Detecting community on social networks with fast and optimal online clustering algorithms

Dublin Core

Title

Detecting community on social networks with fast and optimal online clustering algorithms

Subject

Clustering
Community detection
Crow search algorithm
Data stream
Social networks

Description

Social networks have become an essential part of our lives today, at least in their virtual dimension, and the image of the web world is almost impossible without the presence of this pervasive phenomenon. These networks are one of the important components of the information infrastructure, such as twitter networks, facebook networks, and so on. In the analysis of social networks, one of the important issues is the detection of community. Each community is a group of network nodes so that the connection between nodes within the group with each other is more than their connection with other network nodes. Various methods have been proposed for community detection. One of the existing methods is based on data stream clustering. The output data of a social network can be modeled with a data stream. Fast and accurate clustering of this data stream can be very effective in the detection of community. In this research, using a fast and accurate online clustering algorithm, the community is detected. The simulation results indicate that the method proposed in this research can calculate the number of clusters optimally and perform better than similar methods. The proposed algorithm can be used in many other applications.

Creator

Muneer Sameer Gheni Mansoor1, Hasanain Abdalridha Abed Alshadoodee2, Rahim Muhammad Alabdali2, Ahmed Dheyaa Radhi3, Poh Soon JosephNg4, Jamal Fadhil Tawfeq5

Source

Journal homepage: http://telkomnika.uad.ac.id

Date

Dec 9, 2023

Contributor

PERI IRAWAN

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Muneer Sameer Gheni Mansoor1, Hasanain Abdalridha Abed Alshadoodee2, Rahim Muhammad Alabdali2, Ahmed Dheyaa Radhi3, Poh Soon JosephNg4, Jamal Fadhil Tawfeq5, “Detecting community on social networks with fast and optimal online clustering algorithms,” Repository Horizon University Indonesia, accessed January 11, 2026, https://repository.horizon.ac.id/items/show/9888.