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Abstract
In this paper we derive explicit algebraic expressions and some recurrence relations for both single and product moments of dual generalized order statistics from a family of J-shaped distribution. These relations generalize the results given by Zghoul (2010, 2011). Further, a characterization of this distribution through conditional expectation of dual generalized order statistics is given and some computational works are also carried out.
The concept of lower generalized order statistics was introduced by Pawlas and Szynal (2001). Later Burkschat et al. (2003) extensively studied and discussed it as a dual generalized order statistics to enable a common approach to descending ordered random variables like reversed order statistics, lower k records and lower Pfeifer records. In this paper we will consider the defined as follows:
Let, , , be the parameters such that
The random variables, are from an absolutely continuous distribution function with probability density function, if their joint has the form
In the present study, we have established explicit expressions and some recurrence relations for single and product moments of from a family of J-shaped distribution. These relations generalize the results given by Zghoul (2010, 2011). Further, a characterizing result of this distribution through conditional expectation of is stated and proved.
A random variable is said to have J-shaped distribution, if its is of the form
(1.4)
We will consider in this paper without loss of any generality , i.e.
Integrating above equation by parts and simplifying the resulting expression, we derive the relation given in (2.9). □
Remark 2.1
Putting and in (2.9), the recurrence relation for the single moments of order statistics of the J-shaped distribution can be obtained as
Replacing by, we getwhich verify the result of Zghoul (2010) for .
Remark 2.2
Setting and in (2.9), the relation for single moment of lower record values is deduced in the formand hence for lower records as obtained by Zghoul (2011).
Making use of relation in (1.7) and splitting the integral according with form, we have
(3.14)
where
(3.15)
Integrating by parts treating for integration and the rest of the integrand for differentiation yields
Upon substituting for and in Eq. (3.14) and then substituting the resulting expression for in (3.12) and simplifying, we derive the relations in (3.11). □
Again by setting, in (4.7), we getand hence the necessary part given in (4.3).
To prove sufficient part, we have from (4.1) and (4.3)
(4.8)
whereDifferentiating (4.8) both the sides with respect to, we getorTherefore,which proves thatFor the case when, from (4.2) by using the transformation, we obtain
Sufficiency part can be proved on the lines of case . □
Acknowledgements
The authors acknowledge with thanks both the referees and the Editor for their fruitful suggestions and comments which led to overall improvement in the manuscript. Authors are also thankful to Prof. A.H. Khan, Aligarh Muslim University, Aligarh, who helped in preparation of this manuscript.
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