Brain-wide representations of prior information in mouse decision-making
暂无分享,去创建一个
Julia M. Huntenburg | Tatiana A. Engel | Jonathan W. Pillow | Eric E. J. DeWitt | Nicholas A. Steinmetz | Matthew R Whiteway | Anne E. Urai | Christopher S. Krasniak | Guido T. Meijer | Nathaniel J. Miska | Ilana B. Witten | Gaëlle A. Chapuis | P. Dayan | L. Paninski | M. Carandini | A. Pouget | J. Pillow | K. Harris | Cyrille Rossant | M. Häusser | P. Latham | A. Churchland | I. Fiete | A. Zador | Z. Mainen | S. Hofer | T. Mrsic-Flogel | Luigi Acerbi | Charles Findling | Jean-Paul Noel | N. Roth | Anup Khanal | S. West | N. Bonacchi | M. Wells | Mayo Faulkner | Christopher Langdon | Julius Benson | Fei Hu | Alejandro Pan-Vazquez | Olivier Winter | Yan Shi | Rylan Schaeffer | Daniel Birman | P. Lau | K. Svoboda | Brandon Benson | Y. Dan | Charline Tessereau | Berk Gerçek | Michael Schartner | Karolina Z Socha | Joana A Catarino | Michele Fabbri | Laura Freitas-Silva | Félix Hubert | Kaitlin Nylund
[1] Julia M. Huntenburg,et al. A Brain-Wide Map of Neural Activity during Complex Behaviour , 2023, bioRxiv.
[2] A. Funamizu,et al. Localized and global computation for integrating prior value and sensory evidence in the mouse cerebral cortex , 2023, bioRxiv.
[3] Julia M. Huntenburg,et al. Lightning Pose: improved animal pose estimation via semi-supervised learning, Bayesian ensembling, and cloud-native open-source tools , 2023, bioRxiv.
[4] F. Helmchen,et al. Behavior-relevant top-down cross-modal predictions in mouse neocortex , 2023, bioRxiv.
[5] Joonyeol Lee,et al. Frontal-to-visual information flow explains predictive motion tracking , 2023, NeuroImage.
[6] HyungGoo R. Kim,et al. Prior expectation enhances sensorimotor behavior by modulating population tuning and subspace activity in the sensory cortex , 2022, bioRxiv.
[7] M. Lebreton,et al. The computational roots of positivity and confirmation biases in reinforcement learning , 2022, Trends in Cognitive Sciences.
[8] Richard D. Lange,et al. Task-induced neural covariability as a signature of approximate Bayesian learning and inference , 2022, PLoS Comput. Biol..
[9] K. Katahira,et al. Dissociation between asymmetric value updating and perseverance in human reinforcement learning , 2021, Scientific Reports.
[10] K. Harris. Nonsense correlations in neuroscience , 2020, bioRxiv.
[11] Nicholas A. Roy,et al. Mice alternate between discrete strategies during perceptual decision-making , 2020, bioRxiv.
[12] Leenoy Meshulam,et al. Reverse-engineering Recurrent Neural Network solutions to a hierarchical inference task for mice , 2020, bioRxiv.
[13] L. Ng,et al. The Allen Mouse Brain Common Coordinate Framework: A 3D Reference Atlas , 2020, Cell.
[14] Fanny Cazettes,et al. Standardized and reproducible measurement of decision-making in mice , 2020, bioRxiv.
[15] D. Hassabis,et al. A distributional code for value in dopamine-based reinforcement learning , 2020, Nature.
[16] Charu Bai Reddy,et al. Dopaminergic and Prefrontal Basis of Learning from Sensory Confidence and Reward Value , 2019, Neuron.
[17] Johannes M. Mayrhofer,et al. Distinct Contributions of Whisker Sensory Cortex and Tongue-Jaw Motor Cortex in a Goal-Directed Sensorimotor Transformation , 2019, Neuron.
[18] Y. Niv. Learning task-state representations , 2019, Nature Neuroscience.
[19] Guillaume Hennequin,et al. Cortical-like dynamics in recurrent circuits optimized for sampling-based probabilistic inference , 2019, Nature Neuroscience.
[20] Alexandre Pouget,et al. The impact of learning on perceptual decisions and its implication for speed-accuracy tradeoffs , 2018, bioRxiv.
[21] M. Landy,et al. Human online adaptation to changes in prior probability , 2018, bioRxiv.
[22] Kevin M. Cury,et al. DeepLabCut: markerless pose estimation of user-defined body parts with deep learning , 2018, Nature Neuroscience.
