Title :
Computer science fields as ground-truth communities: Their impact, rise and fall
Author :
Chakraborty, Tamal ; Sikdar, Sujit ; Tammana, Vihar ; Ganguly, Niloy ; Mukherjee, Arjun
Author_Institution :
Dept. of Comput. Sci. & Eng., Indian Inst. of Technol., Kharagpur, Kharagpur, India
Abstract :
Study of community in time-varying graphs has been limited to its detection and identification across time. However, presence of time provides us with the opportunity to analyze the interaction patterns of the communities, understand how each individual community grows/shrinks, becomes important over time. This paper, for the first time, systematically studies the temporal interaction patterns of communities using a large scale citation network (directed and unweighted) of computer science. Each individual community in a citation network is naturally defined by a research field - i.e., acting as ground-truth - and their interactions through citations in real time can unfold the landscape of dynamic research trends in the computer science domain over the last fifty years. These interactions are quantified in terms of a metric called inwardness that captures the effect of local citations to express the degree of authoritativeness of a community (research field) at a particular time instance. Several arguments to unveil the reasons behind the temporal changes of inwardness of different communities are put forward using exhaustive statistical analysis. The measurements (importance of field) are compared with the project funding statistics of NSF and it is found that the two are in sync. We believe that this measurement study with a large real-world data is an important initial step towards understanding the dynamics of cluster-interactions in a temporal environment. Note that this paper, for the first time, systematically outlines a new avenue of research that one can practice post community detection.
Keywords :
citation analysis; computer science; social networking (online); statistical analysis; NSF; authoritativeness; cluster-interactions; computer science fields; directed large scale citation network; exhaustive statistical analysis; ground-truth communities; inwardness metric; local citations; temporal interaction patterns; time-varying graphs; unweighted large scale citation network; Communities; Computer science; Databases; Image edge detection; Market research; Real-time systems; Synchronization; citation network; community analysis; computer science; ground-truth communities; temporal network;
Conference_Titel :
Advances in Social Networks Analysis and Mining (ASONAM), 2013 IEEE/ACM International Conference on
Conference_Location :
Niagara Falls, ON