Crossref Citations
This Book has been
cited by the following publications. This list is generated based on data provided by Crossref.
Kwisthout, Johan
and
van Rooij, Iris
2020.
Computational Resource Demands of a Predictive Bayesian Brain.
Computational Brain & Behavior,
Vol. 3,
Issue. 2,
p.
174.
Agrawal, Akanksha
and
Zehavi, Meirav
2020.
Computer Science – Theory and Applications.
Vol. 12159,
Issue. ,
p.
16.
Rich, Patricia
Blokpoel, Mark
de Haan, Ronald
and
van Rooij, Iris
2020.
How Intractability Spans the Cognitive and Evolutionary Levels of Explanation.
Topics in Cognitive Science,
Vol. 12,
Issue. 4,
p.
1382.
Martin, Andrea E.
2020.
A Compositional Neural Architecture for Language.
Journal of Cognitive Neuroscience,
Vol. 32,
Issue. 8,
p.
1407.
van Rooij, Iris
and
Baggio, Giosuè
2020.
Theory Development Requires an Epistemological Sea Change.
Psychological Inquiry,
Vol. 31,
Issue. 4,
p.
321.
van Rooij, Iris
and
Blokpoel, Mark
2020.
Formalizing Verbal Theories.
Social Psychology,
Vol. 51,
Issue. 5,
p.
285.
Wareham, Todd
and
Vardy, Andrew
2021.
The Computational Complexity of Designing Scalar-Field Sensing Robot Teams and Environments for Distributed Construction (Extended Abstract).
p.
232.
Love, Bradley C.
2021.
Levels of biological plausibility.
Philosophical Transactions of the Royal Society B: Biological Sciences,
Vol. 376,
Issue. 1815,
p.
20190632.
Rich, Patricia
Blokpoel, Mark
de Haan, Ronald
Otworowska, Maria
Sweers, Marieke
Wareham, Todd
and
van Rooij, Iris
2021.
Naturalism, tractability and the adaptive toolbox.
Synthese,
Vol. 198,
Issue. 6,
p.
5749.
Pantsar, Markus
2021.
Descriptive Complexity, Computational Tractability, and the Logical and Cognitive Foundations of Mathematics.
Minds and Machines,
Vol. 31,
Issue. 1,
p.
75.
van Rooij, Iris
and
Baggio, Giosuè
2021.
Theory Before the Test: How to Build High-Verisimilitude Explanatory Theories in Psychological Science.
Perspectives on Psychological Science,
Vol. 16,
Issue. 4,
p.
682.
Tsotsos, John
2022.
When We Study the Ability to Attend, What Exactly Are We Trying to Understand?.
Journal of Imaging,
Vol. 8,
Issue. 8,
p.
212.
Reichman, Daniel
Lieder, Falk
Bourgin, David D.
Talmon, Nimrod
and
Griffiths, Thomas L.
2023.
The Computational Challenges of Means Selection Problems: Network Structure of Goal Systems Predicts Human Performance.
Cognitive Science,
Vol. 47,
Issue. 8,
Adolfi, Federico
Wareham, Todd
and
van Rooij, Iris
2023.
A Computational Complexity Perspective on Segmentation as a Cognitive Subcomputation.
Topics in Cognitive Science,
Vol. 15,
Issue. 2,
p.
255.
Schumacher, Lukas
Bürkner, Paul-Christian
Voss, Andreas
Köthe, Ullrich
and
Radev, Stefan T.
2023.
Neural superstatistics for Bayesian estimation of dynamic cognitive models.
Scientific Reports,
Vol. 13,
Issue. 1,
Martínez, Manolo
2024.
The Information‐Processing Perspective on Categorization.
Cognitive Science,
Vol. 48,
Issue. 2,
van Rooij, Iris
Guest, Olivia
Adolfi, Federico
de Haan, Ronald
Kolokolova, Antonina
and
Rich, Patricia
2024.
Reclaiming AI as a Theoretical Tool for Cognitive Science.
Computational Brain & Behavior,
Vol. 7,
Issue. 4,
p.
616.
Carchidi, Vincent J.
2024.
Creative minds like ours? Large Language Models and the creative aspect of language use.
Biolinguistics,
Vol. 18,
Issue. ,
Alonso-Diaz, Santiago
2024.
A human-like artificial intelligence for mathematics.
Mind & Society,
Vol. 23,
Issue. 1-2,
p.
79.
Franco, Juan Pablo
Bossaerts, Peter
Murawski, Carsten
and
Marinazzo, Daniele
2024.
The neural dynamics associated with computational complexity.
PLOS Computational Biology,
Vol. 20,
Issue. 9,
p.
e1012447.