Follow
Panagiotis Tigas
Title
Cited by
Cited by
Year
Can Autonomous Vehicles Identify, Recover From, and Adapt to Distribution Shifts?
A Filos, P Tigas, R McAllister, N Rhinehart, S Levine, Y Gal
ICML 2020, 2020
2082020
Shifts: A dataset of real distributional shift across multiple large-scale tasks
A Malinin, N Band, G Chesnokov, Y Gal, MJF Gales, A Noskov, ...
arXiv preprint arXiv:2107.07455, 2021
1292021
PERCIVAL: Making In-Browser Perceptual Ad Blocking Practical with Deep Learning
Z Abi Din, P Tigas, ST King, B Livshits
2020 USENIX Annual Technical Conference (USENIX ATC 20), 387-400, 2020
37*2020
Interventions, Where and How? Experimental Design for Causal Models at Scale
P Tigas, Y Annadani, A Jesson, B Schölkopf, Y Gal, S Bauer
Neural Information Processing Systems 35 (1), 2022
362022
Causal-bald: Deep bayesian active learning of outcomes to infer treatment-effects from observational data
A Jesson, P Tigas, J van Amersfoort, A Kirsch, U Shalit, Y Gal
Advances in Neural Information Processing Systems 34, 30465-30478, 2021
312021
Exploration and preference satisfaction trade-off in reward-free learning
N Sajid, P Tigas, A Zakharov, Z Fountas, K Friston
arXiv preprint arXiv:2106.04316, 2021
232021
Differentiable multi-target causal bayesian experimental design
P Tigas, Y Annadani, DR Ivanova, A Jesson, Y Gal, A Foster, S Bauer
International Conference on Machine Learning, 34263-34279, 2023
13*2023
Deep Reinforcement Learning for Autonomous Robotic Tensegrity (ART)
T Hosmer, P Tigas
39th Annual Conference of the Association for Computer Aided Design in …, 2019
122019
Spatial Assembly: Generative Architecture With Reinforcement Learning, Self Play and Tree Search
P Tigas, T Hosmer
Workshop on Machine Learning for Creativity and Design at the 34rd …, 2020
11*2020
Global geomagnetic perturbation forecasting using Deep Learning
V Upendran, P Tigas, B Ferdousi, T Bloch, MCM Cheung, S Ganju, ...
Space Weather, e2022SW003045, 2022
10*2022
The Cave Of Sounds: An Interactive Installation Exploring How We Create Music Together
T Murray-Browne, D Aversano, S Garcia, W Hobbes, D Lopez, T Sendon, ...
NIME, 2014
92014
Emergent interfaces: Vague, complex, bespoke and embodied interaction between humans and computers
T Murray-Browne, P Tigas
Applied Sciences 11 (18), 8531, 2021
82021
Real2sim: Automatic Generation of Open Street Map Towns For Autonomous Driving Benchmarks
A Mondal, P Tigas, Y Gal
62020
Active inference, preference learning and adaptive behaviour
N Sajid, P Tigas, K Friston
IOP Conference Series: Materials Science and Engineering 1261 (1), 012020, 2022
52022
A Multilevel Low-Rank Newton Method with Super-linear Convergence Rate and its Application to Non-convex Problems
N Tsipinakis, P Tigkas, P Parpas
arXiv preprint arXiv:2305.08742, 2023
22023
Unravelling A Regulation Machine: Fake News, Toxic Comments And'Illegitimate'Culture
D Mylonaki, P Tigas
A Peer-Reviewed Journal About 7 (1), 86-98, 2018
22018
Modelling non-reinforced preferences using selective attention
N Sajid, P Tigas, Z Fountas, Q Guo, A Zakharov, L Da Costa
arXiv preprint arXiv:2207.13699, 2022
12022
Deep Bayesian Active Learning for Preference Modeling in Large Language Models
LC Melo, P Tigas, A Abate, Y Gal
arXiv preprint arXiv:2406.10023, 2024
2024
Challenges and Considerations in the Evaluation of Bayesian Causal Discovery
AM Karimi Mamaghan, P Tigas, KH Johansson, Y Gal, Y Annadani, ...
arXiv e-prints, arXiv: 2406.03209, 2024
2024
Amortized Active Causal Induction with Deep Reinforcement Learning
Y Annadani, P Tigas, S Bauer, A Foster
arXiv preprint arXiv:2405.16718, 2024
2024
The system can't perform the operation now. Try again later.
Articles 1–20