| Literature DB >> 30735125 |
Sebastian Gluth1, Nachshon Meiran2,3.
Abstract
A key goal of model-based cognitive neuroscience is to estimate the trial-by-trial fluctuations of cognitive model parameters in order to link these fluctuations to brain signals. However, previously developed methods are limited by being difficult to implement, time-consuming, or model-specific. Here, we propose an easy, efficient and general approach to estimating trial-wise changes in parameters: Leave-One-Trial-Out (LOTO). The rationale behind LOTO is that the difference between parameter estimates for the complete dataset and for the dataset with one omitted trial reflects the parameter value in the omitted trial. We show that LOTO is superior to estimating parameter values from single trials and compare it to previously proposed approaches. Furthermore, the method makes it possible to distinguish true variability in a parameter from noise and from other sources of variability. In our view, the practicability and generality of LOTO will advance research on tracking fluctuations in latent cognitive variables and linking them to neural data.Entities:
Keywords: cognitive modeling; human; intra-individual variability; jackknife; leave-one-out; model-based cognitive neuroscience; neuroscience
Mesh:
Year: 2019 PMID: 30735125 PMCID: PMC6392499 DOI: 10.7554/eLife.42607
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140