A Framework for Ranking Content Providers Using Prompt Engineering and Self-Attention Network
This paper addresses the problem of ranking Content Providers for Content Recommendation System. Content Providers are the sources of news and other types of content, such as lifestyle, travel, gardening. We propose a framework that leverages explicit user feedback, such as clicks and reactions, and...
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Zusammenfassung: | This paper addresses the problem of ranking Content Providers for Content
Recommendation System. Content Providers are the sources of news and other
types of content, such as lifestyle, travel, gardening. We propose a framework
that leverages explicit user feedback, such as clicks and reactions, and
content-based features, such as writing style and frequency of publishing, to
rank Content Providers for a given topic. We also use language models to
engineer prompts that help us create a ground truth dataset for the previous
unsupervised ranking problem. Using this ground truth, we expand with a
self-attention based network to train on Learning to Rank ListWise task. We
evaluate our framework using online experiments and show that it can improve
the quality, credibility, and diversity of the content recommended to users. |
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DOI: | 10.48550/arxiv.2409.11511 |