首页> 外文期刊>Statistica Sinica >A BOOTSTRAP LASSO plus PARTIAL RIDGE METHOD TO CONSTRUCT CONFIDENCE INTERVALS FOR PARAMETERS IN HIGH-DIMENSIONAL SPARSE LINEAR MODELS
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A BOOTSTRAP LASSO plus PARTIAL RIDGE METHOD TO CONSTRUCT CONFIDENCE INTERVALS FOR PARAMETERS IN HIGH-DIMENSIONAL SPARSE LINEAR MODELS

机译:Bootstrap Lasso Plus部分ridge方法,用于构建高维稀疏线性模型中参数的置信区间

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Constructing confidence intervals for the coefficients of high-dimensional sparse linear models remains a challenge, mainly because of the complicated limiting distributions of the widely used estimators, such as the lasso. Several methods have been developed for constructing such intervals. Bootstrap lasso+ols is notable for its technical simplicity, good interpretability, and performance that is comparable with that of other more complicated methods. However, bootstrap lasso+ols depends on the beta-min assumption, a theoretic criterion that is often violated in practice. Thus, we introduce a new method, called bootstrap lasso+partial ridge, to relax this assumption. Lasso+partial ridge is a two-stage estimator. First, the lasso is used to select features. Then, the partial ridge is used to refit the coefficients. Simulation results show that bootstrap lasso+partial ridge outperforms bootstrap lasso+ols when there exist small, but nonzero coefficients, a common situation that violates the beta-min assumption. For such coefficients, the confidence intervals constructed using bootstrap lasso+partial ridge have, on average, 50% larger coverage probabilities than those of bootstrap lasso+ols. Bootstrap lasso+partial ridge also has, on average, 35% shorter confidence interval lengths than those of the desparsified lasso methods, regardless of whether the linear models are misspecified. Additionally, we provide theoretical guarantees for bootstrap lasso+partial ridge under appropriate conditions, and implement it in the R package "HDCI".
机译:构建高维稀疏线性模型系数的置信区间仍然是一个挑战,主要是因为广泛使用的估计器的复杂限制分布,例如套索。已经开发了几种用于构建这种间隔的方法。 Bootstrap Lasso + OLS对于其技术简单,可与其他更复杂的方法相比的良好诠释性和性能非常值得注意。然而,Bootstrap Lasso + OLS取决于Beta-Min假设,这是经常在实践中违反的理论标准。因此,我们介绍了一种名为Bootstrap Lasso +部分脊的新方法,以放宽这种假设。套索+部分脊是一个两级估计器。首先,套索用于选择功能。然后,部分脊用于改装系数。仿真结果表明,启动套索+部分脊优于突出的牵引车锁定+ OLS时,但非零系数,违反了Beta-min假设的常见情况。对于这样的系数,使用自靴索诺+偏脊构建的置信区间平均覆盖概率比自靴套索+ OLS更大。 Bootstrap Lasso +部分脊也平均相当35%的置信区间长度,而不是挖掘套索方法,无论线性模型是否被遗漏。此外,我们在适当的条件下提供了对Bootstrap Lasso +部分脊的理论保证,并在R包“HDCI”中实现它。

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