Results for 'Modeling Distributed Artificial'

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  1. Michael Wooldridge.Modeling Distributed Artificial - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 269.
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  2.  88
    Performance Modeling of Load Balancing Techniques in Cloud: Some of the Recent Competitive Swarm Artificial Intelligence-based.Jeremy Pitt, B. Sathish Babu & K. Bhargavi - 2020 - Journal of Intelligent Systems 30 (1):40-58.
    Cloud computing deals with voluminous heterogeneous data, and there is a need to effectively distribute the load across clusters of nodes to achieve optimal performance in terms of resource usage, throughput, response time, reliability, fault tolerance, and so on. The swarm intelligence methodologies use artificial intelligence to solve computationally challenging problems like load balancing, scheduling, and resource allocation at finite time intervals. In literature, sufficient works are being carried out to address load balancing problem in the cloud using traditional (...)
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  3. Modelling Multilateral Negotiation in Linear Logic.Daniele Porello & Ulle Endriss - 2010 - In Daniele Porello & Ulle Endriss (eds.), {ECAI} 2010 - 19th European Conference on Artificial Intelligence, Lisbon, Portugal, August 16-20, 2010, Proceedings. pp. 381--386.
    We show how to embed a framework for multilateral negotiation, in which a group of agents implement a sequence of deals concerning the exchange of a number of resources, into linear logic. In this model, multisets of goods, allocations of resources, preferences of agents, and deals are all modelled as formulas of linear logic. Whether or not a proposed deal is rational, given the preferences of the agents concerned, reduces to a question of provability, as does the question of whether (...)
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  4.  30
    Marx’s concept of distributive justice: an exercise in the formal modeling of political principles.Antônio Carlos da Rocha Costa - 2018 - AI and Society 33 (4):487-500.
    This paper presents an exercise in the formalization of political principles, by taking as its theme the concept of distributive justice that Karl Marx advanced in his Critique of the Gotha Programme. We first summarize the content of the Critique of the Gotha Programme. Next, we transcribe the core of Marx’s presentation of the concept of distributive justice. Following, we present our formalization of Marx’s conception. Then, we make use of that formal analysis to confront Marx’s principle of distributive justice (...)
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  5.  83
    OPJK and DILIGENT: Ontology modeling in a distributed environment. [REVIEW]Pompeu Casanovas, Núria Casellas, Christoph Tempich, Denny Vrandečić & Richard Benjamins - 2007 - Artificial Intelligence and Law 15 (2):171-186.
    In the legal domain, ontologies enjoy quite some reputation as a way to model normative knowledge about laws and jurisprudence. This paper describes the methodology followed when developing the ontology used by the second version of the prototype Iuriservice, a web-based intelligent FAQ for judicial use. This modeling methodology has had two important requirements: on the one hand, the ontology needed to be extracted from a repository of professional judicial knowledge (containing nearly 800 questions regarding daily practice). Thus, the (...)
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  6.  70
    Conjectures and manipulations. Computational modeling and the extra- theoretical dimension of scientific discovery.Lorenzo Magnani - 2004 - Minds and Machines 14 (4):507-538.
    Computational philosophy (CP) aims at investigating many important concepts and problems of the philosophical and epistemological tradition in a new way by taking advantage of information-theoretic, cognitive, and artificial intelligence methodologies. I maintain that the results of computational philosophy meet the classical requirements of some Peircian pragmatic ambitions. Indeed, more than a 100 years ago, the American philosopher C.S. Peirce, when working on logical and philosophical problems, suggested the concept of pragmatism(pragmaticism, in his own words) as a logical criterion (...)
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  7.  64
    All Together Now: Concurrent Learning of Multiple Structures in an Artificial Language.Alexa R. Romberg & Jenny R. Saffran - 2013 - Cognitive Science 37 (7):1290-1320.
    Natural languages contain many layers of sequential structure, from the distribution of phonemes within words to the distribution of phrases within utterances. However, most research modeling language acquisition using artificial languages has focused on only one type of distributional structure at a time. In two experiments, we investigated adult learning of an artificial language that contains dependencies between both adjacent and non-adjacent words. We found that learners rapidly acquired both types of regularities and that the strength of (...)
