Weakly Supervised Regression with Interval Targets

Xi Cheng, Yuzhou Cao, Ximing Li, Bo An, Lei Feng
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引用次数: 1

Abstract

This paper investigates an interesting weakly supervised regression setting called regression with interval targets (RIT). Although some of the previous methods on relevant regression settings can be adapted to RIT, they are not statistically consistent, and thus their empirical performance is not guaranteed. In this paper, we provide a thorough study on RIT. First, we proposed a novel statistical model to describe the data generation process for RIT and demonstrate its validity. Second, we analyze a simple selection method for RIT, which selects a particular value in the interval as the target value to train the model. Third, we propose a statistically consistent limiting method for RIT to train the model by limiting the predictions to the interval. We further derive an estimation error bound for our limiting method. Finally, extensive experiments on various datasets demonstrate the effectiveness of our proposed method.
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具有区间目标的弱监督回归
本文研究了一种有趣的弱监督回归设置,称为区间目标回归。虽然之前的一些方法在相关回归设置上可以适用于RIT,但它们在统计上并不一致,因此不能保证它们的经验性能。在本文中,我们对RIT进行了深入的研究。首先,我们提出了一个新的统计模型来描述RIT的数据生成过程,并证明了它的有效性。其次,我们分析了一种简单的RIT选择方法,即在区间中选择一个特定的值作为训练模型的目标值。第三,我们提出了一种统计一致的RIT限制方法,通过将预测限制在区间内来训练模型。进一步导出了该方法的估计误差界。最后,在各种数据集上的大量实验证明了我们提出的方法的有效性。
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