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A robust and efficient algorithm to find profile likelihood confidence intervals

机译:一种稳健而有效的算法,可以找到个人资料似然置信区间

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摘要

Profile likelihood confidence intervals are a robust alternative to Wald's method if the asymptotic properties of the maximum likelihood estimator are not met. However, the constrained optimization problem defining profile likelihood confidence intervals can be difficult to solve in these situations, because the likelihood function may exhibit unfavorable properties. As a result, existing methods may be inefficient and yield misleading results. In this paper, we address this problem by computing profile likelihood confidence intervals via a trust-region approach, where steps computed based on local approximations are constrained to regions where these approximations are sufficiently precise. As our algorithm also accounts for numerical issues arising if the likelihood function is strongly non-linear or parameters are not estimable, the method is applicable in many scenarios where earlier approaches are shown to be unreliable. To demonstrate its potential in applications, we apply our algorithm to benchmark problems and compare it with 6 existing approaches to compute profile likelihood confidence intervals. Our algorithm consistently achieved higher success rates than any competitor while also being among the quickest methods. As our algorithm can be applied to compute both confidence intervals of parameters and model predictions, it is useful in a wide range of scenarios.
机译:简档似然置信度间隔是WALD方法的强大替代,如果不满足最大似然估计器的渐近性质。然而,在这些情况下难以解决定义轮廓似然置信区间的约束优化问题,因为可能性函数可能表现出不利的特性。结果,现有方法可能效率低,产生误导性结果。在本文中,我们通过信任区域方法计算轮廓似然置信区间来解决该问题,其中基于局部近似计算的步骤被约束到这些近似足够精确的区域。由于我们的算法还考虑了如果似然函数强烈非线性或参数而产生的数值问题,则该方法适用于许多方案,其中早期方法被显示为不可靠。为了展示其在应用程序中的潜力,我们将算法应用于基准问题,并将其与6种现有方法进行比较,以计算概况偏置间隔。我们的算法始终如一地实现了比任何竞争对手更高的成功率,同时也是最快的方法。由于我们的算法可以应用于计算参数和模型预测的置信区间,因此在各种场景中是有用的。

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