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Learning partial ordinal class memberships with kernel-based proportional odds models

机译:使用基于内核的比例赔率模型学习部分序数类成员身份

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摘要

As an extension of multi-class classification, machine learning algorithms have been proposed that are able to deal with situations in which the class labels are defined in a non-crisp way. Objects exhibit in that sense a degree of membership to several classes. In a similar setting, models are developed here for classification problems where an order relation is specified on the classes (i.e., non-crisp ordinal regression problems). As for traditional (crisp) ordinal regression problems, it is argued that the order relation on the classes should be reflected by the model structure as well as the performance measure used to evaluate the model. These arguments lead to a natural extension of the well-known proportional odds model for non-crisp ordinal regression problems, in which the underlying latent variable is not necessarily restricted to the class of linear models (by using kernel methods).
机译:作为多类分类的扩展,已经提出了机器学习算法,该算法能够处理以非清晰方式定义类标签的情况。在这种意义上,对象表现出若干类的隶属程度。在类似的情况下,这里针对分类问题开发了模型,其中在类上指定了顺序关系(即非无序序数回归问题)。对于传统的(有序的)序数回归问题,有人认为,类的顺序关系应通过模型结构以及用于评估模型的性能度量来反映。这些论点导致了众所周知的比例赔率模型的自然扩展,从而解决了非清晰的序数回归问题,其中潜在的潜在变量不一定限于线性模型的类别(通过使用核方法)。

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