In many practical scenarios, including finance, environmental sciences, system reliability, etc., it is often of interest to study the various notion of negative dependence among the observed variables. A new bivariate copula is proposed for modeling negative dependence between two random variables that complies with most of the popular notions of negative dependence reported in the literature. Specifically, the Spearman's rho and the Kendall's tau for the proposed copula have a simple one-parameter form with negative values in the full range. Some important ordering properties comparing the strength of negative dependence with respect to the parameter involved are considered. Simple examples of the corresponding bivariate distributions with popular marginals are presented. Application of the proposed copula is illustrated using a real data set on air quality in the New York City, USA.
翻译:在包括金融、环境科学、系统可靠性等在内的许多实际假设中,研究观测到的变量的负依赖性的各种概念往往很有意义。建议采用新的双变相合差来模拟符合文献中所报告的大多数流行的负依赖性概念的两个随机变量之间的负依赖性。具体地说,Spearman的rho和Kendall的用于拟议的相色板的tau有一个简单的单数表,其整个范围内的负值为负值。一些与所涉参数的负依赖性强度相比较的重要定购属性得到了考虑。介绍了与流行边缘相对应的双变相分布的简单例子。用美国纽约市空气质量的一套真实数据来说明拟议的相色板的应用情况。