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Identification of the 1PL Model with Guessing Parameter: Parametric and Semi-parametric Results

机译:带有猜测参数的1PL模型的识别:参数和半参数结果

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摘要

In this paper, we study the identification of a particular case of the 3PL model, namely when the discrimination parameters are all constant and equal to 1. We term this model, 1PL-G model. The identification analysis is performed under three different specifications. The first specification considers the abilities as unknown parameters. It is proved that the item parameters and the abilities are identified if a difficulty parameter and a guessing parameter are fixed at zero. The second specification assumes that the abilities are mutually independent and identically distributed according to a distribution known up to the scale parameter. It is shown that the item parameters and the scale parameter are identified if a guessing parameter is fixed at zero. The third specification corresponds to a semi-parametric 1PL-G model, where the distribution G generating the abilities is a parameter of interest. It is not only shown that, after fixing a difficulty parameter and a guessing parameter at zero, the item parameters are identified, but also that under those restrictions the distribution G is not identified. It is finally shown that, after introducing two identification restrictions, either on the distribution G or on the item parameters, the distribution G and the item parameters are identified provided an infinite quantity of items is available.
机译:在本文中,我们研究识别3PL模型的一种特殊情况,即当鉴别参数都恒定且等于1时。我们将此模型称为1PL-G模型。鉴定分析是在三种不同的规格下进行的。第一个规范将能力视为未知参数。证明了如果难度参数和猜测参数固定为零,则可以识别项目参数和能力。第二个规范假定这些能力是相互独立的,并且根据规模参数已知的分布来相同地分布。示出了如果猜测参数固定为零,则识别出物品参数和比例参数。第三规范对应于半参数1PL-G模型,其中生成能力的分布G是关注的参数。不仅示出了在将难度参数和猜测参数固定为零之后,识别出项目参数,而且还示出了在那些限制下未识别出分布G。最终表明,在引入两个关于分布G或项目参数的识别限制之后,只要有无限数量的项目可用,就可以识别分布G和项目参数。

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  • 来源
    《Psychometrika》 |2013年第2期|341-379|共39页
  • 作者单位

    Faculty of Mathematics Pontificia Universidad Católica de Chile">(1);

    Faculty of Education Pontificia Universidad Católica de Chile">(2);

    Measurement Center MIDE UC">(3);

    CEPPE">(4);

    Institut de statistique biostatistique et sciences actuarielles Université catholique de Louvain">(5);

    Department of Statistics Universidad de Concepción">(6);

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