I am really confused about the differences between the Eigen-vector Centrality Measure and Betweenness Centrality. I am hoping to do an analysis of a nodes importance in the network (i.e nodes with the highest influence) i tried both analysis but i had different results. In which cases should i use them ? I was hoping to find this very important nodes and simulate and disaster to see how the network response to their absence.
The eigenvector approach is an effort to find the most central actors (i.e. those with the smallest farness from others) in terms of the "global" or "overall" structure of the network, and to pay less attention to patterns that are more "local." The method used to do this (factor analysis) is beyond the scope of the current text. In a general way, what factor analysis does is to identify "dimensions" of the distances among actors. The location of each actor with respect to each dimension is called an "eigenvalue," and the collection of such values is called the "eigenvector." Usually, the first dimension captures the "global" aspects of distances among actors; second and further dimensions capture more specific and local sub-structures.
Betweenness centrality Suppose that I want to influence you by sending you information, or make a deal to exchange some resources. But, in order to talk to you, I must go through an intermediary. For example, let's suppose that I wanted to try to convince the Chancellor of my university to buy me a new computer. According to the rules of our bureaucratic hierarchy, I must forward my request through my department chair, a dean, and an executive vice chancellor. Each one of these people could delay the request, or even prevent my request from getting through. This gives the people who lie "between" me and the Chancellor power with respect to me. To stretch the example just a bit more, suppose that I also have an appointment in the school of business, as well as one in the department of sociology. I might forward my request to the Chancellor by both channels. Having more than one channel makes me less dependent, and, in a sense, more powerful.
For networks with binary relations, Freeman created some measures of the centrality of individual actors based on their betweenness, as well overall graph centralization. Freeman, Borgatti, and White extended the basic approach to deal with valued relations.