Detecting and labeling various research groups in the Information Systems (IS) field is crucial to understand the community. Building author collaboration networks and analyzing highly ranked historical publication records are straightforward to approach this goal. In this paper, we collect top IS journal papers to build multiple implicit coauthor networks. We study structural properties of networks, especially eigenvector centrality because it indicates the influence of a node. We propose a hierarchical community detection algorithm to identify different research groups. Topic modeling is applied to extract topics for each community. Our results show that the coauthor network of Decision Science Systems (DSS) journal has the highest level ...
This paper presents an algorithm and a tool for discovering scientific communities. Several approach...
Scientific research is often thought of as being conducted by individuals and small teams striving f...
<p>The file netscience.gml contains a coauthorship network of scientists<br>working on network theor...
This article presents a study that compares detected structural communities in a coauthorship networ...
From the social network perspective, this study explores the ontological structure of knowledge shar...
Fourth International Conference on Webometrics, Informetrics and Scientometrics & Ninth COLLNET Meet...
Community structure in scientific collaborationnetwork has become an important research area. Coauth...
Abstract—Collaboration networks arise when we map the connections between scientists which are forme...
Two layers of enriched information are constructed for communities: a paper-to-paper network based o...
A major means to encode and share scientific knowledge are publications, which cite each other and w...
Despite the longstanding nature of social network theory and its application to research on communic...
Co-authorship in publications within a discipline uncovers interesting properties of the analyzed fi...
The objective of this study is to apply collaborative networks to understanding the development proc...
© 2017 Elsevier Ltd The field of transportation research has been accelerating in the last decade. I...
Research topics and research communities are not disconnected from each other: communities and topic...
This paper presents an algorithm and a tool for discovering scientific communities. Several approach...
Scientific research is often thought of as being conducted by individuals and small teams striving f...
<p>The file netscience.gml contains a coauthorship network of scientists<br>working on network theor...
This article presents a study that compares detected structural communities in a coauthorship networ...
From the social network perspective, this study explores the ontological structure of knowledge shar...
Fourth International Conference on Webometrics, Informetrics and Scientometrics & Ninth COLLNET Meet...
Community structure in scientific collaborationnetwork has become an important research area. Coauth...
Abstract—Collaboration networks arise when we map the connections between scientists which are forme...
Two layers of enriched information are constructed for communities: a paper-to-paper network based o...
A major means to encode and share scientific knowledge are publications, which cite each other and w...
Despite the longstanding nature of social network theory and its application to research on communic...
Co-authorship in publications within a discipline uncovers interesting properties of the analyzed fi...
The objective of this study is to apply collaborative networks to understanding the development proc...
© 2017 Elsevier Ltd The field of transportation research has been accelerating in the last decade. I...
Research topics and research communities are not disconnected from each other: communities and topic...
This paper presents an algorithm and a tool for discovering scientific communities. Several approach...
Scientific research is often thought of as being conducted by individuals and small teams striving f...
<p>The file netscience.gml contains a coauthorship network of scientists<br>working on network theor...