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Binary Classification with a Pseudo Exponential Model and Its Application for Multi-Task Learning †

机译:伪指数模型的二进制分类及其在多任务学习中的应用†

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In this paper, we investigate the basic properties of binary classification with a pseudo model based on the Itakura–Saito distance and reveal that the Itakura–Saito distance is a unique appropriate measure for estimation with the pseudo model in the framework of general Bregman divergence. Furthermore, we propose a novel multi-task learning algorithm based on the pseudo model in the framework of the ensemble learning method. We focus on a specific setting of the multi-task learning for binary classification problems. The set of features is assumed to be common among all tasks, which are our targets of performance improvement. We consider a situation where the shared structures among the dataset are represented by divergence between underlying distributions associated with multiple tasks. We discuss statistical properties of the proposed method and investigate the validity of the proposed method with numerical experiments.
机译:在本文中,我们研究了基于Itakura–Saito距离的伪模型进行二元分类的基本性质,并揭示了Itakura–Saito距离是在一般Bregman散度框架内使用伪模型进行估计的独特合适方法。此外,在整体学习方法的框架下,我们提出了一种基于伪模型的新型多任务学习算法。我们专注于针对二进制分类问题的多任务学习的特定设置。假定在所有任务中共有一组功能,这是我们提高性能的目标。我们考虑一种情况,数据集之间的共享结构由与多个任务相关联的基础分布之间的差异表示。我们讨论了该方法的统计性质,并通过数值实验研究了该方法的有效性。

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