Self-measuring Similarity for Multi-task Gaussian Process

K. Hayashi, Takashi Takenouchi, Ryota Tomioka, H. Kashima
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引用次数: 27

Abstract

Multi-task learning aims at transferring knowledge between similar tasks. The multi-task Gaussian process framework of Bonilla et al. models (incomplete) responses of C data points for R tasks (e.g., the responses are given by R × C matrix) by a Gaussian process; the covariance function is defined as the product of a covariance function on input-dependent features and the inter-task covariance matrix (which is empirically estimated as a model parameter). We extend this framework by incorporating a novel similarity measurement, which allows for the representation of much more complex data structures. The proposed framework also enables us to exploit additional information (e.g., the input-dependent features) by constructing the covariance matrices with combining them on the covariance function. We also derive an efficient learning algorithm to make prediction by using an iterative method. Finally, we apply our model to a real data set of recommender systems and show that the proposed method achieves the best prediction accuracy on the data set.
多任务高斯过程的自度量相似度
多任务学习的目的是在相似的任务之间转移知识。Bonilla等人的多任务高斯过程框架(多任务高斯过程框架)通过高斯过程对R个任务的C个数据点的(不完全)响应进行建模(例如,响应由R × C矩阵给出);协方差函数定义为输入相关特征的协方差函数与任务间协方差矩阵(经验估计为模型参数)的乘积。我们通过结合一种新的相似性度量来扩展这个框架,它允许更复杂的数据结构的表示。所提出的框架还使我们能够通过构建协方差矩阵并将它们组合在协方差函数上来利用附加信息(例如,输入相关特征)。我们还推导了一种有效的学习算法,利用迭代法进行预测。最后,我们将该模型应用于一个真实的推荐系统数据集,结果表明该方法在该数据集上达到了最佳的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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