A multi-perspective approach for analyzing long-running live events on social media. A case study on the “Big Four” international fashion weeks

Q1 Social Sciences Online Social Networks and Media Pub Date : 2021-07-01 DOI:10.1016/j.osnem.2021.100140
Alireza Javadian Sabet , Marco Brambilla , Marjan Hosseini
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引用次数: 5

Abstract

In the last few years, thanks to the emergence of Web 2.0, social media has made the concept of online live events possible. Users participate more and more in long-running recurring events in social media by sharing their experiences and desires. In the last few years, thanks to the emergence of Web 2.0, social media has made the concept of online live events possible. Users participate more and more in long-running recurring events in social media by sharing their experiences and desires. This work introduces long-running live events (LRLEs), as a type of activity that span physical spaces and digital ecosystems, including social media. LRLEs encompass several individuals, organizations, and brands collaborating/competing in the same event. This provides unprecedented opportunities to understand the dynamics and behavior of event-oriented participation, through collection and analysis of data of user behaviors enabled by the Web platform, where most of the digital traces are left by users. What makes this setting interesting is that the behaviors that are traced are not focused only on one individual brand or organization, and thus allows one to understand and compare the respective roles and influence in a defined setting. In this paper we provide a high-level and multi-perspective roadmap to mine, model, and study LRLEs. Among the various aspects, we develop a multi-modal approach to solve the problem of post popularity prediction that exploits potentially influential factors within LRLE. We employ two methods for implementing feature selection, together with an automated grid search for optimizing hyper-parameters in various regression methods.

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用于分析社交媒体上长期运行的实时事件的多视角方法。以“四大”国际时装周为例
在过去的几年里,由于Web 2.0的出现,社交媒体使在线现场活动的概念成为可能。用户通过分享自己的经历和愿望,越来越多地参与到社交媒体上长期重复发生的事件中。在过去的几年里,由于Web 2.0的出现,社交媒体使在线现场活动的概念成为可能。用户通过分享自己的经历和愿望,越来越多地参与到社交媒体上长期重复发生的事件中。这项工作介绍了长期运行的现场活动(LRLEs),作为一种跨越物理空间和数字生态系统的活动,包括社交媒体。LRLEs包括在同一赛事中合作/竞争的多个个人、组织和品牌。这为了解面向事件的参与的动态和行为提供了前所未有的机会,通过收集和分析Web平台支持的用户行为数据,其中大多数数字痕迹是由用户留下的。这种设置的有趣之处在于,所追踪的行为并不只关注于单个品牌或组织,因此可以让人们理解和比较在特定设置中各自的角色和影响。在本文中,我们提供了一个高层次的、多角度的路线图来挖掘、建模和研究LRLEs。在各个方面中,我们开发了一种多模式方法来解决利用LRLE内部潜在影响因素的后流行预测问题。我们采用了两种方法来实现特征选择,以及自动网格搜索来优化各种回归方法中的超参数。
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来源期刊
Online Social Networks and Media
Online Social Networks and Media Social Sciences-Communication
CiteScore
10.60
自引率
0.00%
发文量
32
审稿时长
44 days
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