2023
DOI: 10.3390/electronics12040837
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A Dynamic Short Cascade Diffusion Prediction Network Based on Meta-Learning-Transformer

Abstract: The rise of social networks has greatly contributed to creating information cascades. Over time, new nodes are added to the cascade network, which means the cascade network is dynamically variable. At the same time, there are often only a few nodes in the cascade network before new nodes join. Therefore, it becomes a key task to predict the diffusion after the dynamic cascade based on the small number of nodes observed in the previous period. However, existing methods are limited for dynamic short cascades and… Show more

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