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Detecting shared communities in social networks algorithmically

Detecting shared communities in social networks algorithmically

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Detecting shared communities in social networks algorithmically involves the use of graph theory and clustering algorithms to identify groups of individuals in a social network that are closely connected and share common interests or characteristics. The algorithmic approach to community detection can be broken down into the following steps: Graph construction: A social network can be represented as a graph where nodes represent individuals and edges represent connections between them. A graph can be constructed based on the relationships between individuals in the network.Node degree calculation: The degree of a node is the number of connections it has in the network. This information can be used to identify individuals who are highly connected and potentially part of a community.Community detection: Clustering algorithms can be applied to the graph to group nodes that are highly connected and have similar characteristics or interests. There are many algorithms that can be used for community detection, such as the Girvan-Newman algorithm, the Louvain algorithm, and the Info map algorithm.Community analysis: Once communities have been detected, various measures can be used to analyze them. For example, the modularity of a community can be calculated to measure how well the group is connected internally and how different it is from the rest of the network. Other measures, such as centrality and density, can also be used to characterize communities.Overall, the algorithmic approach to community detection in social networks can help identify shared interests, behaviors, and characteristics of individuals in a network, which can be useful for targeted marketing, social science research, and other applications.

Author: Himansu Sekhar Pattanayak
Publisher: Self Publish
Published: 04/10/2023
Pages: 152
Binding Type: Paperback
Weight: 0.47lbs
Size: 9.00h x 6.00w x 0.33d
ISBN: 9781805280576
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