Results for 'cognitive modeling'

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  1.  10
    An interdisciplinary approach to cognitive modelling: a framework based on philosophy and modern science.P. Ghose - 2023 - New York, NY: Routledge. Edited by Sudip Patra.
    An Interdisciplinary Approach to Cognitive Modelling presents a new approach to cognition that challenges long-held views. It systematically develops a broad-based framework to model cognition, which is mathematically equivalent to the emerging 'quantum-like modelling' of the human mind. The book argues that a satisfactory physical and philosophical basis of such an approach is missing, a particular issue being the application of quantization to the mind for which there is no empirical evidence as yet. In response to this issue, the (...)
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  2. Cognitive modelling of second language acquisition.Maria Dakowska - 1997 - Communication and Cognition. Monographies 30 (1-2):29-54.
     
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  3. Cognitive Modelling and Interpretation Applied on the Interpretation of Philosophical Texts in History of Philosophy. Mythology or Historiography?F. Vandamme - 1988 - Philosophica 41:89-93.
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  4. Cognitive Modelling and Conceptual Spaces.Antonio Lieto - 2021 - Airbus Invited Talks on Cognitive Modelling.
    I will present the rationale followed for the conceptualization and the following development the Dual PECCS system that relies on the cognitively grounded heterogeneous proxytypes representational hypothesis. Such hypothesis allows integrating exemplars and prototype theories of categorization and has provided useful insights in the context of cognitive modelling for what concerns the typicality effects in categorization. As argued in [Chella et al., 2017] [Lieto et al., 2018b] [Lieto et al., 2018a] a pivotal role in this respect is played by (...)
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  5.  27
    Cognitive modelling of human temporal reasoning.Alice G. B. ter Meulen - 2003 - Behavioral and Brain Sciences 26 (5):623-624.
    Modelling human reasoning characterizes the fundamental human cognitive capacity to describe our past experience and use it to form expectations as well as plan and direct our future actions. Natural language semantics analyzes dynamic forms of reasoning in which the real-time order determines the temporal relations between the described events, when reported with telic simple past-tense clauses. It provides models of human reasoning that could supplement ACT-R models.
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  6.  53
    Transformative Experiences, Cognitive Modelling and Affective Forecasting.Marvin Https://Orcidorg Mathony & Michael Https://Orcidorg Messerli - 2024 - Erkenntnis 89 (1):65-87.
    In the last seven years, philosophers have discussed the topic of transformative experiences. In this paper, we contribute to a crucial issue that is currently under-researched: transformative experiences' influence on cognitive modelling. We argue that cognitive modelling can be operationalized as affective forecasting, and we compare transformative and non-transformative experiences with respect to the ability of affective forecasting. Our finding is that decision-makers’ performance in cognitively modelling transformative experiences does not systematically differ from decision-makers’ performance in cognitively modelling (...)
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  7.  28
    Cognitive Modelling and Interpretation Applied on the Interpretation of Philosophical Texts.Fernand Vandamme - 1988 - Philosophica 41.
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  8.  6
    A systematic methodology for cognitive modelling.R. Cooper, J. Fox, J. Farringdon & T. Shallice - 1996 - Artificial Intelligence 85 (1-2):3-44.
  9.  14
    Hypermedia Support for Information Systems Development: A Cognitive Modelling Perspective.L. A. Gardner & R. D. Macredie - 1996 - Journal of Intelligent Systems 6 (1):95-113.
  10.  2
    Towards a systematic methodology for cognitive modelling.R. Cooper, J. Fox, J. Farringdom & T. Shallice - 1996 - Artificial Intelligence 84 (1-2):355.
  11.  8
    Cognitive Modeling at ICCM : State of the Art and Future Directions.Niels A. Taatgen, Marieke K. van Vugt, Jelmer P. Borst & Katja Mehlhorn - 2016 - Topics in Cognitive Science 8 (1):259-263.
    The goal of cognitive modeling is to build faithful simulations of human cognition. One of the challenges is that multiple models can often explain the same phenomena. Another challenge is that models are often very hard to understand, explore, and reuse by others. We discuss some of the solutions that were discussed during the 2015 International Conference on Cognitive Modeling.
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  12. Cognitive modeling and representation of knowledge in ontological engineering.Christine W. Chan - 2003 - Brain and Mind 4 (2):269-282.
    This paper describes the processes of cognitive modeling and representation of human expertise for developing an ontology and knowledge base of an expert system. An ontology is an organization and classification of knowledge. Ontological engineering in artificial intelligence (AI) has the practical goal of constructing frameworks for knowledge that allow computational systems to tackle knowledge-intensive problems and supports knowledge sharing and reuse. Ontological engineering is also a process that facilitates construction of the knowledge base of an intelligent system, (...)
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  13.  7
    Modelling Excessive Internet Use:s Revision of R. Davis's Cognitive-Behavioural Model of Pathological Internet Use.Katarzyna Kaliszewska-Czeremska - 2011 - Polish Psychological Bulletin 42 (3):129-139.
    Modelling Excessive Internet Use:s Revision of R. Davis's Cognitive-Behavioural Model of Pathological Internet Use This article proposes a new model of excessive Internet use. The point of departure for the present study was the Cognitive-Behavioural Model of Pathological Internet Use developed by R. Davis. The original model was modified so as to improve its explanatory power. Data were collected from 405 participants aged from 18 to 55 in various Polish towns and cities. The following instruments were administered to (...)
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  14.  54
    Cognitive Modeling at ICCM: State of the Art and Future Directions.Niels A. Taatgen, Marieke K. Vugt, Jelmer P. Borst & Katja Mehlhorn - 2016 - Topics in Cognitive Science 8 (1):259-263.
    The goal of cognitive modeling is to build faithful simulations of human cognition. One of the challenges is that multiple models can often explain the same phenomena. Another challenge is that models are often very hard to understand, explore, and reuse by others. We discuss some of the solutions that were discussed during the 2015 International Conference on Cognitive Modeling.
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  15.  9
    Cognitive Modeling and Representation of Knowledge in Ontological Engineering.Christine W. Chan - 2003 - Brain and Mind 4 (2):269-282.
    This paper describes the processes of cognitive modeling and representation of human expertise for developing an ontology and knowledge base of an expert system. An ontology is an organization and classification of knowledge. Ontological engineering in artificial intelligence has the practical goal of constructing frameworks for knowledge that allow computational systems to tackle knowledge-intensive problems and supports knowledge sharing and reuse. Ontological engineering is also a process that facilitates construction of the knowledge base of an intelligent system, which (...)
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  16.  50
    Cognitive Modeling of Individual Variation in Reference Production and Comprehension.Petra Hendriks - 2016 - Frontiers in Psychology 7.
  17. Computational cognitive modeling the source of power and other related issues.Ron Sun - unknown
    Computational cognitive models hypothesize internal mental processes of human cognitive activities and express such activities by computer programs Such computational models often consist of many components and aspects Claims are often made that certain aspects of the models play a key role in modeling but such claims are sometimes not well justi ed or explored In this paper we rst review some fundamental distinctions and issues in computational modeling We then discuss in principle systematic ways of (...)
     
