scholarly journals Multi-Agent Intention Progression with Black-Box Agents

Author(s):  
Michael Dann ◽  
Yuan Yao ◽  
Brian Logan ◽  
John Thangarajah

We propose a new approach to intention progression in multi-agent settings where other agents are effectively black boxes. That is, while their goals are known, the precise programs used to achieve these goals are not known. In our approach, agents use an abstraction of their own program called a partially-ordered goal-plan tree (pGPT) to schedule their intentions and predict the actions of other agents. We show how a pGPT can be derived from the program of a BDI agent, and present an approach based on Monte Carlo Tree Search (MCTS) for scheduling an agent's intentions using pGPTs. We evaluate our pGPT-based approach in cooperative, selfish and adversarial multi-agent settings, and show that it out-performs MCTS-based scheduling where agents assume that other agents have the same program as themselves.

Author(s):  
Edgar Galvan-Lopez ◽  
Ruohua Li ◽  
Constantinos Patsakis ◽  
Siobhan Clarke ◽  
Vinny Cahill

2021 ◽  
Author(s):  
Marc Dalmasso ◽  
Anais Garrell ◽  
Jose Enrique Dominguez ◽  
Pablo Jimenez ◽  
Alberto Sanfeliu

Author(s):  
Daniel Reifsteck ◽  
Thorsten Engesser ◽  
Robert Mattmüller ◽  
Bernhard Nebel

Author(s):  
Mohammad Sina Kiarostami ◽  
Mohammad Reza Daneshvaramoli ◽  
Saleh Khalaj Monfared ◽  
Dara Rahmati ◽  
Saeid Gorgin

Author(s):  
Mohammadreza Daneshvaramoli ◽  
Mohammad Sina Kiarostami ◽  
Saleh Khalaj Monfared ◽  
Helia Karisani ◽  
Keivan Dehghannayeri ◽  
...  

2018 ◽  
Vol 42 (4) ◽  
pp. 1-5 ◽  
Author(s):  
Reed M. Milewicz ◽  
Simon Poulding

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