[23] Wei Ji Ma,et al. A neural basis of probabilistic computation in visual cortex , 2018, Nature Neuroscience.
[24] Y. Loewenstein,et al. Striatal action-value neurons reconsidered , 2017, bioRxiv.
[25] Maria V. Sanchez-Vives,et al. Lateral orbitofrontal cortex anticipates choices and integrates prior with current information , 2017, Nature Communications.
[26] Renaud Jardri,et al. Experimental evidence for circular inference in schizophrenia , 2017, Nature Communications.
[27] Adrian G Bondy,et al. Feedback Determines the Structure of Correlated Variability in Primary Visual Cortex , 2016, Nature Neuroscience.
[28] Christopher Summerfield,et al. Encoding of Stimulus Probability in Macaque Inferior Temporal Cortex , 2016, Current Biology.
[29] Eero P. Simoncelli,et al. Efficient Sensory Encoding and Bayesian Inference with Heterogeneous Neural Populations , 2014, Neural Computation.
[30] József Fiser,et al. Perceptual Decision-Making as Probabilistic Inference by Neural Sampling , 2014, Neuron.
[31] J. Kruschke. Bayesian estimation supersedes the t test. , 2013, Journal of experimental psychology. General.
[32] Gail M. Sullivan,et al. Using Effect Size-or Why the P Value Is Not Enough. , 2012, Journal of graduate medical education.
[33] Janneke F. M. Jehee,et al. Less Is More: Expectation Sharpens Representations in the Primary Visual Cortex , 2012, Neuron.
[34] G. DeAngelis,et al. Neural Correlates of Prior Expectations of Motion in the Lateral Intraparietal and Middle Temporal Areas , 2012, The Journal of Neuroscience.
[35] Kathleen A. Hansen,et al. Human Brain Activity Predicts Individual Differences in Prior Knowledge Use during Decisions , 2012, Journal of Cognitive Neuroscience.
[36] R. Ratcliff,et al. Bias in the Brain: A Diffusion Model Analysis of Prior Probability and Potential Payoff , 2012, The Journal of Neuroscience.
[37] Andrew D. Zaharia,et al. The Detection of Visual Contrast in the Behaving Mouse , 2011, The Journal of Neuroscience.
[38] Timothy D. Hanks,et al. Elapsed Decision Time Affects the Weighting of Prior Probability in a Perceptual Decision Task , 2011, The Journal of Neuroscience.
[39] Scott D. Brown,et al. The Neural Substrate of Prior Information in Perceptual Decision Making: A Model-Based Analysis , 2010, Front. Hum. Neurosci..
[40] Karl J. Friston,et al. Bayesian model selection for group studies , 2009, NeuroImage.
[41] Christophe Andrieu,et al. A tutorial on adaptive MCMC , 2008, Stat. Comput..
[42] Wei Ji Ma,et al. Bayesian inference with probabilistic population codes , 2006, Nature Neuroscience.
[43] D. Knill,et al. The Bayesian brain: the role of uncertainty in neural coding and computation , 2004, Trends in Neurosciences.
[44] Peter Dayan,et al. Doubly Distributional Population Codes: Simultaneous Representation of Uncertainty and Multiplicity , 2003, Neural Computation.
[45] Edward H. Adelson,et al. Motion illusions as optimal percepts , 2002, Nature Neuroscience.
[46] S. L. Scott. Bayesian Methods for Hidden Markov Models , 2002 .
[47] M. Ernst,et al. Humans integrate visual and haptic information in a statistically optimal fashion , 2002, Nature.
[48] R. Jacobs,et al. Optimal integration of texture and motion cues to depth , 1999, Vision Research.
[49] Michael L. Platt,et al. Neural correlates of decision variables in parietal cortex , 1999, Nature.
[50] D. Knill,et al. The perception of cast shadows , 1998, Trends in Cognitive Sciences.
[51] Xiao-Jing Wang,et al. Synaptic computation underlying probabilistic inference , 2010, Nature Neuroscience.
[52] Aapo Hyvärinen,et al. Interpreting Neural Response Variability as Monte Carlo Sampling of the Posterior , 2002, NIPS.
[53] R. Zemel,et al. Probabilistic Interpretation of Population Codes , 1996, NIPS.
[54] Geoffrey E. Hinton,et al. A Learning Algorithm for Boltzmann Machines , 1985, Cogn. Sci..
[55] W. Kabsch,et al. Spontaneous Cortical Activity Reveals Hallmarks of an Optimal Internal Model of the Environment , 2011, Science.