Joint Representation Learning for Top-N Recommendation with Heterogeneous Information Sources 论文
2017引用 318
Recommender Systems and TechniquesImage Retrieval and Classification TechniquesAdvanced Graph Neural Networks
摘要
The Web has accumulated a rich source of information, such as text, image, rating, etc, which represent different aspects of user preferences. However, the heterogeneous nature of this information makes it difficult for recommender systems to leverage in a unified framework to boost the performance. Recently, the rapid development of representation learning techniques provides an approach to this problem. By translating the various information sources into a unified representation space, it becomes possible to integrate heterogeneous information for informed recommendation.