Diaconis-Ylvisaker prior penalized likelihood for $p/n \to \kappa \in (0,1)$ logistic regression

Sterzinger, Philipp, Kosmidis, Ioannis
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Abstract

We characterise the behaviour of the maximum Diaconis-Ylvisaker prior penalized likelihood estimator in high-dimensional logistic regression, where the number of covariates is a fraction $\kappa \in (0,1)$ of the number of observations $n$, as $n \to \infty$. We derive the estimator's aggregate asymptotic behaviour when covariates are independent normal random variables with mean zero and variance $1/n$, and the vector of regression coefficients has length $\gamma \sqrt{n}$, asymptotically. From this foundation, we devise adjusted $Z$-statistics, penalized likelihood ratio statistics, and aggregate asymptotic results with arbitrary covariate covariance. In the process, we fill in gaps in previous literature by formulating a Lipschitz-smooth approximate message passing recursion, to formally transfer the asymptotic results from approximate message passing to logistic regression. While the maximum likelihood estimate asymptotically exists only for a narrow range of $(\kappa, \gamma)$ values, the maximum Diaconis-Ylvisaker prior penalized likelihood estimate not only exists always but is also directly computable using maximum likelihood routines. Thus, our asymptotic results also hold for $(\kappa, \gamma)$ values where results for maximum likelihood are not attainable, with no overhead in implementation or computation. We study the estimator's shrinkage properties and compare it to logistic ridge regression and demonstrate our theoretical findings with simulations.
Diaconis-Ylvisaker在$p/n \to \kappa \(0,1)$逻辑回归中先验惩罚似然
我们在高维逻辑回归中描述了最大Diaconis-Ylvisaker先验惩罚似然估计量的行为,其中协变量的数量是观测数量$n$的一个分数$\kappa \in (0,1)$,如$n \to \infty$。当协变量为均值为零、方差为$1/n$的独立正态随机变量,且回归系数向量的长度为$\gamma \sqrt{n}$时,我们渐近地推导了估计量的总渐近行为。在此基础上,我们设计了调整后的$Z$统计量,惩罚似然比统计量,以及具有任意协方差的渐近结果。在此过程中,我们通过建立一个Lipschitz-smooth近似消息传递递归来填补以往文献的空白,将近似消息传递的渐近结果正式转化为逻辑回归。虽然最大似然估计仅在很小的$(\kappa, \gamma)$值范围内渐近存在,但最大Diaconis-Ylvisaker先验惩罚似然估计不仅总是存在,而且可以使用最大似然例程直接计算。因此,我们的渐近结果也适用于$(\kappa, \gamma)$值,其中无法获得最大似然的结果,在实现或计算中没有开销。我们研究了估计器的收缩特性,并将其与逻辑岭回归进行了比较,并通过模拟证明了我们的理论发现。
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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