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Collaborative Multi-view Learning with Active Discriminative Prior for Recommendation

机译:具有主动歧视提前建议的协作多视图学习

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Learning from multi-view data is important in many applications. However, traditional multi-view learning algorithms require the availability of the representation from multi-view data in advance, it is hard to apply these methods to recommendation task directly. In fact, the idea of multi-view learning is particularly suitable for alleviating the sparsity challenge faced in various recommender systems by adding additional view to augment traditional view of sparse rating matrix. In this paper, we propose a unified Collaborative Multi-view Learning (CML) framework for recommender systems, which can exploit task adaptive multi-view representation of data automatically. The main idea is to formulate a joint optimization framework, combining the merits of matrix factorization model and transfer learning technique in a multi-view framework. Experiments on real-life public datasets show that our model outperforms the compared state-of-the-art baselines.
机译:从多视图数据学习在许多应用中都很重要。然而,传统的多视图学习算法需要预先从多视图数据中获得表示的可用性,很难直接将这些方法应用于推荐任务。事实上,通过添加额外的视图来增加传统的稀疏评级矩阵来减轻多视图学习的想法特别适合减轻各种推荐系统所面临的稀疏挑战。在本文中,我们为推荐系统提出了一个统一的协作多视图学习(CML)框架,它可以自动利用任务自适应多视图表示数据。主要思想是制定联合优化框架,将矩阵分解模型的优点与多视图框架中的传输学习技术相结合。现实生活公共数据集的实验表明,我们的模型优于最先进的基线。

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