In collective decision-making, designing algorithms that use only local information to effect swarm-level behaviour is a non-trivial problem. We used machine learning techniques to teach swarm members to map their local perceptions of the environment to an optimal action. A curriculum inspired by Machine Education approaches was designed to facilitate this learning process and teach the members the skills required for optimal performance in the collective perception problem. We extended upon previous approaches by creating a curriculum that taught agents resilience to malicious influence. The experimental results show that well-designed rules-based algorithms can produce effective agents. When performing opinion fusion, we implemented decen...
Swarm Collective Intelligence is a new branch of both engineering and social sciences that focus on ...
Swarm systems constitute a challenging problem for reinforcement learning (RL) as the algorithm need...
We present a socially inspired approach that allows agents in Multi-Agent Systems to speed up their ...
Swarm Intelligence is natural phenomenon that enables social animals to make group decisions in real...
In collective decision-making, individuals in a swarm reach consensus on a decision using only local...
Non-centralised behaviour such as those that characterise swarm robotics systems are vulnerable to i...
Collective perception is a foundational problem in swarm robotics, in which the swarm must reach con...
A swarm intelligence system is a type of multiagent system with the following distinctive characteri...
Classic opinion dissemination models such as Majority model, and Voter model are particularly import...
Swarm robots operate as autonomous agents and a swarm as a whole gets autonomous by its capability o...
Robotics is making significant strides in its capabilities and is being integrated into many real-wo...
Collective animal behaviors are paradigmatic examples of fully decentralized operations involving co...
Reaching a consensus in a swarm of robots is one of the fundamental problems in swarm robotics, exam...
Abstract: In this paper we study a generalized case of best-of-n model, which considers three kind o...
This paper demonstrates the need to develop more suitable decentralized reinforcement learning metho...
Swarm Collective Intelligence is a new branch of both engineering and social sciences that focus on ...
Swarm systems constitute a challenging problem for reinforcement learning (RL) as the algorithm need...
We present a socially inspired approach that allows agents in Multi-Agent Systems to speed up their ...
Swarm Intelligence is natural phenomenon that enables social animals to make group decisions in real...
In collective decision-making, individuals in a swarm reach consensus on a decision using only local...
Non-centralised behaviour such as those that characterise swarm robotics systems are vulnerable to i...
Collective perception is a foundational problem in swarm robotics, in which the swarm must reach con...
A swarm intelligence system is a type of multiagent system with the following distinctive characteri...
Classic opinion dissemination models such as Majority model, and Voter model are particularly import...
Swarm robots operate as autonomous agents and a swarm as a whole gets autonomous by its capability o...
Robotics is making significant strides in its capabilities and is being integrated into many real-wo...
Collective animal behaviors are paradigmatic examples of fully decentralized operations involving co...
Reaching a consensus in a swarm of robots is one of the fundamental problems in swarm robotics, exam...
Abstract: In this paper we study a generalized case of best-of-n model, which considers three kind o...
This paper demonstrates the need to develop more suitable decentralized reinforcement learning metho...
Swarm Collective Intelligence is a new branch of both engineering and social sciences that focus on ...
Swarm systems constitute a challenging problem for reinforcement learning (RL) as the algorithm need...
We present a socially inspired approach that allows agents in Multi-Agent Systems to speed up their ...