Title of article :
Extreme quantile estimation using order statistics with minimum cross-entropy principle
Author/Authors :
Pandey، نويسنده , , M.D.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Pages :
12
From page :
31
To page :
42
Abstract :
The paper presents a general approach to the estimation of the quantile function of a non-negative random variable using the principle of minimum cross-entropy (CrossEnt) subject to constraints specified in terms of expectations of order statistics estimated from observed data. ionally CrossEnt is used for estimating the probability density function under specified moment constraints. In such analyses, consideration of higher order moments is important for accurate modelling of the distribution tail. Since the higher order (>2) moment estimates from a small sample of data tend to be highly biased and uncertain, the use of CrossEnt quantile estimates in extreme value analysis is fairly limited. esent paper is an attempt to overcome this problem via the use of probability weighted moments (PWMs), which are essentially the expectations of order statistics. In contrast with ordinary statistical moments, higher order PWMs can be accurately estimated from small samples. By interpreting a PWM as the moment of quantile function, the paper derives an analytical form of quantile function using the CrossEnt principle. Monte Carlo simulations are performed to assess the accuracy of CrossEnt quantile estimates obtained from small samples.
Keywords :
probability , Extreme value analysis , Order statistics , Quantile function , entropy , Information theory , Minimum cross-entropy principle , Probability weighted moment , Pareto distribution
Journal title :
Probabilistic Engineering Mechanics
Serial Year :
2001
Journal title :
Probabilistic Engineering Mechanics
Record number :
1567194
Link To Document :
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