内隐联想测验
心理学
答辩人
工件(错误)
公制(单位)
考试(生物学)
内部一致性
社会心理学
度量(数据仓库)
认知心理学
心理测量学
数据挖掘
计算机科学
临床心理学
古生物学
运营管理
神经科学
政治学
法学
经济
生物
作者
Anthony G. Greenwald,Brian A. Nosek,Mahzarin R. Banaji
标识
DOI:10.1037/0022-3514.85.2.197
摘要
In reporting Implicit Association Test (IAT) results, researchers have most often used scoring conventions described in the first publication of the IAT (A.G. Greenwald, D.E. McGhee, & J.L.K. Schwartz, 1998). Demonstration IATs available on the Internet have produced large data sets that were used in the current article to evaluate alternative scoring procedures. Candidate new algorithms were examined in terms of their (a) correlations with parallel self-report measures, (b) resistance to an artifact associated with speed of responding, (c) internal consistency, (d) sensitivity to known influences on IAT measures, and (e) resistance to known procedural influences. The best-performing measure incorporates data from the IAT's practice trials, uses a metric that is calibrated by each respondent's latency variability, and includes a latency penalty for errors. This new algorithm strongly outperforms the earlier (conventional) procedure.
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