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Muaz A. Niazi

Researcher at COMSATS Institute of Information Technology

Publications -  90
Citations -  1692

Muaz A. Niazi is an academic researcher from COMSATS Institute of Information Technology. The author has contributed to research in topics: Complex network & Complex adaptive system. The author has an hindex of 19, co-authored 90 publications receiving 1489 citations. Previous affiliations of Muaz A. Niazi include Bahria University & National University of Computer and Emerging Sciences.

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Agent-based computing from multi-agent systems to agent-based models: a visual survey

TL;DR: This paper uses Scientometric analysis to analyze all sub-domains of agent-based computing, and results include the identification of the largest cluster based on keywords, the timeline of publication of index terms, the core journals and key subject categories.
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Agent-based tools for modeling and simulation of self-organization in peer-to-peer, ad hoc, and other complex networks

TL;DR: It is demonstrated the effectiveness of NetLogo - a tool that has been widely used in the area of agent-based social simulation - in the modeling & simulation of complex networks such as pervasive computing, large-scale peer-to-peer systems, and networks involving considerable environment and human/animal/habitat interaction.
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A Novel Agent-Based Simulation Framework for Sensing in Complex Adaptive Environments

TL;DR: A novel formal agent-based simulation framework that uses formal specification as a means of clear description of wireless sensor networks sensing a complex adaptive environment and is applied to a boids model of self-organized flocking of animals monitored by a random deployment of proximity sensors.
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Towards a methodology for validation of centrality measures in complex networks.

TL;DR: It is discovered that as compared with other centrality measures, Eigenvector and Eccentricity Centralities were better able to identify important nodes.
Posted Content

Network Community Detection: A Review and Visual Survey

TL;DR: A visual survey of key literature using CiteSpace to identify the most influential, central, as well as active nodes using scientometric analyses and finds that Yong Wang is a pivot node with the highest centrality.