MUFM: A Mamba-Enhanced Feedback Model for Micro Video Popularity Prediction
The surge in micro-videos is transforming the concept of popularity. As researchers delve into vast multi-modal datasets, there is a growing interest in understanding the origins of this popularity and the forces driving its rapid expansion. Recent studies suggest that the virality of short videos i...
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Zusammenfassung: | The surge in micro-videos is transforming the concept of popularity. As
researchers delve into vast multi-modal datasets, there is a growing interest
in understanding the origins of this popularity and the forces driving its
rapid expansion. Recent studies suggest that the virality of short videos is
not only tied to their inherent multi-modal content but is also heavily
influenced by the strength of platform recommendations driven by audience
feedback. In this paper, we introduce a framework for capturing long-term
dependencies in user feedback and dynamic event interactions, based on the
Mamba Hawkes process. Our experiments on the large-scale open-source
multi-modal dataset show that our model significantly outperforms
state-of-the-art approaches across various metrics by 23.2%. We believe our
model's capability to map the relationships within user feedback behavior
sequences will not only contribute to the evolution of next-generation
recommendation algorithms and platform applications but also enhance our
understanding of micro video dissemination and its broader societal impact. |
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DOI: | 10.48550/arxiv.2411.15455 |