It is well known that the computation of higher order statistics, like skewness and kurtosis, (which we call C-moments) is very dependent on sample size and is highly susceptible to the presence of outliers. To obviate these difficulties, Hosking (1990) has introduced related statistics called L-moments. We have investigated the relationship of these two measures in a number of different ways. Firstly, we show that probability density functions (pdf ) that are estimated from L-moments are superior estimates to those obtained using C-moments and the principle of maximum entropy. C-moments computed from these pdf's are not however, contrary to what one may have expected, better estimates than those estimated from sample statistics. L-moment d...
Accurate estimation of parameters of a probability distribution is of immense importance in statisti...
L-moments are based on the linear combinations of order statistics. The question of L-moments prese...
The first part of this article deals with fitting of regression equations for the sampling propertie...
In this thesis, we survey the concept of L-moments. We introduce the deflnition of L-moments and the...
In this thesis, we have studied L-moments and trimmed L-moments (TL-moments) which are both linear f...
L-moments are expected values of linear combinations of order statistics that provide robust alterna...
Classical estimation methods (least squares, the method of moments and maximum likelihood) work well...
To overcome drawbacks of central moments and comoment matrices usually used to characterize univaria...
Abstract This paper discusses comparisons of the LH moments method with L moments method. LH moments...
Several popular generalizations of expected utility theory - cumulative prospect theory, rank-depend...
Population L-moments have been proposed as alternatives to central moments for describing distributi...
L-moments are defined as linear combinations of expected values of order statistics of a variable.(H...
AbstractMultivariate statistical analysis relies heavily on moment assumptions of second order and h...
Moments and cumulants are commonly used to characterize the probability distribution or ob-served da...
© 2019 BIPM & IOP Publishing Ltd. Estimating the probability density function (pdf) from a limited s...
Accurate estimation of parameters of a probability distribution is of immense importance in statisti...
L-moments are based on the linear combinations of order statistics. The question of L-moments prese...
The first part of this article deals with fitting of regression equations for the sampling propertie...
In this thesis, we survey the concept of L-moments. We introduce the deflnition of L-moments and the...
In this thesis, we have studied L-moments and trimmed L-moments (TL-moments) which are both linear f...
L-moments are expected values of linear combinations of order statistics that provide robust alterna...
Classical estimation methods (least squares, the method of moments and maximum likelihood) work well...
To overcome drawbacks of central moments and comoment matrices usually used to characterize univaria...
Abstract This paper discusses comparisons of the LH moments method with L moments method. LH moments...
Several popular generalizations of expected utility theory - cumulative prospect theory, rank-depend...
Population L-moments have been proposed as alternatives to central moments for describing distributi...
L-moments are defined as linear combinations of expected values of order statistics of a variable.(H...
AbstractMultivariate statistical analysis relies heavily on moment assumptions of second order and h...
Moments and cumulants are commonly used to characterize the probability distribution or ob-served da...
© 2019 BIPM & IOP Publishing Ltd. Estimating the probability density function (pdf) from a limited s...
Accurate estimation of parameters of a probability distribution is of immense importance in statisti...
L-moments are based on the linear combinations of order statistics. The question of L-moments prese...
The first part of this article deals with fitting of regression equations for the sampling propertie...