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CasDacGCN: A Dynamic Attention-Calibrated Graph Convolutional Network for Information Popularity Prediction.

Bofeng Zhang1,2, Yanlin Zhu2, Zhirong Zhang2

  • 1School of Computer Science and Technology, Kashi University, Kashi 844000, China.

Entropy (Basel, Switzerland)
|October 28, 2025
PubMed
Summary
This summary is machine-generated.

Predicting information popularity on social networks is crucial. Our new CasDacGCN model effectively captures temporal and structural dynamics for more accurate cascade prediction.

Keywords:
graph convolutional networkinformation diffusioninformation popularity predictiontemporal graph

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Area of Science:

  • Social Network Analysis
  • Information Diffusion Modeling

Background:

  • Accurate prediction of information diffusion on social platforms is vital.
  • Existing graph neural network methods struggle with temporal dynamics and sparse cascades.

Purpose of the Study:

  • To propose a novel model, CasDacGCN, for enhanced information popularity prediction.
  • To address limitations in capturing spatiotemporal features and cascade structures.

Main Methods:

  • Developed Cascading Dynamic attention-calibrated Graph Convolutional Network (CasDacGCN).
  • Integrated snapshot-level encoding, global temporal modeling, and cross-attention.
  • Employed a hypernetwork-based sample-wise calibration strategy for adaptive representation learning.

Main Results:

  • CasDacGCN demonstrated superior performance in popularity prediction.
  • The model effectively fused spatiotemporal features and learned adaptive representations.
  • Consistent outperformance on two real-world datasets was observed.

Conclusions:

  • CasDacGCN offers an effective solution for information popularity prediction.
  • The model's architecture successfully models multi-scale diffusion patterns.
  • Validated effectiveness in real-world scenarios with complex cascade dynamics.