基于概念漂移的社交多媒体流行度预测

Shih-Hong Jheng, Cheng-te Li, Hsi-Lin Chen, M. Shan
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引用次数: 3

摘要

像Twitter和Plurk这样的微博服务允许用户在网络社交世界中轻松访问和分享不同类型的社交多媒体(例如图像和视频)。然而,信息超载发生在用户身上,阻止他们接触流行和重要的数字内容。本文研究了微博社交网络短消息中嵌入的社交多媒体的流行度预测问题。社交多媒体显示出一种属性,即它们可能会被持久地或周期性地重新共享,因此它们的受欢迎程度可能会在某个时候复活,并随着时间的推移而发展。我们利用概念漂移的概念来捕捉这一特性。我们用分类的方法来表述这个问题,并提出了解决再分享分类和人气评分分类的任务。设计并提取了信息扩散和显式多媒体元信息两类特征。我们开发了一个基于概念漂移的流行预测器,通过集成来自不同时间间隔的社交多媒体实例的多个训练分类器。关键在于动态确定分类器的集合权值。在Plurk数据上进行的实验表明,该算法在人气分类上具有较高的准确率,在流行社交媒体的检测上取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Popularity Prediction of Social Multimedia Based on Concept Drift
Microblogging services such as Twitter and Plurk allow users to easily access and share different types of social multimedia (e.g. images and videos) over the online social world. However, information overload happens to users and prohibits them from reaching popular and important digital contents. This paper studies the problem of predicting the popularity of social multimedia which is embedded in short messages of microblogging social networks. Social multimedia exhibits the property that they might be persistently or periodically re-shared and thus their popularity might resurrect at some time and evolve over time. We exploit the idea of concept drift to capture this property. We formulate the problem using classification, and propose to tackle the tasks of Re-share classification and Popularity Score classification. Two categories of features are devised and extracted, including information diffusion and explicit multimedia meta information. We develop a concept drift-based popularity predictor, by ensembling multiple trained classifiers from social multimedia instances in different time intervals. The key lies in dynamically determining the ensemble weights of classifiers. Experiments conducted on the Plurk data show the high accuracy on the popularity classification and the promising results on detecting popular social multimedia.
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