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  8.  24
    Modeling of attack detection system based on hybridization of binary classifiers.Beley O. I. & Kolesnyk K. K. - 2020 - Artificial Intelligence Scientific Journal 25 (3):14-25.
    The study considers the development of methods for detecting anomalous network connections based on hybridization of computational intelligence methods. An analysis of approaches to detecting anomalies and abuses in computer networks. In the framework of this analysis, a classification of methods for detecting network attacks is proposed. The main results are reduced to the construction of multi-class models that increase the efficiency of the attack detection system, and can be used to build systems for classifying network parameters during the attack. (...)
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  9. Jacques Ferber.Reactive Distributed Artificial - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 287.
     
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  10.  37
    The emergence of attractors under multi-level institutional designs: agent-based modeling of intergovernmental decision making for funding transportation projects.Asim Zia & Christopher Koliba - 2015 - AI and Society 30 (3):315-331.
    Multi-level institutional designs with distributed power and authority arrangements among federal, state, regional, and local government agencies could lead to the emergence of differential patterns of socioeconomic and infrastructure development pathways in complex social–ecological systems. Both exogenous drivers and endogenous processes in social–ecological systems can lead to changes in the number of “basins of attraction,” changes in the positions of the basins within the state space, and changes in the positions of the thresholds between basins. In an effort to (...)
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  11.  34
    Capturing the representational and the experimental in the modelling of artificial societies.David Anzola - 2021 - European Journal for Philosophy of Science 11 (3):1-29.
    Even though the philosophy of simulation is intended as a comprehensive reflection about the practice of computer simulation in contemporary science, its output has been disproportionately shaped by research on equation-based simulation in the physical and climate sciences. Hence, the particularities of alternative practices of computer simulation in other scientific domains are not sufficiently accounted for in the current philosophy of simulation literature. This article centres on agent-based social simulation, a relatively established type of simulation in the social sciences, to (...)
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  12.  93
    Modelling Artificial Cognition in Biosemiotic Terms.Maria Isabel Aldinhas Ferreira & Miguel Gama Caldas - 2013 - Biosemiotics 6 (2):245-252.
    Stemming from Uexkull’s fundamental concepts of Umwelt and Innenwelt as developed in the biosemiotic approach of Ferreira 2010, 2011, the present work models mathematically the semiosis of cognition and proposes an artificial cognitive architecture to be deployed in a robotic structure.
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  13.  30
    Modeling distributions of travel time variability for bus operations.Z. Ma, L. Ferreira, M. Mesbah & S. Zhu - unknown
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  14.  29
    Modelling unsupervised online-learning of artificial grammars: Linking implicit and statistical learning.Martin A. Rohrmeier & Ian Cross - 2014 - Consciousness and Cognition 27 (C):155-167.
  15. A distributed artificial intelligence reading of Todorov's The Conquest of America.J. E. Doran - 1990 - In Tadeusz Buksiński (ed.), Interpretation in the humanities. Poznań: Uniwersytet im. Adama Mickiewicza w Poznaniu.
  16.  84
    Distributed artificial intelligence from a socio-cognitive standpoint: Looking at reasons for interaction. [REVIEW]Maria Miceli, Amedo Cesta & Paola Rizzo - 1995 - AI and Society 9 (4):287-320.
    Distributed Artificial Intelligence (DAI) deals with computational systems where several intelligent components interact in a common environment. This paper is aimed at pointing out and fostering the exchange between DAI and cognitive and social science in order to deal with the issues of interaction, and in particular with the reasons and possible strategies for social behaviour in multi-agent interaction is also described which is motivated by requirements of cognitive plausibility and grounded the notions of power, dependence and help. (...)
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  17.  53
    Distributed artificial intelligence and social science: Critical issues.Cristiano Castelfranchi & Rosaria Conte - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley.
  18.  12
    Distributed artificial intelligence.Zhongzhi Shi - 1991 - In P. A. Flach (ed.), Future Directions in Artificial Intelligence. New York: Elsevier Science.
  19.  12
    Reactive distributed artificial intelligence: Principles and applications.Jacques Ferber - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 287--314.
