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Yi-Shin Lin
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Dynamic models of choice
A Heathcote, YS Lin, A Reynolds, L Strickland, M Gretton, D Matzke
Behavior research methods 51, 961-985, 2019
1702019
The quality of response time data inference: A blinded, collaborative assessment of the validity of cognitive models
G Dutilh, J Annis, SD Brown, P Cassey, NJ Evans, RPPP Grasman, ...
Psychonomic bulletin & review 26, 1051-1069, 2019
1532019
Serial versus parallel search: A model comparison approach based on reaction time distributions
V Narbutas, YS Lin, M Kristan, D Heinke
Visual Cognition 25 (1-3), 306-325, 2017
252017
Parallel probability density approximation
YS Lin, A Heathcote, WR Holmes
Behavior Research Methods 51, 2777-2799, 2019
142019
Evidence accumulation models with R: A practical guide to hierarchical Bayesian methods
YS Lin, L Strickland
The Quantitative Methods for Psychology 16 (2), 133-153, 2020
132020
Explaining human interactions on the road by large-scale integration of computational psychological theory
G Markkula, YS Lin, AR Srinivasan, J Billington, M Leonetti, AH Kalantari, ...
PNAS nexus 2 (6), pgad163, 2023
122023
Explaining human interactions on the road requires large-scale integration of psychological theory
G Markkula, AR Srinivasan, J Billington, M Leonetti, AH Kalantari, Y Yang, ...
PsyArXiv, 2022
112022
Comparing merging behaviors observed in naturalistic data with behaviors generated by a machine learned model
AR Srinivasan, M Hasan, YS Lin, M Leonetti, J Billington, R Romano, ...
2021 IEEE International Intelligent Transportation Systems Conference (ITSC …, 2021
92021
Modeling visual search using three-parameter probability functions in a hierarchical Bayesian framework
YS Lin, D Heinke, GW Humphreys
Attention, Perception, & Psychophysics 77, 985-1010, 2015
92015
Beyond RMSE: Do machine-learned models of road user interaction produce human-like behavior?
AR Srinivasan, YS Lin, M Antonello, A Knittel, M Hasan, M Hawasly, ...
IEEE Transactions on Intelligent Transportation Systems, 2023
82023
DMC: Dynamic models of choice
A Heathcote, Y Lin, M Gretton
Retrieved from osf. io/pbwx8, 2017
82017
A utility maximization model of pedestrian and driver interactions
YS Lin, AR Srinivasan, M Leonetti, J Billington, G Markkula
IEEE Access 10, 118888-118899, 2022
42022
The COMMOTIONS Urban Interactions Driving Simulator Study Dataset
AR Srinivasan, J Schumann, Y Wang, YS Lin, M Daly, A Solernou, ...
arXiv preprint arXiv:2305.11909, 2023
32023
Investigating vehicle-pedestrian interactions at marked crossings: A comparison of two methodologies
AH Kalantari, YS Lin, A Mohammadi, N Merat, G Markkula
PsyArXiv, 2023
2023
The COMMOTIONS Urban Interactions Driving Simulator Study Dataset
A Ramakrishnan Srinivasan, J Schumann, Y Wang, YS Lin, M Daly, ...
arXiv e-prints, arXiv: 2305.11909, 2023
2023
Beyond RMSE: Do machine-learned models of road user interaction produce human-like behavior?
A Ramakrishnan Srinivasan, YS Lin, M Antonello, A Knittel, M Hasan, ...
arXiv e-prints, arXiv: 2206.11110, 2022
2022
Comparing merging behaviors observed in naturalistic data with behaviors generated by a machine learned model
A Ramakrishnan Srinivasan, M Hasan, YS Lin, M Leonetti, J Billington, ...
arXiv e-prints, arXiv: 2104.10496, 2021
2021
Decision making in visual search: a dual-modelling approach to examine the influences of attentional templates in response time distributions
Y Lin
University of Birmingham, 2015
2015
Method of Analysis and Inference
YS Lin, A Heathcote
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Articles 1–19