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Activity Number: 444 - Recent Advances in Statistical Methodology for Big Data
Type: Contributed
Date/Time: Thursday, August 12, 2021 : 4:00 PM to 5:50 PM
Sponsor: IMS
Abstract #319056
Title: The Parametric Weight Functions for the Analysis of Size-Biased Data Using the Weighted Lognormal Distribution and Related Estimation Procedures
Author(s): Makarand V Ratnaparkhi*
Companies: Wright State University
Keywords: Parametric weight functions; weighted lognormal distribution; oil-field exploration and survival data analysis; comparison of estimates; KL divergence
Abstract:

The weighed version g(x ) of the original p.d.f. f(x) of a r.v. X is defined as g(x)=w(x) f(x)/E[w(X)] where w(x) > 0 and E[w(X)] < infinity. The weighted distributions are considered for modelling the size-biased data where the probability of inclusion of the observation in the sample depends on its magnitude. In most of the data analyses studies, that are reported in the related publications, the weight function w(x) = x^k where k is a suitable constant that is thought as useful for accommodating the size-biasedness. In this presentation, k is considered as a parameter instead of a known constant. In particular, a number of different weighted versions of the lognormal distribution with usual parameters (mu, sigma) are defined using the weight function w(x,k) where k is a function of mu or sigma or both. Further, to demonstrate their usefulness these weighed lognormal distributions are fitted to the data arising in (1) oil -field exploration, and(2)the survival data analysis. The corresponding estimates of the parameters are obtained and compared. The effect of weight function on KL divergence is investigated for related applications.


Authors who are presenting talks have a * after their name.

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