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Novel regression methods for metacognition
- Publication Year :
- 2018
- Publisher :
- Cold Spring Harbor Laboratory, 2018.
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Abstract
- Metacognition is an important component in basic science and clinical psychology, often studied through complex, cognitive experiments. While Signal Detection Theory (SDT) provides a popular and pervasive framework for modelling responses from such experiments, a shortfall remains that it cannot in a straightforward manner account for the often complex designs. Additionally, SDT does not provide direct estimates of metacognitive ability. This latter shortcoming has recently been sought remedied by introduction of a measure for metacognitive sensitivity dubbed meta-d’. The need for a flexible regression model framework remains, however, which should also incorporate the new sensitivity measure. In the present paper, we argue that a straightforward extension of SDT is obtained by identifying the model with the proportional odds model, a widely implemented, ordinal regression technique. We go on to develop a formal statistical framework for metacognitive sensitivity by defining a model that combines standard SDT with meta-d’ in a latent variable model. We show how this agrees with the literature on meta-d’ and constitutes a practical framework for extending the model. We supply several teoretical considerations on the model, including closed-form approximate estimates of meta-d’ and optimal weighing of response-specific meta-sensitivities. We discuss regression analysis as an application of the obtained model and illustrate our points through simulations. Lastly, we presentR-software that implements the model. Our methods and their implementation extend the computational possibilities of SDT and meta-dand are useful for theoretical and practical researchers of metacognition.
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....56afa5092018fe1d7e6eb82120dff4fb
- Full Text :
- https://doi.org/10.1101/423947