18 research outputs found

    A Generic Agent Organisation Framework For Autonomic Systems

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    Autonomic computing is being advocated as a tool for managing large, complex computing systems. Specifically, self-organisation provides a suitable approach for developing such autonomic systems by incorporating self-management and adaptation properties into large-scale distributed systems. To aid in this development, this paper details a generic problem-solving agent organisation framework that can act as a modelling and simulation platform for autonomic systems. Our framework describes a set of service-providing agents accomplishing tasks through social interactions in dynamically changing organisations. We particularly focus on the organisational structure as it can be used as the basis for the design, development and evaluation of generic algorithms for self-organisation and other approaches towards autonomic systems

    A Hierarchical Framework for Collaborative Artificial Intelligence

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    We propose a hierarchical framework for collaborative intelligent systems. This framework organizes research challenges based on the nature of the collaborative activity and the information that must be shared, with each level building on capabilities provided by lower levels. We review research paradigms at each level, with a description of classical engineering-based approaches and modern alternatives based on machine learning, illustrated with a running example using a hypothetical personal service robot. We discuss cross-cutting issues that occur at all levels, focusing on the problem of communicating and sharing comprehension, the role of explanation and the social nature of collaboration. We conclude with a summary of research challenges and a discussion of the potential for economic and societal impact provided by technologies that enhance human abilities and empower people and society through collaboration with intelligent systems

    Building collaboration in multi-agent systems using reinforcement learning

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    © Springer Nature Switzerland AG 2018. This paper presents a proof-of concept study for demonstrating the viability of building collaboration among multiple agents through standard Q learning algorithm embedded in particle swarm optimisation. Collaboration is formulated to be achieved among the agents via competition, where the agents are expected to balance their action in such a way that none of them drifts away of the team and none intervene any fellow neighbours territory, either. Particles are devised with Q learning for self training to learn how to act as members of a swarm and how to produce collaborative/collective behaviours. The produced experimental results are supportive to the proposed idea suggesting that a substantive collaboration can be build via proposed learning algorithm

    Organizing Software Agents

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    PrIMe: A Methodology for Developing Provenance-Aware Applications

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    PrIMe is a methodology for adapting applications to make them provenance-aware, that is to enable them to document their execution in order to answer provenance questions. A provenance-aware application can satisfy provenance use cases, where a use case is a description of a scenario in which a user interacts with a system by performing particular functions on that system, and a provenance use case requires documentation of past processes in order to achieve the functions. In this report the PrIMe is described. In order to illustrate the steps necessary to make an application provenance aware, an Organ Transplant Management example application is used

    MULTI-AGENT DIFFUSION OF DECISION EXPERIENCES

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    Norm Emergence in Regulatory Compliance

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