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Learning from small data: A pairwise approach for ordinal regression

机译:从小数据中学习:序数回归的成对方法

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Ordinal regression which aims to classify instances into ordinal categories has numerous applications. As a supervised learning problem, a large number of labeled data is needed to train an accurate model, in particular when the number of categories is large. Learning an effective ordinal classifier from a small dataset is a challenging task. This paper proposes a framework to transform the ordinal regression problem to a binary classification problem and then recover the ordinal information from the binary outputs. The labeled instances are paired up to train a binary classifier, and therefore, the number of training points is squared, which alleviates the lack of training points. The transformed binary classification problem is solved by a pairwise SVM method. Experimental results demonstrate that on 12 widely used benchmarks, the proposed method is effective comparing with the state-of-the-art ordinal regression methods.
机译:旨在将实例分类为序数类别的序数回归具有许多应用。作为有监督的学习问题,需要大量标记数据来训练准确的模型,尤其是在类别数很大时。从小型数据集中学习有效的序数分类器是一项艰巨的任务。本文提出了一个框架,将序数回归问题转换为二进制分类问题,然后从二进制输出中恢复序数信息。将标记的实例配对以训练二进制分类器,因此,训练点的数量是平方的,这减轻了训练点的不足。通过成对的SVM方法解决了转换后的二进制分类问题。实验结果表明,与最先进的序数回归方法相比,该方法在12种广泛使用的基准上是有效的。

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