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Uncertainty Support Vector Method for Ordinal Regression

机译:序数回归的不确定度支持向量法

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摘要

Ordinal regression is complementary to the standard machine learning tasks of classification and metric regression which goal is to predict variables of ordinal scale. However, every input must be exactly assigned to one of these classes without any uncertainty in standard ordinal regression models. Based on structural risk minimization (SRM) principle, a new support vector learning technique for ordinal regression is proposed, which is able to deal with training data with uncertainty. Firstly, the meaning of the uncertainty is defined. Based on this meaning of uncertainty, two algorithms have been derived. This technique extends the application horizon of ordinal regression greatly. Moreover, the problem about early warning of food security in China is solved by our algorithm.
机译:序数回归是对分类和度量回归的标准机器学习任务的补充,其目的是预测序数规模的变量。但是,必须在标准序数回归模型中没有任何不确定性的情况下,将每个输入准确地分配给这些类别之一。基于结构风险最小化(SRM)原理,提出了一种新的有序回归支持向量学习技术,该技术能够处理不确定性的训练数据。首先,定义了不确定性的含义。基于不确定性的含义,得出了两种算法。该技术极大地扩展了有序回归的应用范围。此外,我们的算法解决了中国粮食安全预警问题。

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