The conventional approach to data-driven inversion framework is based on Gaussian statistics that presents serious difficulties, especially in the presence of outliers in the measurements. In this work, we present maximum likelihood estimators associated with generalized Gaussian distributions in the context of R\'enyi, Tsallis and Kaniadakis statistics. In this regard, we analytically analyse the outlier-resistance of each proposal through the so-called influence function. In this way, we formulate inverse problems by constructing objective functions linked to the maximum likelihood estimators. To demonstrate the robustness of the generalized methodologies, we consider an important geophysical inverse problem with high noisy data with spikes. The results reveal that the best data inversion performance occurs when the entropic index from each generalized statistic is associated with objective functions proportional to the inverse of the error amplitude. We argue that in such a limit the three approaches are resistant to outliers and are also equivalent, which suggests a lower computational cost for the inversion process due to the reduction of numerical simulations to be performed and the fast convergence of the optimization process.
翻译:数据驱动的翻版框架的常规方法基于高斯统计,这种统计存在严重困难,特别是在测量的外部值存在严重困难的情况下。在这项工作中,我们提供了在R'enyi、Tsallis和Kaniadakis统计中与普遍高斯分布相关的最大可能性估计值。在这方面,我们通过所谓的影响力功能分析每项提案的外部抗力。这样,我们通过构建与最大可能性估计值相联系的客观功能,形成了反向问题。为了证明通用方法的稳健性,我们认为,高噪音数据与峰值存在一个严重的地球物理反向问题。结果显示,当每个通用统计的引力指数与与与错误偏差反的客观功能相联系时,最佳数据反向性性能就会出现。我们争辩说,在这样的限制中,三种方法对外部值具有抗力,而且也具有等值,表明由于要进行的数字模拟的减少和优化过程的快速趋同性,反向过程的计算成本较低。