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Same Test Better Scores: Boosting the Reliability of Short Online Intelligence Recruitment Tests with Nested Logit Item Response Theory Models

机译:相同的测试更高的分数:使用嵌套的Logit项目响应理论模型提高简短的在线智能招聘测试的可靠性

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摘要

Assessing job applicants’ general mental ability online poses psychometric challenges due to the necessity of having brief but accurate tests. Recent research (Myszkowski & Storme, 2018) suggests that recovering distractor information through Nested Logit Models (NLM; Suh & Bolt, 2010) increases the reliability of ability estimates in reasoning matrix-type tests. In the present research, we extended this result to a different context (online intelligence testing for recruitment) and in a larger sample (N=2949 job applicants). We found that the NLMs outperformed the Nominal Response Model (Bock, 1970) and provided significant reliability gains compared with their binary logistic counterparts. In line with previous research, the gain in reliability was especially obtained at low ability levels. Implications and practical recommendations are discussed.
机译:由于必须进行简短但准确的测试,在线评估求职者的一般心理能力会给心理测量带来挑战。最近的研究(Myszkowski&Storme,2018)建议通过嵌套Logit模型(NLM; Suh&Bolt,2010)恢复干扰物信息,可以提高推理矩阵类型测试中能力估计的可靠性。在本研究中,我们将此结果扩展到了不同的环境(用于招聘的在线情报测试)和更大的样本中( N = 2949 求职者) 。我们发现NLM优于名义响应模型(Bock,1970),与二元逻辑对等模型相比,其可靠性显着提高。与以前的研究一致,可靠性的提高尤其是在能力水平较低的情况下获得的。涵义和实际建议进行了讨论。

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