Publications by authors named "T Zandt"

Article Synopsis
  • The discriminability measure is commonly used in psychology to assess sensitivity while avoiding response bias, but conventional estimation methods can distort results, especially when performance is perfect.
  • Distortion in these estimates can be influenced by various experimental design factors, such as trial numbers, sample size, and task difficulty, which may lead to misleading statistical conclusions.
  • To help researchers navigate these issues, the authors recommend simulating estimations and introduce an R Shiny application that allows users to assess and mitigate distortion in their data analyses.
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People's cooperativeness depends on many factors, such as their motives, cognition, experiences, and the situation they are in. To date, it is unclear how these factors interact and shape the decision to cooperate. We present a computational account of cooperation that not only provides insights for the design of effective incentive structures but also redefines neglected social-cognitive characteristics associated with attention-deficit hyperactivity disorder (ADHD).

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Most current sequential sampling models have random between-trial variability in their parameters. These sources of variability make the models more complex in order to fit response time data, do not provide any further explanation to how the data were generated, and have recently been criticised for allowing infinite flexibility in the models. To explore and test the need of between-trial variability parameters we develop a simple sequential sampling model of N-choice speeded decision making: the racing diffusion model.

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The ultimate test of the validity of a cognitive theory is its ability to predict patterns of empirical data. Cognitive models formalize this test by making specific processing assumptions that yield mathematical predictions, and the mathematics allow the models to be fitted to data. As the field of cognitive science has grown to address increasingly complex problems, so too has the complexity of models increased.

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