Testing for implicit bias: Values, psychometrics, and science communication

Wiley Interdiscip Rev Cogn Sci. 2022 Sep;13(5):e1612. doi: 10.1002/wcs.1612. Epub 2022 Jun 7.

Abstract

Our understanding of implicit bias and how to measure it has yet to be settled. Various debates between cognitive scientists are unresolved. Moreover, the public's understanding of implicit bias tests continues to lag behind cognitive scientists'. These discrepancies pose potential problems. After all, a great deal of implicit bias research has been publicly funded. Further, implicit bias tests continue to feature in discourse about public- and private-sector policies surrounding discrimination, inequality, and even the purpose of science. We aim to do our part by reconstructing some of the recent arguments in ordinary language and then revealing some of the operative norms or values that are often hidden beneath the surface of these arguments. This may help the public learn more about the science of implicit bias. It may also help both laypeople and scientists reflect on the values, interests, and stakeholders involved in establishing, justifying, and communicating scientific research. This article is categorized under: Cognitive Biology > Social Development.

Keywords: affect misattribution procedure; evaluative priming task; implicit association test; implicit bias; indirect measurement; philosophy of cognitive science; philosophy of science; psychometrics; social psychology; values in science.

MeSH terms

  • Bias, Implicit*
  • Communication*
  • Humans
  • Psychometrics