The bivariate Gaussian distribution has been a key model for many developments in statistics. However, many real-world phenomena generate data that follow asymmetric distributions, and consequently bivariate normal model is inappropriate in such situations. Bidimensional log-symmetric models have attractive properties and can be considered as good alternatives in these cases. In this paper, we discuss bivariate log-symmetric distributions and their characterizations. We establish several distributional properties and obtain the maximum likelihood estimators of the model parameters. A Monte Carlo simulation study is performed for examining the performance of the developed parameter estimation method. A real data set is finally analyzed to illustrate the proposed model and the associated inferential method.
翻译:两维对称模型具有吸引力,在这些情况下可被视为良好的替代方法。在本文件中,我们讨论双变量对称分布及其特征。我们建立了若干分布属性,并获得模型参数的最大可能性估计值。我们进行了蒙特卡洛模拟研究,以审查已开发的参数估计方法的性能。最后对真实数据集进行了分析,以说明拟议的模型和相关推论方法。