“…Since the concept of NSD random variables was introduced by Hu [14], many applications for NSD random variables have been established. See, for example, Hu [14] for some basic properties and three structural theorems, Eghbal et al [9] for two maximal inequalities and a strong law of large numbers of quadratic forms of nonnegative NSD random variables, Eghbal et al [10] for some Kolmogorov inequalities for quadratic forms and weighted quadratic forms of nonnegative NSD uniformly bounded random variables, Shen et al [18] for the almost sure convergence and strong stability for weighted sums of NSD random variables, Wang et al [22] for the complete convergence of arrays of rowwise NSD random variables and the complete consistency for the estimator of nonparametric regression model based on NSD errors, Wang et al [23] for the complete convergence for weighted sums of NSD random variables and its application in the EV regression model, Shen et al [20] for some applications of the Rosenthal-type inequality for NSD random variables, Zhang [27] for the strong convergence property of Jamison weighted sums of NSD random variables, Naderi et al [17], Deng et al [8] and Zheng et al [28] for the complete convergence of weighted sums for NSD random variables, Shen et al [19] for the complete moment convergence for arrays of rowwise NSD random variables, Amini et al [2] for the complete convergence of moving average processes based on NSD sequences, among others.…”