Inference for extremal regression with dependent heavy-tailed data

A. Daouia, Gilles Stupfler, A. Usseglio‐Carleve
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Abstract

Nonparametric inference on tail conditional quantiles and their least squares analogs, expectiles, remains limited to i.i.d. data. We develop a fully operational inferential theory for extreme conditional quantiles and expec-tiles in the challenging framework of α − mixing, conditional heavy-tailed data whose tail index may vary with covariate values. This requires a dedicated treatment to deal with data sparsity in the far tail of the response, in addition to handling difficulties inherent to mixing, smoothing, and sparsity associated to covariate localization. We prove the pointwise asymptotic normality of our estimators and obtain optimal rates of convergence reminiscent of those found in the i.i.d. regression setting, but which had not been established in the conditional extreme value literature. Our assumptions hold in a wide range of models. We propose full bias and variance reduction procedures, and simple but effective data-based rules for selecting tuning hyperpa-rameters. Our inference strategy is shown to perform well in finite samples and is showcased in applications to stock returns and tornado loss data.
有重尾数据的极值回归推理
关于尾部条件数量位数及其最小二乘法类似物(即期望位数)的非参数推断仍局限于 i.i.d. 数据。我们在具有挑战性的 α - 混合、条件重尾数据(其尾部指数可能随协变量值而变化)框架内,为极端条件数量级和期望数量级开发了完全可操作的推理理论。除了处理混合、平滑和与协变量定位相关的稀疏性所固有的困难外,还需要专门处理响应远端尾部的数据稀疏性。我们证明了估计值的渐近正态性,并获得了最佳收敛率,这让人想起在 i.i.d. 回归设置中发现的收敛率,但条件极值文献中还没有建立起这种收敛率。我们的假设在各种模型中都成立。我们提出了完整的偏差和方差减小程序,以及简单而有效的基于数据的超参数调整规则。我们的推理策略在有限样本中表现良好,并在股票收益和龙卷风损失数据的应用中得到了展示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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