TL;DR
KRED is a knowledge-aware document representation model that enhances news understanding by integrating knowledge graph information, improving performance across various news recommendation tasks.
Contribution
The paper introduces KRED, a fast, effective model that incorporates knowledge graph information into document representations for news recommendation applications.
Findings
KRED significantly improves recommendation accuracy.
It benefits multiple news-related tasks.
The model is efficient and generalizes well.
Abstract
News articles usually contain knowledge entities such as celebrities or organizations. Important entities in articles carry key messages and help to understand the content in a more direct way. An industrial news recommender system contains various key applications, such as personalized recommendation, item-to-item recommendation, news category classification, news popularity prediction and local news detection. We find that incorporating knowledge entities for better document understanding benefits these applications consistently. However, existing document understanding models either represent news articles without considering knowledge entities (e.g., BERT) or rely on a specific type of text encoding model (e.g., DKN) so that the generalization ability and efficiency is compromised. In this paper, we propose KRED, which is a fast and effective model to enhance arbitrary document…
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