Author :
Qi, Xingqin ; Christensen, Kyle ; Duval, Robert ; Fuller, Edgar ; Spahiu, Arian ; Wu, Qin ; Zhang, Cun-Quan
Author_Institution :
Dept. of Math., West Virginia Univ., Morgantown, WV, USA
Abstract :
Extremist political movements have proliferated on the web in recent years due to the advent of minimal publication costs coupled with near universal access, resulting in what appears to be an abundance of groups that hover on the fringe of many socially divisive issues. Whether white-supremacist, neo- Nazi, anti-abortion, black separatist, radical Christian, animal rights, or violent environmentalists, all have found a home (and voice) on the Web. These groups form social networks whose ties are predicated primarily on shared political goals. Little is known about these groups, their interconnections, their animosities, and most importantly, their growth and development and studies such as the Dark Web Project, while considering domestic extremists, have focused primarily on international terrorist groups. Yet here in the US, there has been a complex social dynamic unfolding as well. While left-wing radicalism declined throughout the 80s and 90s, right wing hate groups began to flourish. Today, the web offers a place for any brand of extremism, but little is understood about their current growth and development. While there is much to gain from in-depth studies of the content provided by these sites, there is also a surprising amount of information contained in their online network structure as manifested in links between and among these web sites. Our research follows the idea that much can be known about you by the company you keep. In this paper, we propose an approach to measure the intrinsic relationships (i.e., similarities) of a set of extremist web pages. In this model, the web presence of a group is thought of as a node in a social network and the links between these pages are the ties between groups. This approach takes the bi-directional hyperlink structure of web pages and, based on similarity scores, applies an effective multi-membership clustering algorithm known as the quasi clique merger method to cluster these web pages using a derived hierarchical- - tree. The experimental results show that this new similarity measurement and hierarchical clustering algorithm gives an improvement over traditional link based clustering methods.
Keywords :
Web services; interconnections; politics; social networking (online); statistical analysis; terrorism; Dark Web project; Web pages; animosities; bi-directional hyperlink structure; extremist political movements; hierarchical algorithm; interconnections; international terrorist groups; left-wing radicalism; multimembership clustering algorithm; online network structure; publication costs; quasi clique merger method; right wing hate groups; shared political goals; social networks; socially divisive issues; universal access; web sites; Algorithm design and analysis; Clustering algorithms; Communities; Couplings; Joining processes; Social network services; Web pages;