scholarly journals AN INFLUENTIAL NODE METRICS APPROACH FOR QUANTIFYING LINK ANALYSIS IN SOCIAL NETWORK

Author(s):  
Rohini A
2017 ◽  
Vol 29 (2) ◽  
pp. 359-372 ◽  
Author(s):  
Guojie Song ◽  
Yuanhao Li ◽  
Xiaodong Chen ◽  
Xinran He ◽  
Jie Tang

2008 ◽  
Vol 44 (4) ◽  
pp. 1624-1633 ◽  
Author(s):  
José Luis Ortega ◽  
Isidro F. Aguillo
Keyword(s):  

Author(s):  
Swaroop Dinakar ◽  
Kathryn G. Tippey ◽  
Trey Roady ◽  
Julien Edery ◽  
Thomas K. Ferris

As part of the Nuclear Regulatory Commission’s recertification of Texas A&M University’s AGN-201M nuclear reactor, a human factors analysis was performed to evaluate the drawbacks of the current system and make design recommendations for a new console layout. The process involved three phases. Background development consisted of a literature review and expert interviews (both structured and unstructured). Process analysis was performed using hierarchical task analysis, critical incident analysis, and heuristic usability walkthroughs. Control panel redesign utilized an expanded version of link analysis through adding modern social networking analysis techniques. While social network analysis has previously been used for design, particular emphasis in this paper is placed on the novel application of faction and centrality analysis to identify group categories for console redesign.


Author(s):  
Sarita Azad ◽  
Sushma Devi

Social network analysis is an essential means to uncover and examine infectious contact relations between individuals. This paper aims to investigate the spread of coronavirus disease (COVID-19) from international to the national level and find a few super spreaders which played a central role in the transmission of disease in India. Our network metrics calculated from 30 January to 6 April 2020 revealed that the maximum numbers of connections were established from Dubai (degree-144) and UK (degree-64). These two countries played a crucial role in diffusing the disease in Indian states. The eigenvector centrality of Dubai is found to be the highest, and this marked it the most influential node. However, based on the modularity class, we found that the different clusters were formed across Indian states which demonstrated the forming of a multi-layered social network structure.A significant increase in the confirmed cases was reported during the first lockdown 1.0 (22 March 2020) primarily attributed to a gathering in Delhi Religious Conference (DRC) known as Tabliqui Jamaat. As of 6 April 2020, the overall structure of the network has encompassed local transmission, and it was significantly seen in the states like Gujarat, Rajasthan, and Karnataka. An important conclusion drawn from the presented social network reveals that the COVID-19 spread till 6 April was mainly due to the local transmission across Indian states. The timely quarantine of infected cases in DRC has not led it to spread at the level of community transmission.


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