In response to an object presentation, supervised learning schemes generally respond with a parsimonious label. Upon a similar presentation we humans respond again with a label, but are flooded, in addition, by a myriad of associations. A significant portion of these consist of the presented object attributes. Contrastive learning is a semi-supervised learning scheme based on the application of identity preserving transformations on the object input representations. It is conjectured in this work that these same applied transformations preserve, in addition to the identity of the presented object, also the identity of its semantically meaningful attributes. The corollary of this is that the output representations of such a contrastive learning scheme contain valuable information not only for the classification of the presented object, but also for the presence or absence decision of any attribute of interest. Simulation results which demonstrate this idea and the feasibility of this conjecture are presented.
翻译:受监督的学习计划通常对对象的表述作出反应,通常使用一个污秽的标签。在类似的表述中,我们人类再次使用标签作出反应,但又被各种协会淹没。其中相当一部分是介绍的对象属性。不同的学习是一种半监督的学习计划,其基础是应用身份保护在对象输入表述上的变换。在这项工作中,这些应用的变换除了保留所展示对象的特性外,还保留其具有意义的词义属性的特性。由此得出的结论是,这种对比式学习计划的产出表述不仅包含对所介绍的对象进行分类的宝贵信息,而且包含任何属性存在或不存在决定的宝贵信息。模拟结果显示了这种想法和这种推断的可行性。</s>