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The revelation effect for autobiographical memory : a mixture-model analysis

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  • Bernstein, Daniel M.
  • Rudd, Michael E.
  • Erdfelder, Edgar
  • Godfrey, Ryan
  • Loftus, Elizabeth F.
Abstract
Participants provided information about their childhood by rating the confidence that they had experienced various events (e.g., 'broke a window playing ball'). On some trials, participants unscrambled a key word from the event-phrase (e.g., wdinwo – window) or an unrelated word (e.g., gnutge – nugget) before seeing the event and giving their confidence rating. Unscrambling led participants to increase their confidence that the event occurred in their childhood, but only when the confidence rating immediately followed the act of unscrambling. This increase in confidence mirrors the “revelation effect” observed in word recognition experiments. We analyze our data using a new signal detection mixture distribution model which does not require that the researcher knows the veracity of memory judgments a priori. Our analysis reveals that unscrambling a key word or an unrelated word affects response bias and discriminability in autobiographical memory tests in ways that are very similar to those that have been previously found for word recognition tasks.

Suggested Citation

  • Bernstein, Daniel M. & Rudd, Michael E. & Erdfelder, Edgar & Godfrey, Ryan & Loftus, Elizabeth F., 2008. "The revelation effect for autobiographical memory : a mixture-model analysis," Papers 08-25, Sonderforschungsbreich 504.
  • Handle: RePEc:mnh:spaper:2314
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    File URL: https://madoc.bib.uni-mannheim.de/2314/1/dp08_25.pdf
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    References listed on IDEAS

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    1. Jeffrey Rouder & Jun Lu & Dongchu Sun & Paul Speckman & Richard Morey & Moshe Naveh-Benjamin, 2007. "Signal Detection Models with Random Participant and Item Effects," Psychometrika, Springer;The Psychometric Society, vol. 72(4), pages 621-642, December.
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