SIAISOC-PHApr 30, 2013

Challenges on Probabilistic Modeling for Evolving Networks

arXiv:1304.7820v22 citations
AI Analysis

It addresses the need for handling dynamics and uncertainty in emerging networks like wireless sensor and social networks, but it is incremental as a survey.

This paper surveys probabilistic modeling approaches for evolving networks, identifying new challenges in applying these models to network performance, management, and security.

With the emerging of new networks, such as wireless sensor networks, vehicle networks, P2P networks, cloud computing, mobile Internet, or social networks, the network dynamics and complexity expands from system design, hardware, software, protocols, structures, integration, evolution, application, even to business goals. Thus the dynamics and uncertainty are unavoidable characteristics, which come from the regular network evolution and unexpected hardware defects, unavoidable software errors, incomplete management information and dependency relationship between the entities among the emerging complex networks. Due to the complexity of emerging networks, it is not always possible to build precise models in modeling and optimization (local and global) for networks. This paper presents a survey on probabilistic modeling for evolving networks and identifies the new challenges which emerge on the probabilistic models and optimization strategies in the potential application areas of network performance, network management and network security for evolving networks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes