to the least active Twitter users mentioning a video ...
ABSTRACT of the content itself. Other efforts, instead, analyzed social We here investigate what dri...
Video watching had emerged as one of the most frequent media activities on the Internet. Yet, little...
We discuss an approach for predicting microscopic (individual) and macroscopic (collective) user beh...
This paper proposes a novel method to predict increases in YouTube viewcount driven from the Twitter...
We combine user-centric data from Twitter with video-centric data from YouTube to analyze who watche...
– Predicting popularity is an important open problem in social media. – Most current methods operate...
This paper proposes a new representation to explain and predict popularity evolution in social media...
Abstract—The goal of this paper is to study the behaviour of viewcount in YouTube. We first propose ...
Social networks are ubiquitous in the modern world for propagating and acquiring information. Thus, ...
On social media platforms, like Twitter, users are often interested in gaining more influence and po...
Understanding and predicting the popularity of online itemsis an important open problem in social me...
Video dissemination through sites such as YouTube can have widespread impacts on opinions, thoughts,...
Understanding the popularity evolution of online media has become an important research topic. Ther...
User profiles constructed on Social Web platforms are often motivated by the need to maximise user re...
Accurately predicting the popularity of user generated content (UGC) is very valuable to content pro...
ABSTRACT of the content itself. Other efforts, instead, analyzed social We here investigate what dri...
Video watching had emerged as one of the most frequent media activities on the Internet. Yet, little...
We discuss an approach for predicting microscopic (individual) and macroscopic (collective) user beh...
This paper proposes a novel method to predict increases in YouTube viewcount driven from the Twitter...
We combine user-centric data from Twitter with video-centric data from YouTube to analyze who watche...
– Predicting popularity is an important open problem in social media. – Most current methods operate...
This paper proposes a new representation to explain and predict popularity evolution in social media...
Abstract—The goal of this paper is to study the behaviour of viewcount in YouTube. We first propose ...
Social networks are ubiquitous in the modern world for propagating and acquiring information. Thus, ...
On social media platforms, like Twitter, users are often interested in gaining more influence and po...
Understanding and predicting the popularity of online itemsis an important open problem in social me...
Video dissemination through sites such as YouTube can have widespread impacts on opinions, thoughts,...
Understanding the popularity evolution of online media has become an important research topic. Ther...
User profiles constructed on Social Web platforms are often motivated by the need to maximise user re...
Accurately predicting the popularity of user generated content (UGC) is very valuable to content pro...
ABSTRACT of the content itself. Other efforts, instead, analyzed social We here investigate what dri...
Video watching had emerged as one of the most frequent media activities on the Internet. Yet, little...
We discuss an approach for predicting microscopic (individual) and macroscopic (collective) user beh...