A novel statistical method is proposed and investigated for estimating a heavy tailed density under mild smoothness assumptions. Statistical analyses of heavy-tailed distributions are susceptible to the problem of sparse information in the tail of the distribution getting washed away by unrelated features of a hefty bulk. The proposed Bayesian method avoids this problem by incorporating smoothness and tail regularization through a carefully specified semiparametric prior distribution, and is able to consistently estimate both the density function and its tail index at near minimax optimal rates of contraction. A joint, likelihood driven estimation of the bulk and the tail is shown to help improve uncertainty assessment in estimating the tail index parameter and offer more accurate and reliable estimates of the high tail quantiles compared to thresholding methods.
翻译:提议并调查一种新的统计方法,以在轻度平滑假设下估计重尾密度; 重尾分配的统计分析容易引起分配尾部信息稀少的问题,因为散装物的不相干特征会冲走; 拟议的巴伊西亚方法通过仔细规定的前半参数分布,将平稳和尾部正规化纳入其中,从而避免了这一问题,并且能够以接近最优收缩率的最小速率一致估计密度函数及其尾部指数; 对散装物和尾部进行联合、可能性驱动的估算,有助于在估计尾部指数参数时改进不确定性评估,并比起限法更准确和可靠地估计高尾尾数。