The linear combination of Student's $t$ random variables (RVs) appears in many statistical applications. Unfortunately, the Student's $t$ distribution is not closed under convolution, thus, deriving an exact and general distribution for the linear combination of $K$ Student's $t$ RVs is infeasible, which motivates a fitting/approximation approach. Here, we focus on the scenario where the only constraint is that the number of degrees of freedom of each $t-$RV is greater than two. Notice that since the odd moments/cumulants of the Student's $t$ distribution are zero, and the even moments/cumulants do not exist when their order is greater than the number of degrees of freedom, it becomes impossible to use conventional approaches based on moments/cumulants of order one or higher than two. To circumvent this issue, herein we propose fitting such a distribution to that of a scaled Student's $t$ RV by exploiting the second moment together with either the first absolute moment or the characteristic function (CF). For the fitting based on the absolute moment, we depart from the case of the linear combination of $K= 2$ Student's $t$ RVs and then generalize to $K\ge 2$ through a simple iterative procedure. Meanwhile, the CF-based fitting is direct, but its accuracy (measured in terms of the Bhattacharyya distance metric) depends on the CF parameter configuration, for which we propose a simple but accurate approach. We numerically show that the CF-based fitting usually outperforms the absolute moment -based fitting and that both the scale and number of degrees of freedom of the fitting distribution increase almost linearly with $K$.
翻译:在许多统计应用中,学生随机变量(RV)的线性组合为$美元。 不幸的是,学生的美元分配在变幻不定的情况下并没有结束,因此,学生的美元分配在线性组合为$$tRV的精确和一般分布是行不通的,这促使采用一个适当/接近的方法。在这里,我们集中关注一个唯一的限制是每张美元-RV的自由度超过2的情景。注意到自学生的美元分配奇特时刻/累积值在变幻不定的情况下没有结束,因此,当学生的美元分配在水平上高于学生的自由度的直线组合为$ttRV, 因而无法使用基于时间/时间/时间上的常规方法。为了绕开这个问题,我们建议通过利用第二个时刻与第一个绝对时刻或特征函数(CF)一起将学生的美元自由度的度调值调整为零,而当学生的绝对时间/时间/累积值在比值大于自由度的直线性分配值时,我们通常要用2K的直线性比例来显示其直径的比值的比值。