scholarly journals Effect Size, Statistical Power, and Sample Size Requirements for the Bootstrap Likelihood Ratio Test in Latent Class Analysis

2014 ◽  
Vol 21 (4) ◽  
pp. 534-552 ◽  
Author(s):  
John J. Dziak ◽  
Stephanie T. Lanza ◽  
Xianming Tan
2012 ◽  
Vol 14 (2) ◽  
pp. 176-186 ◽  
Author(s):  
Camille Vong ◽  
Martin Bergstrand ◽  
Joakim Nyberg ◽  
Mats O. Karlsson

PLoS ONE ◽  
2021 ◽  
Vol 16 (6) ◽  
pp. e0253349
Author(s):  
Ana C. Guedes ◽  
Francisco Cribari-Neto ◽  
Patrícia L. Espinheira

Beta regressions are commonly used with responses that assume values in the standard unit interval, such as rates, proportions and concentration indices. Hypothesis testing inferences on the model parameters are typically performed using the likelihood ratio test. It delivers accurate inferences when the sample size is large, but can otherwise lead to unreliable conclusions. It is thus important to develop alternative tests with superior finite sample behavior. We derive the Bartlett correction to the likelihood ratio test under the more general formulation of the beta regression model, i.e. under varying precision. The model contains two submodels, one for the mean response and a separate one for the precision parameter. Our interest lies in performing testing inferences on the parameters that index both submodels. We use three Bartlett-corrected likelihood ratio test statistics that are expected to yield superior performance when the sample size is small. We present Monte Carlo simulation evidence on the finite sample behavior of the Bartlett-corrected tests relative to the standard likelihood ratio test and to two improved tests that are based on an alternative approach. The numerical evidence shows that one of the Bartlett-corrected typically delivers accurate inferences even when the sample is quite small. An empirical application related to behavioral biometrics is presented and discussed.


1977 ◽  
Vol 14 (4) ◽  
pp. 601-606
Author(s):  
Manohar U. Kalwani ◽  
Donald G. Morrison

The likelihood ratio test is presented as a natural method to test for the presence of “always buy” and “never buy” consumers. The purchase sequence lengths and sample sizes required to estimate the proportions of these buyers are determined by the use of simulated data. The method also is applied to two sets of well-known data. The empirical findings show that although more than half of the consumers never bought a given brand, the specific addition of a spike at p = 0 to provide for “never buy” consumers did not provide a superior fit over the no-spike model. The method also applies to advertising reach and frequency models used to estimate or detect the presence of “always read (watch)” and “never read (watch)” individuals.


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