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Collaborative Gaussian Processes for Preference Learning

机译:偏好研究的协作高斯过程

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We present a new model based on Gaussian processes (GPs) for learning pair-wise preferences expressed by multiple users. Inference is simplified by using a preference kernel for GPs which allows us to combine supervised GP learning of user preferences with unsupervised dimensionality reduction for multi-user systems. The model not only exploits collaborative information from the shared structure in user behavior, but may also incorporate user features if they are available. Approximate inference is implemented using a combination of expectation propagation and variational Bayes. Finally, we present an efficient active learning strategy for querying preferences. The proposed technique performs favorably on real-world data against state-of-the-art multi-user preference learning algorithms.
机译:我们提出了一种基于高斯过程(GPs)的新模型,用于学习由多个用户表示的成对偏好。通过使用GP的首选项内核简化了推理,该内核使我们可以将针对用户首选项的监督GP学习与针对多用户系统的非监督降维相结合。该模型不仅利用用户行为中共享结构的协作信息,而且还可以合并用户功能(如果可用)。近似推断是使用期望传播和变化贝叶斯的组合来实现的。最后,我们提出了一种用于查询偏好的有效主动学习策略。相对于最新的多用户偏好学习算法,所提出的技术在现实世界的数据上具有良好的性能。

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