  20.  26
    Information-seeking dialogue for explainable artificial intelligence: Modelling and analytics.Ilia Stepin, Katarzyna Budzynska, Alejandro Catala, Martín Pereira-Fariña & Jose M. Alonso-Moral - 2024 - Argument and Computation 15 (1):49-107.
    Explainable artificial intelligence has become a vitally important research field aiming, among other tasks, to justify predictions made by intelligent classifiers automatically learned from data. Importantly, efficiency of automated explanations may be undermined if the end user does not have sufficient domain knowledge or lacks information about the data used for training. To address the issue of effective explanation communication, we propose a novel information-seeking explanatory dialogue game following the most recent requirements to automatically generated explanations. Further, we generalise (...)
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  21.  17
    User design issues for distributed artificial intelligence.Lynne E. Hall - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley.
  22.  13
    Logical foundations of distributed artificial intelligence.Eric Werner - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 57--117.
  23. Cognitive Biases, Linguistic Universals, and Constraint‐Based Grammar Learning.Jennifer Culbertson, Paul Smolensky & Colin Wilson - 2013 - Topics in Cognitive Science 5 (3):392-424.
    According to classical arguments, language learning is both facilitated and constrained by cognitive biases. These biases are reflected in linguistic typology—the distribution of linguistic patterns across the world's languages—and can be probed with artificial grammar experiments on child and adult learners. Beginning with a widely successful approach to typology (Optimality Theory), and adapting techniques from computational approaches to statistical learning, we develop a Bayesian model of cognitive biases and show that it accounts for the detailed pattern of results of (...)
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  24.  66
    Coordination techniques for distributed artificial intelligence.Nick R. Jennings - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 187--210.
  25.  19
    An overview of distributed artificial intelligence.Bernard Moulin & Brahim Chaib-Draa - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 1--3.
  26. Connectionist modelling in psychology: A localist manifesto.Mike Page - 2000 - Behavioral and Brain Sciences 23 (4):443-467.
    Over the last decade, fully distributed models have become dominant in connectionist psychological modelling, whereas the virtues of localist models have been underestimated. This target article illustrates some of the benefits of localist modelling. Localist models are characterized by the presence of localist representations rather than the absence of distributed representations. A generalized localist model is proposed that exhibits many of the properties of fully distributed models. It can be applied to a number of problems that are (...)
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  27.  62
    Artificial Neural Networks in Medicine and Biology.Helge Malmgren - unknown
    Artificial neural networks (ANNs) are new mathematical techniques which can be used for modelling real neural networks, but also for data categorisation and inference tasks in any empirical science. This means that they have a twofold interest for the philosopher. First, ANN theory could help us to understand the nature of mental phenomena such as perceiving, thinking, remembering, inferring, knowing, wanting and acting. Second, because ANNs are such powerful instruments for data classification and inference, their use also leads us (...)
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  28.  45
    Modelling and simulating early stopping of RCTs: a case study of early stop due to harm.Roger Stanev - 2012 - Journal of Experimental and Theoretical Artificial Intelligence 24 (4):513-526.
    Despite efforts from regulatory agencies (e.g. NIH, FDA), recent systematic reviews of randomised controlled trials (RCTs) show that top medical journals continue to publish trials without requiring authors to report details for readers to evaluate early stopping decisions carefully. This article presents a systematic way of modelling and simulating interim monitoring decisions of RCTs. By taking an approach that is both general and rigorous, the proposed framework models and evaluates early stopping decisions of RCTs based on a clear and consistent (...)
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  29. Seminario Interuniversitario: 'Artificial Life: Modelling Biological and Cognitive Systems'.Jon Umerez - 1991 - Theoria: Revista de Teoría, Historia y Fundamentos de la Ciencia 6 (1-2):328-330.
     
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  30.  22
    Organizational intelligence and distributed artificial intelligence.Stefan Kirn - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley.
  31.  17
    Applications of distributed artificial intelligence in industry.H. Van Dyke Parunak - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 139-164.
  32.  8
    Planning in distributed artificial intelligence.Edmund Durfee - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 245.
  33.  56
    ARCHON: A distributed artificial intelligence system for industrial applications.David Cockburn & Nick R. Jennings - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 319--344.
