Signal detection theory with finite mixture distributions: theoretical developments with applications to recognition memory
- PMID: 12374325
- DOI: 10.1037/0033-295x.109.4.710
Signal detection theory with finite mixture distributions: theoretical developments with applications to recognition memory
Abstract
An extension of signal detection theory (SDT) that incorporates mixtures of the underlying distributions is presented. The mixtures can be motivated by the idea that a presentation of a signal shifts the location of an underlying distribution only if the observer is attending to the signal; otherwise, the distribution is not shifted or is only partially shifted. Thus, trials with a signal presentation consist of a mixture of 2 (or more) latent classes of trials. Mixture SDT provides a general theoretical framework that offers a new perspective on a number of findings. For example, mixture SDT offers an alternative to the unequal variance signal detection model; it can also account for nonlinear normal receiver operating characteristic curves, as found in recent research.
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