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Mechanisms of the Information Cocoon Effect in Social Networks

Uses a weighted directed network to model information reception, processing, diffusion, and opinion feedback, combining diffusion dynamics with structural analysis to study anomalous amplification, key-node identification, and the formation and intervention of information cocoons.

  • Complex Networks
  • Information Diffusion
  • SEIR
  • LeaderRank
  • k-core

Problem

Node influence, interests, recommendation feedback, and community structure jointly reshape diffusion paths: local signals can be anomalously amplified into a “scream effect,” while persistent opinion reinforcement can form information cocoons. A unified model must therefore capture diffusion dynamics, network structure, and feedback-driven opinion change.

Mathematical and algorithmic approach

The model builds a weighted directed network from node influence, edge weights, and interest thresholds; SEIR dynamics and impulse functions describe diffusion scale and anomalous amplification, while LeaderRank and k-core identify influential nodes and structural intervention points. The information-cocoon extension introduces opinion values, edge-weight feedback, and an error-backpropagation-inspired update rule to model the chain of information reception, processing, and transmission.

My contribution

Served as project lead across both stages, responsible for network modeling, diffusion and feedback mechanisms, simulation, structural analysis, and manuscript preparation.

Results and outputs

The work produced the paper “Research of the propagation mechanism of scream effect and its simulation”; the university Undergraduate Research Development Program project “Mechanisms of the Information Cocoon Effect in Social Networks” concluded with an Excellent rating. The research was supported by the 2023 China Undergraduate Mathematical Contest in Modeling Post-Competition Research Program.

Workflow

  1. 01

    Network representation

    Represent the social network through influence, edge weights, and interest thresholds.

  2. 02

    Diffusion dynamics

    Combine SEIR and impulse mechanisms to simulate diffusion and anomalous amplification.

  3. 03

    Opinion feedback and cocoon evolution

    Model the evolution of information cocoons through opinion values, edge weights, and feedback updates.

  4. 04

    Structural diagnosis

    Use LeaderRank and k-core to identify key nodes and evaluate interventions.