BASWANI, Madhusudhana Rao, TANGIRALA, Jaya Lakshmi and BOYAPATI, Prasanthi (2025). Complex Network Analysis: Problems, Applications and Techniques. In: MOHAN, RNV Jagan, RAJU, BHVS Rama Krishnam, SEKHAR, V Chandra and PRASAD, TVKP, (eds.) Algorithms in Advanced Artificial Intelligence. Proceedings of International Conference on Algorithms in Advanced Artificial Intelligence (ICAAAI-2024). Boca Raton, CRC Press, 325-339. [Book Section]
Documents
36873:1184417
PDF (RRS? Version query)
CNA_Survey_Unidirected_LP_Centrality_Community.pdf - Accepted Version
Restricted to Repository staff only
CNA_Survey_Unidirected_LP_Centrality_Community.pdf - Accepted Version
Restricted to Repository staff only
Download (639kB)
Abstract
Complex networks, represented as graphs, serve as powerful models for understanding real-world systems composed of interacting entities. These networks offer valuable insights into both their structural and dynamic properties. This study concentrates on three fundamental aspects of complex network analysis: centrality, link prediction, and community detection. Centrality focuses on identifying influential nodes within the network, link prediction aims to forecast potential future connections, and community detection uncovers cohesive substructures. Through a thorough review of relevant literature, an exploration of practical applications, and an evaluation of benchmark datasets, this work presents a comprehensive analysis of these critical challenges and assesses the performance of widely utilized algorithms.
More Information
Metrics
Altmetric Badge
Dimensions Badge
Share
Actions (login required)
![]() |
View Item |


Tools
Tools
