Precise user and item embedding learning is the key to building a successful recommender system. Traditionally, Collaborative Filtering(CF) provides a way to learn user and item embeddings from the user-item interaction history. However, the performance is limited due to the sparseness of user behavior data. With the emergence of online social networks, social recommender systems have been proposed to utilize each user's local neighbors' preferences to alleviate the data sparsity for better user embedding modeling. We argue that, for each user of a social platform, her potential embedding is influenced by her trusted users. As social influence recursively propagates and diffuses in the social network, each user's interests change in the recursive process. Nevertheless, the current social recommendation models simply developed static models by leveraging the local neighbors of each user without simulating the recursive diffusion in the global social network, leading to suboptimal recommendation performance. In this paper, we propose a deep influence propagation model to stimulate how users are influenced by the recursive social diffusion process for social recommendation. For each user, the diffusion process starts with an initial embedding that fuses the related features and a free user latent vector that captures the latent behavior preference. The key idea of our proposed model is that we design a layer-wise influence propagation structure to model how users' latent embeddings evolve as the social diffusion process continues. We further show that our proposed model is general and could be applied when the user~(item) attributes or the social network structure is not available. Finally, extensive experimental results on two real-world datasets clearly show the effectiveness of our proposed model, with more than 13% performance improvements over the best baselines.
翻译:预选用户和项目嵌入学习是建立成功推荐者系统的关键。 传统上, 协作过滤( CFF) 提供了学习用户和项目嵌入用户- 项目互动历史的途径。 但是, 业绩有限, 原因是用户行为数据稀少。 随着在线社交网络的出现, 社会推荐者系统建议利用每个用户的本地邻居的偏好来减轻数据宽度, 以便用户更好地嵌入模型。 我们认为, 对于每个社会平台的用户来说, 她的潜在嵌入会受到她信任的用户的影响。 由于社会影响在社交网络中循环传播和传播, 每个用户的兴趣在循环过程中会发生变化。 然而, 目前的社会推荐模式只是通过利用每个用户的本地邻居来开发静态模型,而不会模拟全球社会网络的循环传播,导致亚优度建议性业绩。 我们在此文件中, 提出一个深度影响13 模型, 以激励用户如何受到社会再循环社会传播程序的影响。 对于每个用户来说, 最初的传播模式开始, 而不是在循环过程中, 开始以初步嵌入现有用户的特性为核心的服务器, 最终的模型将显示我们所处的客户- 和最接近的版本的版本的模型, 显示我们所显示的系统结构。