Generating nonnormal distributions via Gaussian mixture models

被引:1
|
作者
Morgan, Grant B. [1 ]
机构
[1] Baylor Univ, Waco, TX 76798 USA
关键词
Nonnormal data generation; mixture model; Monte Carlo; simulation; skewness; kurtosis; LATENT CLASS ANALYSIS; MONTE-CARLO;
D O I
10.1080/10705511.2020.1718502
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
The purpose of this paper is to (1) present a method of generating nonnormal univariate and/or uncorrelated multivariate distributions using mixture models, and (2) compare the accuracy of generating nonnormal distributions using the mixture-based method against power transformation method and generalized lambda method. Monte Carlo methods were used to generate data with each of the three nonnormal generation techniques to manipulate levels of skewness and kurtosis. Generally, all three methods produced relatively accurate levels of skewness, but the mixture-based method was most accurate in the vast majority of conditions. With respect to kurtosis, only the mixture model-based method produces distributions with kurtosis with trivial levels of bias, on average. The mixture-based method was the most stable also. An R function is also provided to allow users to generate distributions with specified mean, variance, skewness, and kurtosis.
引用
收藏
页码:964 / 974
页数:11
相关论文
共 50 条
  • [1] A Comparison of Different Nonnormal Distributions in Growth Mixture Models
    Son, Sookyoung
    Lee, Hyunjung
    Jang, Yoona
    Yang, Junyeong
    Hong, Sehee
    EDUCATIONAL AND PSYCHOLOGICAL MEASUREMENT, 2019, 79 (03) : 577 - 597
  • [2] Structural Equation Models and Mixture Models With Continuous Nonnormal Skewed Distributions
    Asparouhov, Tihomir
    Muthen, Bengt
    STRUCTURAL EQUATION MODELING-A MULTIDISCIPLINARY JOURNAL, 2016, 23 (01) : 1 - 19
  • [3] Pattern Recognition with Gaussian Mixture Models of Marginal Distributions
    Omachi, Masako
    Omachi, Shinichiro
    IEICE TRANSACTIONS ON INFORMATION AND SYSTEMS, 2011, E94D (02): : 317 - 324
  • [4] Boosting Gaussian Mixture Models via Discriminant Analysis
    Tang, Hao
    Huang, Thomas S.
    19TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION, VOLS 1-6, 2008, : 2372 - 2375
  • [5] Training Gaussian mixture models at scale via coresets
    Lucic, Mario
    Faulkner, Matthew
    Krause, Andreas
    Feldman, Dan
    Journal of Machine Learning Research, 2018, 18 : 1 - 25
  • [6] Training Gaussian Mixture Models at Scale via Coresets
    Lucic, Mario
    Faulkner, Matthew
    Krause, Andreas
    Feldman, Dan
    JOURNAL OF MACHINE LEARNING RESEARCH, 2018, 18
  • [7] Wireless Channel Prediction via Gaussian Mixture Models
    Turan, Nurettin
    Boeck, Benedikt
    Chan, Kai Jie
    Fesl, Benedikt
    Burmeister, Friedrich
    Joham, Michael
    Fettweis, Gerhard
    Utschick, Wolfgang
    27TH INTERNATIONAL WORKSHOP ON SMART ANTENNAS, WSA 2024, 2024, : 1 - 5
  • [8] Parametric Skeleton Generation via Gaussian Mixture Models
    Liu, Chang
    Luo, Dezhao
    Zhang, Yifei
    Ke, Wei
    Wan, Fang
    Ye, Qixiang
    2019 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS (CVPRW 2019), 2019, : 1167 - 1171
  • [9] Training Gaussian mixture models at scale via coresets
    Lucic, Mario
    Faulkner, Matthew
    Krause, Andreas
    Feldman, Dan
    Journal of Machine Learning Research, 2018, 18 : 1 - 25
  • [10] Growth Mixture Modeling With Nonnormal Distributions: Implications for Data Transformation
    Nam, Yeji
    Hong, Sehee
    EDUCATIONAL AND PSYCHOLOGICAL MEASUREMENT, 2021, 81 (04) : 698 - 727