Document Type
Article
Source Publication Title
The Journal of Statistical and Econometric Methods
First Page
1
Last Page
44
Abstract
Power method (PM) polynomials have been used for simulating non-normal distributions in a variety of settings such as toxicology research, price risk, business-cycle features, microarray analysis, computer adaptive testing, and structural equation modeling. A majority of these applications are based on the method of matching product moments (e.g., skew and kurtosis). However, estimators of skew and kurtosis can be (a) substantially biased, (b) highly dispersed, or (c) influenced by outliers. To address this limitation, two families of double-uniform-PM and double-triangular-PM distributions are characterized through the method of ๐ฟ-moments using a doubling technique. The ๐ฟ-moment based procedure is contrasted with the method of product moments in the contexts of fitting real data and estimation of parameters. A methodology for simulating correlated double-uniform-PM and double-triangular-PM distributions with specified values of ๐ฟ-skew, ๐ฟ-kurtosis, and ๐ฟ-correlation is also demonstrated. Monte Carlo simulation results indicate that the L-moment-based estimators of ๐ฟ-skew, ๐ฟ-kurtosis, and ๐ฟ-correlation are superior to their product moment-based counterparts.
Disciplines
Curriculum and Instruction | Education
Publication Date
1-1-2017
Language
English
License
This work is licensed under a Creative Commons Attribution-NonCommercial-Share Alike 4.0 International License.
Recommended Citation
Pant, Mohan and Headrick, Todd C., "Simulating Uniform- and Triangular- Based Double Power Method Distributions" (2017). Curriculum and Instruction Faculty Publications. 72.
https://mavmatrix.uta.edu/curriculuminstruction_facpubs/72