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  18.  26
    Editors’ Introduction: Cognitive Modeling at ICCM: Advancing the State of the Art.William G. Kennedy, Marieke K. Vugt & Adrian P. Banks - 2018 - Topics in Cognitive Science 10 (1):140-143.
    Cognitive modeling is the effort to understand the mind by implementing theories of the mind in computer code, producing measures comparable to human behavior and mental activity. The community of cognitive modelers has traditionally met twice every 3 years at the International Conference on Cognitive Modeling. In this special issue of topiCS, we present the best papers from the ICCM meeting. These best papers represent advances in the state of the art in cognitive (...). Since ICCM was for the first time also held jointly with the Society for Mathematical Psychology, we use this preface to also reflect on the similarities and differences between mathematical psychology and cognitive modeling. (shrink)
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  19. Connectionist modelling in cognitive sciences.V. Kvasnicka - 2003 - Filozofia 58 (1):35-43.
    The purpose of the paper is to present basic principles of connectionism and its position within contemporary cognitive science. Connectionist paradigm postulates thinking as a parallel processing of non-structured information by simple calculations performed by neurons that are deeply mutually interconnected. The basic numerical tools of connectionism are represented by so-called artificial neural networks, which are immediately applicable to the study of many cognitive functions at different levels of complexity and sophistication. Connectionism has brought with it a number (...)
     
