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Title: | Fast and efficient methods to estimate centrality rank of the nodes in complex networks |
Authors: | Saxena, A. |
Issue Date: | 18-Jun-2019 |
Abstract: | Datasets pertaining to the network of relationships between entities have been of interest to computer scientists ever since the data of the World Wide Web was made available for scientific scrutiny. We are today equipped with the real-world datasets of several complex networks, such as Facebook, Twitter, WWW, collaboration network, etc. In a complex network, objects are represented by nodes, and the relationship between the objects is represented by an edge connecting them. These nodes in a complex network can be ranked based on their importance. Since the term importance is contextual, scientists have defined various application specific centrality measures namely degree centrality, closeness centrality, betweenness centrality, eigenvector centrality, Katz centrality, PageRank, coreness, and so on. In real-life applications, one is mainly interested in the relative importance of a node concerning the top-ranked node and the existing methods use the computation of centrality measure as a means to rank the nodes. The classical ranking method will compute the centrality value of all the nodes and will compare them to get the rank of an interested node. The time complexity of the classical method is very high in case of large-scale complex networks. This calls for a need to explore possibilities to compute the rank of a node without computing the centrality value of all the nodes. In this work, we aim to propose fast and efficient methods to estimate the global centrality rank of a node without computing the centrality value of all the nodes. The proposed methods are based on the structural properties of centrality measures or sampling techniques. The main contributions of the thesis are listed below. 1. Methods to estimate the degree rank of a node without collecting the entire network. The proposed methods are based on the degree-distribution characteristics of the networks and sampling techniques. 2. Heuristic methods to estimate the closeness rank of a node in O(m) time complexity versus the classical ranking method having the time complexity O(n m), where n represents the total number of nodes, and m represents the total number of edges in the network. 3. A method to estimate the shell-index of a node using local information. We propose hill-climbing based methods to identify top-ranked nodes using the proposed estimator. We further use the proposed estimator to estimate the rank of a node without having the entire network. The proposed methods have been simulated on synthetic networks as well as on real-world networks. We will discuss the efficiency and feasibility of these approaches in different contexts. |
URI: | http://localhost:8080/xmlui/handle/123456789/1296 |
Appears in Collections: | Year-2018 |
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