Publications
Reprint Requests
Just Do It: A Neuropsychological Theory of Agency, Cognition, Mood, and Dopamine.
Journal of Experimental Psychology: General. 153(6), 1582–1604.
(2024). On using the fixed-point property of binary mixtures to discriminate among models of recognition memory.
Journal of Mathematical Psychology. 123, 102889.
(2024). Computational cognitive neuroscience models of categorization.
In R. Sun (Ed.), The Cambridge Handbook of Computational Cognitive Sciences (pp.400-425). Cambridge University Press.
(2023). Encoding models in neuroimaging.
In F. G. Ashby, H. Colonius, & E. Dzhafarov (Eds.), The new handbook of mathematical psychology, Volume 3 (pp. 421-472). Cambridge University Press.
(2023). Length of the state trace: A method for partitioning model complexity.
Journal of Mathematical Psychology. 113, 102755.
(2023). Mathematical models of human learning.
In F. G. Ashby, H. Colonius, & E. Dzhafarov (Eds.), The new handbook of mathematical psychology, Volume 3 (pp. 163-217). Cambridge University Press.
(2023).
(2023). Statistical decision theory.
In F. G. Ashby, H. Colonius, & E. Dzhafarov (Eds.), The new handbook of mathematical psychology, Volume 3 (pp. 265-310). Cambridge University Press.
(2023). A general recognition theory model for identifying an ideal stimulus.
Attention, Perception, & Psychophysics. 84, 2408–2421.
(2022). Linear separability, irrelevant variability, and categorization difficulty.
Journal of Experimental Psychology: Learning, Memory, & Cognition. 48, 159-172.
(2022). State trace analysis: What it can and cannot do.
Journal of Mathematical Psychology. 108, 102655.
(2022). On what it means to automatize a rule.
Cognition. 226, 105168.
(2022). A neurocomputational theory of how rule-guided behaviors become automatic.
Psychological Review. 128, 488-508.
(2021). When instructions don't help: Knowing the optimal strategy facilitates rule-based but not information-integration category learning.
Journal of Experimental Psychology: Human Perception & Performance. 47, 1226-1236.
(2021). Dissociations between rule-based and information-integration categorization are not caused by differences in task difficulty.
Memory & Cognition. 48, 541-552.
(2020). Modulation of dopamine for adaptive learning: A neurocomputational model.
Computational Brain & Behavior. 1–19.
(2020). A role for the medial temporal lobes in category learning.
Learning & Memory. 27, 441-450.
(2020). A difficulty predictor for perceptual category learning.
Journal of Vision. 19(6), 20.
(2019). Novel representations that support rule-based categorization are acquired on-the-fly during category learning.
Psychological Research. 83, 544-566.
(2019). State-trace analysis misinterpreted and misapplied: Reply to Stephens, Matzke, and Hayes (2019).
Journal of Mathematical Psychology. 91, 195-200.
(2019).
(2019). Testing analogical rule transfer in pigeons (Columba livia).
Cognition. 183, 256-268.
(2019). The categorization experiment: Experimental design and data analysis.
In E. J. Wagenmakers & J. T. Wixted (Eds.), Stevens handbook of experimental psychology and cognitive neuroscience, Fourth Edition, Volume Five: Methodology. New York: Wiley. 307-.
(2018). Computational cognitive neuroscience.
In W. Batchelder, H. Colonius, E. Dzhafarov, & J. Myung (Eds.), New handbook of mathematical psychology, Volume 2. NY: Cambridge University Press. 223-270.
(2018). Increased cognitive load enables unlearning in procedural category learning.
Journal of Experimental Psychology: Learning, Memory, & Cognition. 44, 1845-1853.
(2018).