  34.  94
    Philosophy and distributed artificial intelligence: The case of joint intention.Raimo Tuomela - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley.
    In current philosophical research the term 'philosophy of social action' can be used - and has been used - in a broad sense to encompass the following central research topics: 1) action occurring in a social context; this includes multi-agent action; 2) joint attitudes (or "we-attitudes" such as joint intention, mutual belief) and other social attitudes needed for the explication and explanation of social action; 3) social macro-notions, such as actions performed by social groups and properties of social groups such (...)
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  35.  5
    (1 other version)Seminario Interuniversitario: ‘Artificial Life: Modelling Biological and Cognitive Systems’ (Madrid/San Sebastián, 10, 11 y 13 de dicienlbre de 1990). [REVIEW]Jon Jon Umerez - 1991 - Theoria: Revista de Teoría, Historia y Fundamentos de la Ciencia 6 (1-2):328-330.
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  36. Commentary on "Towards a Design-Based Analysis of Emotional Episodes".Maria Miceli & Cristiano Castelfranchi - 1996 - Philosophy, Psychiatry, and Psychology 3 (2):129-133.
    In lieu of an abstract, here is a brief excerpt of the content:Commentary on “Towards a Design-Based Analysis of Emotional Episodes”Cristiano Castelfranchi (bio) and Maria Miceli (bio)Keywordsgrief, suffering, attachment, agent architectureThis paper is significant in many respects: its approach (the design-based analysis); its proposed architecture; its description of grief; and its self-control/perturbance theory. We would offer some remarks on each of these aspects.AI: Back to the FutureAfter some years of crisis, AI seems now to have recovered its original challenging attitude (...)
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  37.  55
    Modelling the effects of semantic ambiguity in word recognition.Jennifer M. Rodd, M. Gareth Gaskell & William D. Marslen-Wilson - 2004 - Cognitive Science 28 (1):89-104.
    Most words in English are ambiguous between different interpretations; words can mean different things in different contexts. We investigate the implications of different types of semantic ambiguity for connectionist models of word recognition. We present a model in which there is competition to activate distributed semantic representations. The model performs well on the task of retrieving the different meanings of ambiguous words, and is able to simulate data reported by Rodd, Gaskell, and Marslen‐Wilson [J. Mem. Lang. 46 (2002) 245] (...)
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  38. A Description Logic Framework for Commonsense Conceptual Combination Integrating Typicality, Probabilities and Cognitive Heuristics.Antonio Lieto & Gian Luca Pozzato - 2019 - Journal of Experimental and Theoretical Artificial Intelligence:1-39.
    We propose a nonmonotonic Description Logic of typicality able to account for the phenomenon of the combination of prototypical concepts. The proposed logic relies on the logic of typicality ALC + TR, whose semantics is based on the notion of rational closure, as well as on the distributed semantics of probabilistic Description Logics, and is equipped with a cognitive heuristic used by humans for concept composition. We first extend the logic of typicality ALC + TR by typicality inclusions of (...)
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  39. Connectionist representations for natural language: Old and new Noel E. sharkey department of computer science university of exeter.Localist V. Distributed - 1990 - In G. Dorffner (ed.), Konnektionismus in Artificial Intelligence Und Kognitionsforschung. Berlin: Springer-Verlag. pp. 252--1.
  40. Clark Glymour, Richard Scheines, Peter Spirtes and Kevin Kelly, Discovering Causal Structure: Artificial Intelligence, Philosophy of Science and Statistical Modelling Reviewed by.Mike Oaksford - 1990 - Philosophy in Review 10 (1):19-21.
  41.  15
    Image Recognition and Simulation Based on Distributed Artificial Intelligence.Tao Fan - 2021 - Complexity 2021:1-11.
    This paper studies the traditional target classification and recognition algorithm based on Histogram of Oriented Gradients feature extraction and Support Vector Machine classification and applies this algorithm to distributed artificial intelligence image recognition. Due to the huge number of images, the general detection speed cannot meet the requirements. We have improved the HOG feature extraction algorithm. Using principal component analysis to perform dimensionality reduction operations on HOG features and doing distributed artificial intelligence image recognition experiments, the (...)
