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Unraveling Contagion Origins: Maximum-Likelihood Estimation in Markovian Spreading Models


核心概念
Effective maximum-likelihood estimation for identifying the source of contagion in networks.
要約

The content discusses the importance of identifying the source of epidemic-like spread in networks, focusing on rumor source detection. It introduces a probabilistic approach using maximum likelihood algorithms and starlike tree approximations to detect sources effectively. The paper highlights the utility of the Gamma function for analyzing likelihood ratios between nodes and evaluates algorithmic effectiveness in diverse network scenarios.

  1. Introduction:
  • Epidemic-like spreading is crucial in network science.
  • Malicious information propagation poses cybersecurity challenges.
  1. Rumor Source Detection:
  • Identifying sources crucial for eradicating viruses and misinformation.
  • COVID-19 infodemic highlighted challenges in online misinformation control.
  1. Maximum Likelihood Estimation:
  • Problem focuses on identifying spreading event origins from snapshot data.
  • Rumor centrality method introduced for maximum likelihood estimation.
  1. General Network Topology:
  • Special cases with optimal solutions discussed for specific graph structures.
  1. Probabilistic Approach:
  • Continuous-time SI model used for rumor source detection.
  1. Starlike Tree Approximation:
  • Novel method proposed for general graphs beyond tree networks.
  1. Performance Assessment:
  • Proposed algorithm shows robust results across different random graphs.
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統計
Utilizing snapshot data, we apply a probabilistic approach, focusing on the graph boundary and observed time, to detect sources via an effective maximum likelihood algorithm. The COVID-19 pandemic marked a unique global crisis, intertwining epidemics with an overwhelming surge of misinformation. The problem focuses on identifying the origin of a spreading event given a single snapshot depicting connections among individuals labeled as "infected." For simplicity, nodes that acquire malicious information are referred to as infected nodes. The concept of rumor centrality was introduced as a novel method for addressing maximum likelihood estimation challenges. General network topology remains unsolved with only a few special cases having optimal solutions. Some heuristics based on network centrality have demonstrated good performance since initial work by [8], [9]. Comprehensive evaluations confirm algorithmic effectiveness in diverse network scenarios advancing rumor source detection strategies.
引用
"The challenge lies in tracing the source from a snapshot observation of infected nodes." "We highlight the utility of the Gamma function for analyzing asymptotic behavior." "Our formulation provides valuable insights into network resilience under complex system behavior at vast scales."

抽出されたキーインサイト

by Pei-Duo Yu,C... 場所 arxiv.org 03-25-2024

https://arxiv.org/pdf/2403.14890.pdf
Unraveling Contagion Origins

深掘り質問

How can hyper-Erlang distributions be utilized to model rumor propagation times?

Hyper-Erlang distributions can be used to model the inter-event times between consecutive instances of rumor transmission in a network. By fitting hyper-Erlang distributions to empirical data on rumor propagation times, we can capture the varying speeds at which rumors spread through different edges in the network. This modeling approach allows for a more flexible representation of the shapes of inter-event time distributions, enabling a better understanding of how rumors propagate and evolve over time.

What are some potential applications of phase-type distributions in modeling rumor dynamics?

Phase-type distributions can be applied to model complex stochastic processes involved in rumor dynamics by describing transitions between different states or stages of rumor dissemination. These states could represent various phases such as initial propagation, variations in information, and eventual fade-out of rumors. By using phase-type distributions, we can analyze and predict the transitions between these states, providing insights into how rumors evolve within networks and helping us understand factors that influence their spread.

How does the starlike tree approximation compare to existing methods in detecting rumor sources accurately?

The starlike tree approximation method offers an effective way to detect rumor sources accurately compared to existing methods like BFS-based centrality measures or distance centrality algorithms. In scenarios where underlying networks exhibit starlike structures with central nodes having significant influence (e.g., social media influencers), the starlike tree approximation leverages information from boundary nodes effectively. This approach considers spreading dynamics along paths from leaf nodes towards central hubs, leading to improved accuracy in identifying source nodes even when infection ratios are moderate. The method's resistance against boundary effects and utilization of phase-type distribution characteristics contribute to its superior performance for accurate detection of rumor sources across various network models like Random Trees and Erdos-Renyi graphs.
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