We employ a general Monte Carlo method to test composite hypotheses of goodness-of-fit for several popular multivariate models that can accommodate both asymmetry and heavy tails. Specifically, we consider weighted L2-type tests based on a discrepancy measure involving the distance between empirical characteristic functions and thus avoid the need for employing corresponding population quantities which may be unknown or complicated to work with. The only requirements of our tests are that we should be able to draw samples from the distribution under test and possess a reasonable method of estimation of the unknown distributional parameters. Monte Carlo studies are conducted to investigate the performance of the test criteria in finite samples for several families of skewed distributions. Real-data examples are also included to illustrate our method.
翻译:我们采用蒙特卡洛通用方法,测试几个流行的、既能适应不对称又能适应重尾的多变模型的合宜性综合假设,具体地说,我们考虑根据经验特性功能之间距离的差异测量标准进行加权L2型测试,从而避免使用可能未知或工作复杂的相应人口数量。我们测试的唯一要求是,我们应该能够从测试中的分布中抽取样本,并拥有对未知分布参数的合理估计方法。我们进行了蒙特卡洛研究,以调查一些偏斜分布家庭在有限样本中测试标准的性能。还列举了真实数据实例,以说明我们的方法。</s>