Crossref Citations
This Book has been
cited by the following publications. This list is generated based on data provided by Crossref.
Mechera-Ostrovsky, Tehilla
and
Gluth, Sebastian
2018.
Memory Beliefs Drive the Memory Bias on Value-based Decisions.
Scientific Reports,
Vol. 8,
Issue. 1,
Lee, Michael D.
2018.
Bayesian methods for analyzing true-and-error models.
Judgment and Decision Making,
Vol. 13,
Issue. 6,
p.
622.
McBee, Matthew T.
and
Makel, Matthew C.
2019.
The Quantitative Implications of Definitions of Giftedness.
AERA Open,
Vol. 5,
Issue. 1,
p.
233285841983100.
Lee, Michael D.
Criss, Amy H.
Devezer, Berna
Donkin, Christopher
Etz, Alexander
Leite, Fábio P.
Matzke, Dora
Rouder, Jeffrey N.
Trueblood, Jennifer S.
White, Corey N.
and
Vandekerckhove, Joachim
2019.
Robust Modeling in Cognitive Science.
Computational Brain & Behavior,
Vol. 2,
Issue. 3-4,
p.
141.
Oberauer, Klaus
and
Lewandowsky, Stephan
2019.
Addressing the theory crisis in psychology.
Psychonomic Bulletin & Review,
Vol. 26,
Issue. 5,
p.
1596.
Kangasrääsiö, Antti
Jokinen, Jussi P. P.
Oulasvirta, Antti
Howes, Andrew
and
Kaski, Samuel
2019.
Parameter Inference for Computational Cognitive Models with Approximate Bayesian Computation.
Cognitive Science,
Vol. 43,
Issue. 6,
Steingroever, Helen
Jepma, Marieke
Lee, Michael D.
Jansen, Brenda R. J.
and
Huizenga, Hilde M.
2019.
Detecting Strategies in Developmental Psychology.
Computational Brain & Behavior,
Vol. 2,
Issue. 2,
p.
128.
Palmeri, Thomas J.
2019.
On Testing and Developing Cognitive Models.
Computational Brain & Behavior,
Vol. 2,
Issue. 3-4,
p.
193.
Gluth, Sebastian
and
Meiran, Nachshon
2019.
Leave-One-Trial-Out, LOTO, a general approach to link single-trial parameters of cognitive models to neural data.
eLife,
Vol. 8,
Issue. ,
Poirier, Marie
Yearsley, James M.
Saint-Aubin, Jean
Fortin, Claudette
Gallant, Geneviève
and
Guitard, Dominic
2019.
Dissociating visuo-spatial and verbal working memory: It’s all in the features.
Memory & Cognition,
Vol. 47,
Issue. 4,
p.
603.
Kimmons, Royce
and
Johnstun, Kevin
2019.
Navigating Paradigms in Educational Technology.
TechTrends,
Vol. 63,
Issue. 5,
p.
631.
Wilson, Robert C
and
Collins, Anne GE
2019.
Ten simple rules for the computational modeling of behavioral data.
eLife,
Vol. 8,
Issue. ,
Villarreal, Manuel
Velázquez, Carlos
Baroja, José L.
Segura, Alejandro
Bouzas, Arturo
and
Lee, Michael D.
2019.
Bayesian methods applied to the generalized matching law.
Journal of the Experimental Analysis of Behavior,
Vol. 111,
Issue. 2,
p.
252.
Schürmann, Tim
Vogt, Joachim
Christ, Oliver
and
Beckerle, Philipp
2019.
The Bayesian causal inference model benefits from an informed prior to predict proprioceptive drift in the rubber foot illusion.
Cognitive Processing,
Vol. 20,
Issue. 4,
p.
447.
Hurlstone, Mark J.
2019.
Functional similarities and differences between the coding of positional information in verbal and spatial short-term order memory.
Memory,
Vol. 27,
Issue. 2,
p.
147.
Schürmann, Tim
and
Beckerle, Philipp
2020.
Personalizing Human-Agent Interaction Through Cognitive Models.
Frontiers in Psychology,
Vol. 11,
Issue. ,
Madan, Christopher R.
Knight, Aubrey G.
Kensinger, Elizabeth A.
and
Mickley Steinmetz, Katherine R.
2020.
Affect enhances object-background associations: evidence from behaviour and mathematical modelling.
Cognition and Emotion,
Vol. 34,
Issue. 5,
p.
960.
Schürmann, Tim
Gerber, Nina
and
Gerber, Paul
2020.
Benefits of formalized computational modeling for understanding user behavior in online privacy research.
Journal of Intellectual Capital,
Vol. 21,
Issue. 3,
p.
431.
Park, Jungtak
Yoon, Hee-Dong
Yoo, Taehyun
Shin, Minho
and
Jeon, Hyeon-Ae
2020.
Potential and efficiency of statistical learning closely intertwined with individuals’ executive functions: a mathematical modeling study.
Scientific Reports,
Vol. 10,
Issue. 1,
Lin, Yi-Shin
and
Strickland, Luke
2020.
Evidence accumulation models with R: A practical guide to hierarchical Bayesian methods.
The Quantitative Methods for Psychology,
Vol. 16,
Issue. 2,
p.
133.