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Transductive Ordinal Regression

机译:转导序数回归

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摘要

Ordinal regression is commonly formulated as a multiclass problem with ordinal constraints. The challenge of designing accurate classifiers for ordinal regression generally increases with the number of classes involved, due to the large number of labeled patterns that are needed. The availability of ordinal class labels, however, is often costly to calibrate or difficult to obtain. Unlabeled patterns, on the other hand, often exist in much greater abundance and are freely available. To take benefits from the abundance of unlabeled patterns, we present a novel transductive learning paradigm for ordinal regression in this paper, namely transductive ordinal regression (TOR). The key challenge of this paper lies in the precise estimation of both the ordinal class label of the unlabeled data and the decision functions of the ordinal classes, simultaneously. The core elements of the proposed TOR include an objective function that caters to several commonly used loss functions casted in transductive settings, for general ordinal regression. A label swapping scheme that facilitates a strictly monotonic decrease in the objective function value is also introduced. Extensive numerical studies on commonly used benchmark datasets including the real-world sentiment prediction problem are then presented to showcase the characteristics and efficacies of the proposed TOR. Further, comparisons to recent state-of-the-art ordinal regression methods demonstrate the introduced transductive learning paradigm for ordinal regression led to the robust and improved performance.
机译:序数回归通常被公式化为具有序数约束的多类问题。由于需要大量的标记模式,设计用于序数回归的精确分类器的挑战通常会随着所涉及的类的数量而增加。但是,序数类标签的可用性通常校准成本高昂或难以获得。另一方面,未标记的图案通常以更大的数量存在并且可以免费获得。为了从大量未标记的模式中受益,我们在本文中提出了一种新颖的序数回归转导学习范式,即转导序数回归(TOR)。本文的主要挑战在于同时准确估计未标记数据的序类标签和序类的决策函数。拟议的TOR的核心要素包括一个目标函数,该目标函数可满足在转换顺序设置中转换的几个常用损失函数,以进行一般顺序回归。还介绍了一种标签交换方案,该方案有助于严格单调减小目标函数值。然后,针对常用基准数据集进行了广泛的数值研究,其中包括真实世界的情绪预测问题,以展示所提出的TOR的特性和功效。此外,与最新技术的序数回归方法的比较表明,针对序数回归引入的转导学习范式导致了功能强大且性能得到改善。

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