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  20. Cognitive modeling of action selection learning.Diana F. Gordon & Devika Subramanian - 1996 - In Garrison W. Cottrell (ed.), Proceedings of the Eighteenth Annual Conference of The Cognitive Science Society. Lawrence Erlbaum. pp. 546--551.
     
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  21.  7
    Systematic Parameter Reviews in Cognitive Modeling: Towards a Robust and Cumulative Characterization of Psychological Processes in the Diffusion Decision Model.N. -Han Tran, Leendert van Maanen, Andrew Heathcote & Dora Matzke - 2021 - Frontiers in Psychology 11.
    Parametric cognitive models are increasingly popular tools for analyzing data obtained from psychological experiments. One of the main goals of such models is to formalize psychological theories using parameters that represent distinct psychological processes. We argue that systematic quantitative reviews of parameter estimates can make an important contribution to robust and cumulative cognitive modeling. Parameter reviews can benefit model development and model assessment by providing valuable information about the expected parameter space, and can facilitate the more efficient (...)
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  22.  10
    Editor's Introduction: Best of Papers From the 17th International Conference on Cognitive Modeling.Terrence C. Stewart - 2020 - Topics in Cognitive Science 12 (3):957-959.
    Cognitive modeling involves the creation of computer simulations that emulate the internal processes of the mind. This set of papers are the five best representatives of the papers presented at the 17th International Conference on Cognitive Modeling, ICCM 2019. While they represent a diversity of techniques and tasks, they all also share a striking similarity: They make strong statements about the importance of accounting for individual differences.
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  23.  18
    Cognitive modeling and intelligent tutoring.John R. Anderson, C. Franklin Boyle, Albert T. Corbett & Matthew W. Lewis - 1990 - Artificial Intelligence 42 (1):7-49.
  24. On levels of cognitive modeling.Ron Sun, Andrew Coward & Michael J. Zenzen - 2005 - Philosophical Psychology 18 (5):613-637.
    The article first addresses the importance of cognitive modeling, in terms of its value to cognitive science (as well as other social and behavioral sciences). In particular, it emphasizes the use of cognitive architectures in this undertaking. Based on this approach, the article addresses, in detail, the idea of a multi-level approach that ranges from social to neural levels. In physical sciences, a rigorous set of theories is a hierarchy of descriptions/explanations, in which causal relationships among (...)
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  25.  17
    Cognitive Modeling of Anticipation: Unsupervised Learning and Symbolic Modeling of Pilots' Mental Representations.Sebastian Blum, Oliver Klaproth & Nele Russwinkel - 2022 - Topics in Cognitive Science 14 (4):718-738.
    The ability to anticipate team members' actions enables joint action towards a common goal. Task knowledge and mental simulation allow for anticipating other agents' actions and for making inferences about their underlying mental representations. In human–AI teams, providing AI agents with anticipatory mechanisms can facilitate collaboration and successful execution of joint action. This paper presents a computational cognitive model demonstrating mental simulation of operators' mental models of a situation and anticipation of their behavior. The work proposes two successive steps: (...)
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  26.  6
    Editors’ Introduction: Best Papers from the 19th International Conference on Cognitive Modeling.Terrence C. Stewart & Joost de Jong - 2022 - Topics in Cognitive Science 14 (4):825-827.
    The International Conference on Cognitive Modeling brings together researchers from around the world whose main goal is to build computational systems that reflect the internal processes of the mind. In this issue, we present the five best representative papers on this work from our 19th meeting, ICCM 2021, which was held virtually from July 3 to July 9, 2021. Three of these papers provide new techniques for refining computational models, giving better methods for taking empirical data and producing (...)
