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Eugenio Bargiacchi
Eugenio Bargiacchi
Verified email at ai.vub.ac.be
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Cited by
Year
A practical guide to multi-objective reinforcement learning and planning
CF Hayes, R Rădulescu, E Bargiacchi, J Källström, M Macfarlane, ...
Autonomous Agents and Multi-Agent Systems 36 (1), 26, 2022
2152022
Learning to coordinate with coordination graphs in repeated single-stage multi-agent decision problems
E Bargiacchi, T Verstraeten, D Roijers, A Nowé, H Hasselt
International conference on machine learning, 482-490, 2018
472018
Multi-agent thompson sampling for bandit applications with sparse neighbourhood structures
T Verstraeten, E Bargiacchi, PJK Libin, J Helsen, DM Roijers, A Nowé
Scientific reports 10 (1), 6728, 2020
29*2020
AI-Toolbox: A C++ library for reinforcement learning and planning (with Python bindings)
E Bargiacchi, DM Roijers, A Nowé
Journal of Machine Learning Research 21 (102), 1-12, 2020
23*2020
Pareto conditioned networks
M Reymond, E Bargiacchi, A Nowé
arXiv preprint arXiv:2204.05036, 2022
182022
Cooperative Prioritized Sweeping.
E Bargiacchi, T Verstraeten, DM Roijers
AAMAS, 160-168, 2021
17*2021
Scalable optimization for wind farm control using coordination graphs
T Verstraeten, PJ Daems, E Bargiacchi, DM Roijers, PJK Libin, J Helsen
arXiv preprint arXiv:2101.07844, 2021
122021
Interactive multi-objective reinforcement learning in multi-armed bandits with gaussian process utility models
DM Roijers, LM Zintgraf, P Libin, M Reymond, E Bargiacchi, A Nowé
Machine Learning and Knowledge Discovery in Databases: European Conference …, 2021
92021
Reinforcement learning 101 with a virtual reality game
Y Coppens, E Bargiacchi, A Nowé
Proceedings of the 1st international workshop on education in artificial …, 2019
92019
Decentralized solutions and tactics for rts
E Bargiacchi, CR Verschoor, G Li, DM Roijers
BNAIC 2013: Proceedings of the 25th Benelux Conference on Artificial …, 2013
72013
P1415R1: SG19 Machine Learning Layered List
M Wong, V Reverdy, R Dubey, R Dosselmann, E Bargiacchi, J Inglada
ISO JTC1/SC22/WG21: Programming Language C++, accessed 9 Aug. 2020. http …, 2019
62019
Multi-agent RMax for Multi-Agent Multi-Armed Bandits
E Bargiacchi, T Verstraeten, D Roijers, A Nowé, H van Hasselt
Proc. of Adaptive and Learning Agents Worksh, 2022
52022
Dynamic resource allocation for multi-camera systems
E Bargiacchi
Master's thesis, University of Amsterdam, 2016
32016
Dutch Nao Team Team Description for RoboCup 2014-Joao Pessoa, Brasil
P de Kok, D ten Velthuis, N Backer, J van Eck, F Voorter, A Visser, ...
University of Amsterdam, TU Delft & Maastricht University, 2014
22014
A Brief Guide to Multi-Objective Reinforcement Learning and Planning
CF Hayes, R Rădulescu, E Bargiacchi, J Kallstrom, M Macfarlane, ...
Proceedings of the 2023 International Conference on Autonomous Agents and …, 2023
12023
Heuristic coordination in cooperative multi-agent reinforcement learning
R Petri, E Bargiacchi, H Aldewereld, D Roijers
Proceedings van de 33rd Benelux Conference on Artificial Intelligence en …, 2021
12021
Thompson sampling for loosely-coupled multi-agent systems: An application to wind farm control
T Verstraeten, E Bargiacchi, PJ Libin, J Helsen, DM Roijers, A Nowé
Adaptive and Learning Agents Workshop, 2020
12020
Controlling Large Scale Multi-Agent Environments with Model-Based Reinforcement Learning
E Bargiacchi
2024
Wind Farm Control Using Factored Bandits: A Hybrid Approach to Active Power Control
T Verstraeten, PJ Daems, E Bargiacchi, DM Roijers, PJK Libin, J Helsen
2021
Multi-Agent Thompson Sampling for Bandits with Sparse Neighbourhood Structures
T Verstraeten, E Bargiacchi, PJK Libin, J Helsen, DM Roijers, A Nowé
BNAIC/BeneLearn 2020, 394, 2020
2020
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