THE TAIL FUNCTIONS APPROACH TO CONFIDENCE ESTIMATION

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  This paper reviews the method of tail functions(TFs)for confidence estimation,starting with a seminal paper in the Canadian Journal of Statistics in 2006,and provides additional examples.
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