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Multi-Stage Multi-Task Feature Learning*

机译:多阶段多任务功能学习*

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摘要

Multi-task sparse feature learning aims to improve the generalization performance by exploiting the shared features among tasks. It has been successfully applied to many applications including computer vision and biomedical informatics. Most of the existing multi-task sparse feature learning algorithms are formulated as a convex sparse regularization problem, which is usually suboptimal, due to its looseness for approximating an ℓ_0o-type regularizer. In this paper, we propose a non-convex formulation for multi-task sparse feature learning based on a novel regularizer. To solve the non-convex optimization problem, we propose a Multistage Multi-Task Feature Learning (MSMTFL) algorithm. Moreover, we present a detailed theoretical analysis showing that MSMTFL achieves a better parameter estimation error bound than the convex formulation. Empirical studies on both synthetic and real-world data sets demonstrate the effectiveness of MSMTFL in comparison with the state of the art multi-task sparse feature learning algorithms.
机译:多任务稀疏特征学习旨在通过利用任务之间的共享特征来提高泛化性能。它已成功应用于许多应用,包括计算机视觉和生物医学信息学。大多数现有的多任务稀疏特征学习算法都被表述为凸稀疏正则化问题,由于它对于逼近o_0o型正则化器较为宽松,因此通常次优。在本文中,我们提出了一种基于新型正则化器的用于多任务稀疏特征学习的非凸公式。为了解决非凸优化问题,我们提出了一种多阶段多任务特征学习(MSMTFL)算法。此外,我们提供了详细的理论分析,表明MSMTFL比凸公式具有更好的参数估计误差范围。对合成数据集和实际数据集的经验研究表明,与最新的多任务稀疏特征学习算法相比,MSMTFL的有效性。

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