78 research outputs found

    Methodological design and comparative evaluation of a MAS providing AmI

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    Researches on Ambient Intelligent and Ubiquitous Computing using wireless technologies have increased in the last years. In this work, we review several scenarios to define a multi-agent architecture that support the information needs of these new technologies, for heterogeneous domain. Our contribution consists of designing in a methodological way a Context Aware System (involving location services) using agents that can be used in very different domains. We describe all the steps followed in the design of the agent system. We apply a hybridizing methodology between GAIA and AUML. Additionally we propose a way to compare different agent architectures for Context Aware System using agent interactions. So, in this paper, we describe the assignment of weight values to agents interaction in two different MAS architectures for Context Aware problems solving different scenarios inspired in FIPA standard negotiation protocols.Publicad

    Formalising control in robust spoken dialogue systems

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    The spoken language interface is now becoming an in-creasingly serious research topic with application to a wide range of highly engineered systems. Such systems not only include innocuous human-computer interactions, but also encompass shared-control safety critical devices such as automotive vehicles and robotic systems. Spoken Dialogue Systems (SDS) are the language architecture used to provide linguistic interaction in these applications, but they have to date been notoriously difficult to engineer in a robust and safe manner. In this paper we report on our efforts to im-prove the safety and overall usability of dialogue enabled applications through the employment of formal methods in SDS development and testing. Specifically, we use Commu-nicating Sequential Processes (CSP) as the basis of a new approach to the specification, design and verification of dia-logue manager control. Moreover, to support this approach, we introduce FDMSC – the Formal Dialogue Management for Shared Control toolkit – and illustrate its use in the con-struction of formal methods based spoken dialogue systems. 1

    Objektivizace a podpora pro diagnostiku a rehabilitaci strabismu

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    Práce navrhuje, popisuje a testuje původní implementaci komplexního systému, který nabízí SW alternativu pro některá vyšetření poruch vidění. Vedle klasických příznaků, které při průběhu testu získává lékař, definuje a vyhodnocuje systém i některé nové příznaky spojené například s dynamikou chování pacienta v průběhu testu. Tyto výsledky jsou poté využity k návrhu znalostního systému pro podporu rozhodování lékaře při stanovení diagnózy. Výsledný systém kombinuje přístup založený na pravidlovém a případovém usuzování. Další část systému využívá navržené SW nástroje pro cílenou adaptivní rehabilitaci probíhající podle potřeb pacienta a aktuálního vývoje jeho poruchy, která je průběžně objektivně hodnocena. S tímto přístupem lze dobu léčby nejen zkrátit, ale současně i zkvalitnit (a to zvlášť u pacientů předškolního věku) či přenést do domácího prostředí.Katedra kybernetik

    Scenario-Based Modeling of Multi-Agent Systems

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    Applying CBR to manage argumentation in MAS

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    [EN] The application of argumentation theories and techniques in multi-agent systems has become a prolific area of research. Argumentation allows agents to harmonise two types of disagreement situations: internal, when the acquisition of new information (e.g., about the environment or about other agents) produces incoherences in the agents' mental state; and external, when agents that have different positions about a topic engage in a discussion. The focus of this paper is on the latter type of disagreement situations. In those settings, agents must be able to generate, select and send arguments to other agents that will evaluate them in their turn. An efficient way for agents to manage these argumentation abilities is by using case-based reasoning, which has been successfully applied to argumentation from its earliest beginnings. This reasoning methodology also allows agents to learn from their experiences and therefore, to improve their argumentation skills. This paper analyses the advantages of applying case-based reasoning to manage arguments in multi-agent systems dialogues, identifies open issues and proposes new ideas to tackle them.This work was partially supported by CONSOLIDERINGENIO 2010 under grant CSD2007-00022 and by the Spanish government and FEDER funds under CICYT TIN2005-03395 and TIN2006-14630-C0301 projects.Heras Barberá, SM.; Julian Inglada, VJ.; Botti Navarro, VJ. (2010). Applying CBR to manage argumentation in MAS. International Journal of Reasoning-based Intelligent Systems. 2(2):110-117. https://doi.org/10.1504/IJRIS.2010.034906S1101172

    Challenges for a CBR framework for argumentation in open MAS

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    [EN] Nowadays, Multi-Agent Systems (MAS) are broadening their applications to open environments, where heterogeneous agents could enter into the system, form agents’ organizations and interact. The high dynamism of open MAS gives rise to potential conflicts between agents and thus, to a need for a mechanism to reach agreements. Argumentation is a natural way of harmonizing conflicts of opinion that has been applied to many disciplines, such as Case-Based Reasoning (CBR) and MAS. Some approaches that apply CBR to manage argumentation in MAS have been proposed in the literature. These improve agents’ argumentation skills by allowing them to reason and learn from experiences. In this paper, we have reviewed these approaches and identified the current contributions of the CBR methodology in this area. As a result of this work, we have proposed several open issues that must be taken into consideration to develop a CBR framework that provides the agents of an open MAS with arguing and learning capabilities.This work was partially supported by CONSOLIDER-INGENIO 2010 under grant CSD2007-00022 and by the Spanish government and FEDER funds under TIN2006-14630-C0301 project.Heras Barberá, SM.; Botti Navarro, VJ.; Julian Inglada, VJ. (2009). Challenges for a CBR framework for argumentation in open MAS. Knowledge Engineering Review. 24(4):327-352. https://doi.org/10.1017/S0269888909990178S327352244Willmott S. , Vreeswijk G. , Chesñevar C. , South M. , McGinnis J. , Modgil S. , Rahwan I. , Reed C. , Simari G. 2006. Towards an argument interchange format for multi-agent systems. In Proceedings of the AAMAS International Workshop on Argumentation in Multi-Agent Systems, ArgMAS-06, 17–34.Sycara, K. P. (1990). Persuasive argumentation in negotiation. 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