TL;DR
This paper introduces a hierarchical attention model that captures complex social and contextual factors influencing user preferences in social image recommendation, outperforming previous hybrid models by adaptively weighting different information sources.
Contribution
The paper proposes a novel hierarchical attention network that models key social and contextual aspects affecting user preferences in social image recommendation, addressing limitations of prior models.
Findings
Outperforms existing models on real-world datasets
Effectively captures social influence and user interests
Demonstrates superior recommendation accuracy
Abstract
Image based social networks are among the most popular social networking services in recent years. With tremendous images uploaded everyday, understanding users' preferences on user-generated images and making recommendations have become an urgent need. In fact, many hybrid models have been proposed to fuse various kinds of side information~(e.g., image visual representation, social network) and user-item historical behavior for enhancing recommendation performance. However, due to the unique characteristics of the user generated images in social image platforms, the previous studies failed to capture the complex aspects that influence users' preferences in a unified framework. Moreover, most of these hybrid models relied on predefined weights in combining different kinds of information, which usually resulted in sub-optimal recommendation performance. To this end, in this paper, we…
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