Multi-task learning has attracted much attention due to growing multi-purpose research with multiple related data sources. Moreover, transduction with matrix completion is a useful method in multi-label learning. In this paper, we propose a transductive matrix completion algorithm that incorporates a calibration constraint for the features under the multi-task learning framework. The proposed algorithm recovers the incomplete feature matrix and target matrix simultaneously. Fortunately, the calibration information improves the completion results. In particular, we provide a statistical guarantee for the proposed algorithm, and the theoretical improvement induced by calibration information is also studied. Moreover, the proposed algorithm enjoys a sub-linear convergence rate. Several synthetic data experiments are conducted, which show the proposed algorithm out-performs other existing methods, especially when the target matrix is associated with the feature matrix in a nonlinear way.
翻译:多任务学习由于多个相关数据源的多用途研究不断增多而引起人们的极大关注。此外,矩阵完成转换是多标签学习的有用方法。在本文件中,我们建议采用一个转换矩阵完成算法,其中包括对多任务学习框架下的特征的校准限制。拟议的算法同时恢复不完整的特征矩阵和目标矩阵。幸运的是,校准信息改善了完成结果。特别是,我们为拟议的算法提供了统计保证,还研究了校准信息引起的理论改进。此外,拟议的算法具有亚线性趋同率。进行了一些合成数据实验,这些实验显示拟议的算法比其他现有方法更符合要求,特别是当目标矩阵以非线性方式与特征矩阵相联系时。