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Heteroscedastic Latent Trait Models for Dichotomous Data
被引:29
|作者:
Molenaar, Dylan
[1
]
机构:
[1] Univ Amsterdam, NL-1018 XA Amsterdam, Netherlands
关键词:
heteroscedasticity;
latent trait models;
item response theory;
two-parameter model;
non-normal latent variables;
MAXIMUM-LIKELIHOOD-ESTIMATION;
POSITIVE EXPONENT FAMILY;
RESPONSE MODEL;
MEASUREMENT INVARIANCE;
STANDARD ERRORS;
ITEM PARAMETERS;
COVARIANCE;
VARIABLES;
ABILITY;
ASSUMPTIONS;
D O I:
10.1007/s11336-014-9406-0
中图分类号:
O1 [数学];
学科分类号:
0701 ;
070101 ;
摘要:
Effort has been devoted to account for heteroscedasticity with respect to observed or latent moderator variables in item or test scores. For instance, in the multi-group generalized linear latent trait model, it could be tested whether the observed (polychoric) covariance matrix differs across the levels of an observed moderator variable. In the case that heteroscedasticity arises across the latent trait itself, existing models commonly distinguish between heteroscedastic residuals and a skewed trait distribution. These models have valuable applications in intelligence, personality and psychopathology research. However, existing approaches are only limited to continuous and polytomous data, while dichotomous data are common in intelligence and psychopathology research. Therefore, in present paper, a heteroscedastic latent trait model is presented for dichotomous data. The model is studied in a simulation study, and applied to data pertaining alcohol use and cognitive ability.
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页码:625 / 644
页数:20
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