Follow
Giacomo Bassetto
Giacomo Bassetto
research center caesar, an associate of the Max Planck Society, Bonn, Germany
Verified email at caesar.de
Title
Cited by
Cited by
Year
Flexible statistical inference for mechanistic models of neural dynamics
JM Lueckmann, PJ Goncalves, G Bassetto, K Öcal, M Nonnenmacher, ...
Advances in Neural Information Processing Systems, 1289-1299, 2017
2752017
Training deep neural density estimators to identify mechanistic models of neural dynamics
PJ Gonçalves, JM Lueckmann, M Deistler, M Nonnenmacher, K Öcal, ...
Elife 9, e56261, 2020
2152020
Likelihood-free inference with emulator networks
JM Lueckmann, G Bassetto, T Karaletsos, JH Macke
Symposium on Advances in Approximate Bayesian Inference, 32-53, 2019
1372019
Visual pursuit behavior in mice maintains the pursued prey on the retinal region with least optic flow
CD Holmgren, P Stahr, DJ Wallace, KM Voit, EJ Matheson, J Sawinski, ...
Elife 10, e70838, 2021
392021
Advances in Neural Information Processing Systems
JM Lueckmann, PJ Goncalves, G Bassetto, K Öcal, M Nonnenmacher, ...
Go to reference in article, 2017
132017
Training deep neural density estimators to identify mechanistic models of neural dynamics. bioRxiv
PJ Gonçalves, JM Lueckmann, M Deistler, M Nonnenmacher, K Öcal, ...
122019
Likelihood-free inference with emulator networks. arxiv e-prints
J Lueckmann, G Bassetto, T Karaletsos, J Macke
arXiv preprint arXiv:1805.09294, 2019
102019
A Bayesian model for identifying hierarchically organised states in neural population activity
P Putzky, F Franzen, G Bassetto, JH Macke
Advances in Neural Information Processing Systems, 3095-3103, 2014
82014
Characterizing retinal ganglion cell responses to electrical stimulation using generalized linear models
S Sekhar, P Ramesh, G Bassetto, E Zrenner, JH Macke, DL Rathbun
Frontiers in Neuroscience 14, 2020
72020
Flexible statistical inference for mechanistic models of neural dynamics. arXiv
JM Lueckmann, PJ Goncalves, G Bassetto, K Ocal, M Nonnenmacher, ...
arXiv preprint arXiv:1711.01861, 2017
52017
Robust statistical inference for simulation-based models in neuroscience
M Nonnenmacher, PJ Goncalves, G Bassetto, JM Lueckmann, JH Macke
Bernstein Conference 2018, Berlin, Germany, 2018
22018
Electrophysiology Analysis, Bayesian
G Bassetto, JH Macke
Encyclopedia of Computational Neuroscience, 1280-1284, 2022
12022
Amortised inference for mechanistic models of neural dynamics
JM Lueckmann, PJ Gonçalves, C Chintaluri, WF Podlaski, G Bassetto, ...
Computational and Systems Neuroscience (Cosyne) 2019, 108, 2019
12019
Flexible statistical inference for mechanistic models of neural dynamics
P Goncalves, JM Lueckmann, G Bassetto, K Oecal, M Nonnenmacher, ...
Bonn Brain 3 Conference 2018, Bonn, Germany, 2018
12018
Bayesian parametric receptive-field identification from sparse or noisy data
G Bassetto
Universität Tübingen, 2023
2023
Inferring the parameters of neural simulations from high-dimensional observations
M Nonnenmacher, JM Lueckmann, G Bassetto, PJ Goncalves, JH Macke
Computational and Systems Neuroscience (COSYNE) 2019, Lisbon, Portugal, 2019
2019
Using bayesian inference to estimate receptive fields from a small number of spikes
G Bassetto, JH Macke
Computational and Systems Neuroscience Meeting (COSYNE 2017), 64-64, 2017
2017
Full Bayesian inference for model-based receptive field estimation, with application to primary visual cortex
G Bassetto, J Macke
Bernstein Conference 2016, 117-118, 2016
2016
Anatomical basis of spiking correlation in upper layers of somatosensory cortex
U Czubayko, G Bassetto, RT Narayanan, M Oberlaender, JH Macke, ...
45th Annual Meeting of the Society for Neuroscience (Neuroscience 2015), 2015
2015
A statistical characterization of neural population responses in V1
G Basseto, F Sandhaeger, A Ecker, JH Macke
Bernstein Conference 2015, 146-147, 2015
2015
The system can't perform the operation now. Try again later.
Articles 1–20