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  27.  27
    Modelling the Direct and Indirect Effects of Positive Emotional and Cognitive Traits and States on Social Judgements.Scott C. Roesch - 1999 - Cognition and Emotion 13 (4):387-418.
  28.  21
    A Cognitive Modeling Approach to Strategy Formation in Dynamic Decision Making.Prezenski Sabine, Brechmann André, Wolff Susann & Russwinkel Nele - 2017 - Frontiers in Psychology 8.
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  29.  24
    Cognitive modeling: Of Gedanken beasts and human beings.Dan Lloyd - 1987 - Behavioral and Brain Sciences 10 (3):442-443.
  30.  19
    Editors’ Introduction: Cognitive Modeling at ICCM : Advancing the State of the Art.William G. Kennedy, Marieke K. van Vugt & Adrian P. Banks - 2018 - Topics in Cognitive Science 10 (1):140-143.
    In this issue of topiCS, we present the best papers from the ICCM meeting. These best papers represent advances in the state of the art in cognitive modeling. Since ICCM was for the first time also held jointly with the Society for Mathematical Psychology, we use this preface to also reflect on the similarities and differences between mathematical psychology and cognitive modeling.
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  31. Cognitive modeling for cognitive engineering.Wayne D. Gray - 2008 - In Ron Sun (ed.), The Cambridge handbook of computational psychology. New York: Cambridge University Press. pp. 565--588.
  32. Cognitive modeling: research logic in cognitive science.G. Strube - 2001 - In Neil J. Smelser & Paul B. Baltes (eds.), International Encyclopedia of the Social and Behavioral Sciences. Elsevier. pp. 3--2124.
  33.  17
    Cognitive offloading is value-based decision making: Modelling cognitive effort and the expected value of memory.Sam J. Gilbert - 2024 - Cognition 247 (C):105783.
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  34.  49
    Spanning seven orders of magnitude: a challenge for cognitive modeling.John R. Anderson - 2002 - Cognitive Science 26 (1):85-112.
    Much of cognitive psychology focuses on effects measured in tens of milliseconds while significant educational outcomes take tens of hours to achieve. The task of bridging this gap is analyzed in terms of Newell's (1990) bands of cognition—the Biological, Cognitive, Rational, and Social Bands. The 10 millisecond effects reside in his Biological Band while the significant learning outcomes reside in his Social Band. The paper assesses three theses: The Decomposition Thesis claims that learning occurring at the Social Band (...)
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  35.  18
    Ecological-enactive scientific cognition: modeling and material engagement.Giovanni Rolla & Felipe Novaes - 2022 - Phenomenology and the Cognitive Sciences 21 (3):625-643.
    Ecological-enactive approaches to cognition aim to explain cognition in terms of the dynamic coupling between agent and environment. Accordingly, cognition of one’s immediate environment depends on enaction and the picking up of affordances. However, ecological-enactive views supposedly fail to account for what is sometimes called “higher” cognition, i.e., cognition about potentially absent targets, which therefore can only be explained by postulating representational content. This challenge levelled against ecological-enactive approaches highlights a putative explanatory gap between basic and higher cognition. In this (...)
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  36. Ecological-enactive scientific cognition: modeling and material engagement.Giovanni Rolla & Felipe Novaes - 2020 - Phenomenology and the Cognitive Sciences 1:1-19.
    Ecological-enactive approaches to cognition aim to explain cognition in terms of the dynamic coupling between agent and environment. Accordingly, cognition of one’s immediate environment (which is sometimes labeled “basic” cognition) depends on enaction and the picking up of affordances. However, ecological-enactive views supposedly fail to account for what is sometimes called “higher” cognition, i.e., cognition about potentially absent targets, which therefore can only be explained by postulating representational content. This challenge levelled against ecological-enactive approaches highlights a putative explanatory gap between (...)
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  37. Cognitive modeling repository.Jay Myung & Mark Pitt - unknown
     