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  42.  24
    Temporal belief logics for modelling distributed artificial intelligence systems.Michael Wooldridge - 1996 - In N. Jennings & G. O'Hare (eds.), Foundations of Distributed Artificial Intelligence. Wiley. pp. 269--286.
  43.  93
    Modeling the Significance of Motivation on Job Satisfaction and Performance Among the Academicians: The Use of Hybrid Structural Equation Modeling-Artificial Neural Network Analysis.Suguna Sinniah, Abdullah Al Mamun, Mohd Fairuz Md Salleh, Zafir Khan Mohamed Makhbul & Naeem Hayat - 2022 - Frontiers in Psychology 13.
    The competition in higher education has increased, while lecturers are involved in multiple assignments that include teaching, research and publication, consultancy, and community services. The demanding nature of academia leads to excessive work load and stress among academicians in higher education. Notably, offering the right motivational mix could lead to job satisfaction and performance. The current study aims to demonstrate the effects of extrinsic and intrinsic motivational factors influencing job satisfaction and job performance among academicians working in Malaysian private higher (...)
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    Glossing over too much.Gin McCollum - 1997 - Behavioral and Brain Sciences 20 (4):692-692.
    Although Phillips & Singer's proposal of commonalities seems sound, information theory and artificial neural network modeling omit important detail. An example is given of a distributed neural transformation that has been characterized mathematically and found to have both overall commonalities and differences of detail in different regions. P&S's contextual field is compared to inclusive regions in a formalism relevant for modeling bodily-kinaesthetic intelligence.
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  45.  52
    Multiscale Modeling of Gene–Behavior Associations in an Artificial Neural Network Model of Cognitive Development.Michael S. C. Thomas, Neil A. Forrester & Angelica Ronald - 2016 - Cognitive Science 40 (1):51-99.
    In the multidisciplinary field of developmental cognitive neuroscience, statistical associations between levels of description play an increasingly important role. One example of such associations is the observation of correlations between relatively common gene variants and individual differences in behavior. It is perhaps surprising that such associations can be detected despite the remoteness of these levels of description, and the fact that behavior is the outcome of an extended developmental process involving interaction of the whole organism with a variable environment. Given (...)
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  46. The role of e-Trust in distributed artificial systems.Mariarosaria Taddeo - 2011 - In Charles Ess & May Thorseth (eds.), Trust and Virtual Worlds: Contemporary Perspectives. Peter Lang.
  47.  22
    Open Information Systems Semantics for distributed artificial intelligence.Carl Hewitt - 1991 - Artificial Intelligence 47 (1-3):79-106.
  48.  97
    Modelling the mind.K. A. Mohyeldin Said (ed.) - 1990 - New York: Oxford University Press.
    This collection by a distinguished group of philosophers, psychologists, and physiologists reflects an interdisciplinary approach to the central question of cognitive science: how do we model the mind? Among the topics explored are the relationships (theoretical, reductive, and explanatory) between philosophy, psychology, computer science, and physiology; what should be asked of models in science generally, and in cognitive science in particular; whether theoretical models must make essential reference to objects in the environment; whether there are human competences that are resistant, (...)
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  49.  11
    Modelling human vision needs to account for subjective experience.Marcin Koculak & Michał Wierzchoń - 2023 - Behavioral and Brain Sciences 46:e397.
    Vision is inseparably connected to perceptual awareness which can be seen as the culmination of sensory processing. Studies on conscious vision reveal that object recognition is just one of the means through which our representation of the world is built. We propose an operationalization of subjective experience in the context of deep neural networks (DNNs) that could encourage a more thorough comparison of human and artificial vision.
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    A Clonal Selection Optimization System for Multiparty Secure Computing.Minyu Shi, Yongting Zhang, Huanhuan Wang, Junfeng Hu & Xiang Wu - 2021 - Complexity 2021:1-14.
    The innovation of the deep learning modeling scheme plays an important role in promoting the research of complex problems handled with artificial intelligence in smart cities and the development of the next generation of information technology. With the widespread use of smart interactive devices and systems, the exponential growth of data volume and the complex modeling requirements increase the difficulty of deep learning modeling, and the classical centralized deep learning modeling scheme has encountered bottlenecks in (...)
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