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Regression with Comparisons: Escaping the Curse of Dimensionality with Ordinal Information

机译:与比较的回归:使用序数信息逃离维度的诅咒

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In supervised learning, we typically leverage a fully labeled dataset to design methods for function estimation or prediction. In many practical situations, we are able to obtain alternative feedback, possibly at a low cost. A broad goal is to understand the usefulness of, and to design algorithms to exploit, this alternative feedback. In this paper, we consider a semi-supervised regression setting, where we obtain additional ordinal (or comparison) information for the unlabeled samples. We consider ordinal feedback of varying qualities where we have either a perfect ordering of the samples, a noisy ordering of the samples or noisy pairwise comparisons between the samples. We provide a precise quantification of the usefulness of these types of ordinal feedback in both nonparametric and linear regression, showing that in many cases it is possible to accurately estimate an underlying function with a very small labeled set, effectively escaping the curse of dimensionality. We also present lower bounds, that establish fundamental limits for the task and show that our algorithms are optimal in a variety of settings. Finally, we present extensive experiments on new datasets that demonstrate the efficacy and practicality of our algorithms and investigate their robustness to various sources of noise and model misspecification.
机译:在监督学习中,我们通常利用完全标记的数据集来设计功能估计或预测的方法。在许多实际情况下,我们能够获得替代反馈,可能以低成本。广泛的目标是了解有用性,并设计算法以利用,这种替代反馈。在本文中,我们考虑了一个半监督回归设置,我们获得了未标记样本的其他序数(或比较)信息。我们考虑对不同质量的序数反馈,我们有一个完美的样本排序,样品之间的样品或嘈杂的成对比较的噪声排序。我们提供了在非参数和线性回归中的这些类型的序数反馈的有用性的精确定量,示出了在许多情况下,可以用非常小的标记集准确地估计底层功能,有效地逃逸维度的诅咒。我们还提出了下限,为任务建立了基本限制,并表明我们的算法在各种设置中是最佳的。最后,我们对新数据集目前展示了展示了我们算法的功效和实用性的大量实验,并调查了它们对各种噪声和模型误操源的稳健性。

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