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  38. The role of cognitive modeling for user interface design representations: An epistemological analysis of knowledge engineering in the context of human-computer interaction. [REVIEW]Markus F. Peschl & Chris Stary - 1998 - Minds and Machines 8 (2):203-236.
    In this paper we review some problems with traditional approaches for acquiring and representing knowledge in the context of developing user interfaces. Methodological implications for knowledge engineering and for human-computer interaction are studied. It turns out that in order to achieve the goal of developing human-oriented (in contrast to technology-oriented) human-computer interfaces developers have to develop sound knowledge of the structure and the representational dynamics of the cognitive system which is interacting with the computer.We show that in a first (...)
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  39. Visual cognition and cognitive modeling.L. Magnani, S. Civita & G. Previde Massara - 1994 - In V. Cantoni (ed.), Human and Machine Vision: Analogies and Divergences. Plenum Publishers. pp. 229--243.
     
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  40. Theoretical status of computational cognitive modeling.Ron Sun - unknown
    This article explores the view that computational models of cognition may constitute valid theories of cognition, often in the full sense of the term ‘‘theory”. In this discussion, this article examines various (existent or possible) positions on this issue and argues in favor of the view above. It also connects this issue with a number of other relevant issues, such as the general relationship between theory and data, the validation of models, and the practical benefits of computational modeling. All (...)
     
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  41. Quantum cognitive modeling of concepts: an introduction.Tomas Veloz & Pablo Razeto - 2019 - In Diederik Aerts, Dalla Chiara, Maria Luisa, Christian de Ronde & Decio Krause (eds.), Probing the meaning of quantum mechanics: information, contextuality, relationalism and entanglement: Proceedings of the II International Workshop on Quantum Mechanics and Quantum Information: Physical, Philosophical and Logical Approaches, CLEA, Brussels. New Jersey: World Scientific.
     
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  42.  11
    Cognitive Modeling of Automation Adaptation in a Time Critical Task.Junya Morita, Kazuhisa Miwa, Akihiro Maehigashi, Hitoshi Terai, Kazuaki Kojima & Frank E. Ritter - 2020 - Frontiers in Psychology 11.
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  43.  9
    Editors’ Introduction: Best Papers from the 19th International Conference on Cognitive Modeling.Terrence C. Stewart & Joost Jong - 2022 - Topics in Cognitive Science 14 (4):825-827.
    The International Conference on Cognitive Modeling brings together researchers from around the world whose main goal is to build computational systems that reflect the internal processes of the mind. In this issue, we present the five best representative papers on this work from our 19th meeting, ICCM 2021, which was held virtually from July 3 to July 9, 2021. Three of these papers provide new techniques for refining computational models, giving better methods for taking empirical data and producing (...)
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  44. 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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  45.  14
    Epigenetic robotics: Modelling cognitive development in robotic systems.Giorgio Metta & Luc Berthouze - 2006 - Interaction Studies 7 (2):129-134.
  46.  15
    Neural network modelling of cognitive disinhibition and neurotransmitter dysfunction in obsessive–compulsive disorder.Jacques Ludik & Danj Stein - 1998 - In Dan J. Stein & Jacques Ludik (eds.), Neural Networks and Psychopathology: Connectionist Models in Practice and Research. Cambridge University Press.
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  47. Can quantum probability provide a new direction for cognitive modeling?Emmanuel M. Pothos & Jerome R. Busemeyer - 2013 - Behavioral and Brain Sciences 36 (3):255-274.
    Classical (Bayesian) probability (CP) theory has led to an influential research tradition for modeling cognitive processes. Cognitive scientists have been trained to work with CP principles for so long that it is hard even to imagine alternative ways to formalize probabilities. However, in physics, quantum probability (QP) theory has been the dominant probabilistic approach for nearly 100 years. Could QP theory provide us with any advantages in cognitive modeling as well? Note first that both CP (...)
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  48.  35
    Artificial Intelligence and Cognitive Modeling Have the Same Problem.Nicholas L. Cassimatis - 2012 - In Pei Wang & Ben Goertzel (eds.), Theoretical Foundations of Artificial General Intelligence. Springer. pp. 11--24.
  49.  74
    On levels of cognitive modeling.Ron Sun, L. Andrew Coward & Michael J. Zenzen - 2005 - Philosophical Psychology 18 (5):613-637.
  50.  31
    The limitations of the reverse-engineering approach to cognitive modeling.Jay G. Rueckl - 2012 - Behavioral and Brain Sciences 35 (5):305.
    Frost's critique reveals the limitations of the reverse-engineering approach to cognitive modeling – the style of psychological explanation in which a stipulated internal organization explains a relatively narrow set of phenomena. An alternative is to view organization as both the explanation for some phenomena and a phenomenon to be explained. This move poses new and interesting theoretical challenges for theories of word reading.
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