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Reverse Conformal Approach for On-line Experimental Design

机译:在线实验设计的逆共形方法

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Conformal prediction is a recently developed framework of confident machine learning with guaranteed validity properties for prediction sets. In this work we study its usage in reversed version of the traditional machine learning problem: prediction of objects which can have a given label, instead of usual prediction of labels by objects. It is meant that the label reflect some desired property of the object. For this kind of task, the conformal prediction framework can provide a prediction set that is a set of objects that are likely to have the label. Based on this, we create an on-line protocol of experimental design. It includes a choice criterion based on conformal output, and elements of transfer learning in order to keep the validity properties in on-line regime.
机译:适形预测是最近开发的具有信心的机器学习框架,具有对预测集的保证有效性属性。在这项工作中,我们研究了它在传统机器学习问题的反向版本中的用法:预测可以具有给定标签的对象,而不是对象通常对标签的预测。这意味着标签反映了对象的某些所需属性。对于此类任务,共形预测框架可以提供一个预测集,该预测集是可能具有标签的一组对象的集合。基于此,我们创建了实验设计的在线协议。它包括基于共形输出的选择标准,以及转移学习的要素,以便将有效性属性保持在在线状态下。

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