2018
DOI: 10.3389/frobt.2018.00134
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Toward Computational Motivation for Multi-Agent Systems and Swarms

Abstract: Motivation is a crucial part of animal and human mental development, fostering competence, autonomy, and open-ended development. Motivational constructs have proved to be an integral part of explaining human and animal behavior. Computer scientists have proposed various computational models of motivation for artificial agents, with the aim of building artificial agents capable of autonomous goal generation. Multi-agent systems and swarm intelligence are natural extensions to the individual agent setting. Howev… Show more

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Cited by 7 publications
(3 citation statements)
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“…Most computational models of intrinsic motivation use reinforcement learning in single agent scenarios both in simulation and on real robots, while swarm and multi-agent settings are only rarely studied. Khan et al [49] discuss that multiagent settings may allow for the emergence of new functionality, like communication, and for new models of motivation, like sharing motivations with other agents. In our work, we combine an intrinsic motivation measure with methods of evolutionary computation in a swarm scenario.…”
Section: Intrinsically Motivated Learningmentioning
confidence: 99%
“…Most computational models of intrinsic motivation use reinforcement learning in single agent scenarios both in simulation and on real robots, while swarm and multi-agent settings are only rarely studied. Khan et al [49] discuss that multiagent settings may allow for the emergence of new functionality, like communication, and for new models of motivation, like sharing motivations with other agents. In our work, we combine an intrinsic motivation measure with methods of evolutionary computation in a swarm scenario.…”
Section: Intrinsically Motivated Learningmentioning
confidence: 99%
“…Merkezi olmayan sistem, ağda alt görevleri gerçekleştiren ve birlikte kararlar alan bir grup aracı oluşturur [185,186]. Merkezi kontrole sahip etmenlerin aksine, merkezi olmayan sistem, birden fazla etmenin üretim sistemindeki görevlere ve karar verme sürecine katkıda bulunmasını sağlayarak sistemin verimliliğinin artırılmasına katkı sağlar [181,187,188]. Bununla birlikte, her iki sistem de üretim sistemindeki birden fazla etmenin etkileşimini içermektedir.…”
Section: Platformların Iş Birliği (Platform Interoperability)unclassified
“…In fact, to fully grasp the extent of current and future human–machine interaction and their socio-technological co-evolution, it is essential to understand that erobots are not just their perceived characters (e.g., Harmony’s VR character or robotic-headed doll), but are composed of vast interconnected, multi-layered, and (increasingly adaptative) multi-agent systems that enable their (emerging) capabilities [ 161 , 228 ]. For example, when people interact with an erobot, they engage with its interfaces (e.g., application and characters), but the erotic capabilities of those interfaces also depend upon clusters of enabling-systems including: software-hardware, cloud-based algorithms learning from multiple users, databanks, search engines, and humans (e.g., programmers, engineers, designers, artists, and partners).…”
Section: Towards Eroboticsmentioning
confidence: 99%