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Kernel Conditional Quantile Estimation via Reduction Revisited

机译:通过减少重新审视内核条件分位数估计

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Quantile regression refers to the process of estimating the quantiles of a conditional distribution and has many important applications within econometrics and data mining, among other domains. In this paper, we show how to estimate these conditional quantile functions within a Bayes risk minimization framework using a Gaussian process prior. The resulting non-parametric probabilistic model is easy to implement and allows non-crossing quantile functions to be enforced. Moreover, it can directly be used in combination with tools and extensions of standard Gaussian Processes such as principled hyperparameter estimation, sparsification, and quantile regression with input-dependent noise rates. No existing approach enjoys all of these desirable properties. Experiments on benchmark datasets show that our method is competitive with state-of-the-art approaches.
机译:定量回归是指估计条件分布的量级的过程,并在其他域中具有多种重要应用和数据挖掘。在本文中,我们展示了如何在贝斯风险最小化框架中估算这些条件分位数功能使用先前的Gaussian Process。由此产生的非参数概率模型易于实现并且允许强制执行非交叉量子函数。此外,它可以直接与标准高斯过程的工具和扩展组合使用,例如具有输入相关噪声速率的原则性高斯估计,稀疏和分量回归。没有现有的方法享有所有这些所需的属性。基准数据集的实验表明,我们的方法与最先进的方法具有竞争力。

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