Results for 'knowledge modeling'

998 found
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  1.  20
    The ethics of conceptual, ontological, semantic and knowledge modeling.Robert J. Rovetto - 2023 - AI and Society:1-22.
    The ethics of artificial intelligence (AI) is a research topic with both theoretical and practical significance. However, the ethical and moral aspects of conceptual, ontological, semantic, and knowledge modeling, more specifically, and which are sometimes found in AI applications, is not being given sufficient attention. I argue that it should. Whether considering using or developing these meaning-focused models, there are ethical aspects. This paper offers a preliminary outline about this potentially new research field, discussing: some questions and areas (...)
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  2. Modeling the origins of object knowledge.Denis Mareschal & Bremner & J. Andrew - 2009 - In Bruce M. Hood & Laurie Santos (eds.), The origins of object knowledge. Oxford: Oxford University Press.
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  3. Knowledge in Flux. Modeling the Dynamics of Epistemic States.Peter Gärdenfors - 1988 - Studia Logica 49 (3):421-424.
     
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  4.  26
    Modeling Spatial Knowledge.Benjamin Kuipers - 1978 - Cognitive Science 2 (2):129-153.
    A person's cognitive map, or knowledge of large‐scale space, is built up from observations gathered as he travels through the environment. It acts as a problem solver to find routes and relative positions, as well as describing the current location. The TOUR model captures the multiple representations that make up the cognitive map, the problem‐solving strategies it uses, and the mechanisms for assimilating new information. The representations have rich collections of states of partial knowledge, which support many of (...)
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  5. Knowledge and Implicature: Modeling Language Understanding as Social Cognition.Noah D. Goodman & Andreas Stuhlmüller - 2013 - Topics in Cognitive Science 5 (1):173-184.
    Is language understanding a special case of social cognition? To help evaluate this view, we can formalize it as the rational speech-act theory: Listeners assume that speakers choose their utterances approximately optimally, and listeners interpret an utterance by using Bayesian inference to “invert” this model of the speaker. We apply this framework to model scalar implicature (“some” implies “not all,” and “N” implies “not more than N”). This model predicts an interaction between the speaker's knowledge state and the listener's (...)
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  6.  36
    Modeling knowledge‐based inferences in story comprehension.Stefan L. Frank, Mathieu Koppen, Leo G. M. Noordman & Wietske Vonk - 2003 - Cognitive Science 27 (6):875-910.
    A computational model of inference during story comprehension is presented, in which story situations are represented distributively as points in a high‐dimensional “situation‐state space.” This state space organizes itself on the basis of a constructed microworld description. From the same description, causal/temporal world knowledge is extracted. The distributed representation of story situations is more flexible than Golden and Rumelhart's [Discourse Proc 16 (1993) 203] localist representation.A story taking place in the microworld corresponds to a trajectory through situation‐state space. During (...)
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  7.  38
    Knowledge in Flux: Modeling the Dynamics of Epistemic States.Peter Menzies & Peter Gardenfors - 1994 - Philosophical Review 103 (1):159.
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  8.  20
    Modeling knowledge‐based inferences in story comprehension.Stefan L. Frank, Mathieu Koppen, Leo G. M. Noordman & Wietske Vonk - 2003 - Cognitive Science 27 (6):875-910.
    A computational model of inference during story comprehension is presented, in which story situations are represented distributively as points in a high‐dimensional “situation‐state space.” This state space organizes itself on the basis of a constructed microworld description. From the same description, causal/temporal world knowledge is extracted. The distributed representation of story situations is more flexible than Golden and Rumelhart's [Discourse Proc 16 (1993) 203] localist representation.A story taking place in the microworld corresponds to a trajectory through situation‐state space. During (...)
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  9.  72
    Modeling molecules: Computational nanotechnology as a knowledge community.Ann Johnson - 2009 - Perspectives on Science 17 (2):pp. 144-173.
    I propose that a sociological and historical examination of nanotechnologists can contribute more to an understanding of nanotechnology than an ontological definition. Nanotechnology emerged from the convergent evolution of numerous "technical knowledge communities"-networks of tightly-interconnected people who operate between disciplines and individual research groups. I demonstrate this proposition by sketching the co-evolution of computational chemistry and computational nanotechnology. Computational chemistry arose in the 1950s but eventually segregated into an ab initio, basic research, physics-oriented flavor and an industry-oriented, molecular (...) and visualization, biochemical flavor. Computational nanotechnology arose in the 1990s as a synthesis of these two subgroups, infused by people and practices from computational materials science, engineering, computer science, and elsewhere. I show that to understand the aims and outcomes of computational nanotechnology-and nanotechnology more generally-we need to understand relationships between different, but related, nano knowledge communities and their dependence on particular practices, artifacts, and theories. (shrink)
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  10.  20
    Towards Modeling False Memory With Computational Knowledge Bases.Justin Li & Emma Kohanyi - 2017 - Topics in Cognitive Science 9 (1):102-116.
    One challenge to creating realistic cognitive models of memory is the inability to account for the vast common–sense knowledge of human participants. Large computational knowledge bases such as WordNet and DBpedia may offer a solution to this problem but may pose other challenges. This paper explores some of these difficulties through a semantic network spreading activation model of the Deese–Roediger–McDermott false memory task. In three experiments, we show that these knowledge bases only capture a subset of human (...)
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  11.  12
    Towards Modeling False Memory With Computational Knowledge Bases.Justin Li & Emma Kohanyi - 2016 - Topics in Cognitive Science 8 (4).
    One challenge to creating realistic cognitive models of memory is the inability to account for the vast common–sense knowledge of human participants. Large computational knowledge bases such as WordNet and DBpedia may offer a solution to this problem but may pose other challenges. This paper explores some of these difficulties through a semantic network spreading activation model of the Deese–Roediger–McDermott false memory task. In three experiments, we show that these knowledge bases only capture a subset of human (...)
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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 (...)
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  13.  8
    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 (...)
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  14.  16
    Modeling Novice‐to‐Expert Shifts in Problem‐Solving Strategy and Knowledge Organization.Renée Elio & Peternela B. Scharf - 1990 - Cognitive Science 14 (4):579-639.
    This research presents a computer model called EUREKA that begins with novice‐like strategies and knowledge organizations for solving physics word problems and acquires features of knowledge organizations and basic approaches that characterize experts in this domain. EUREKA learns a highly interrelated network of problem‐type schemas with associated solution methodologies. Initially, superficial features of the problem statement form the basis for both the problem‐type schemas and the discriminating features that organize them in the P‐MOP (Problem Memory Organization Packet) network. (...)
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  15.  17
    Modeling experts, knowledge providers and expertise in Materials Modeling: MAEO as an application ontology of EMMO’s ecosystem.Pierluigi Del Nostro, Gerhard Goldbeck, Andrea Pozzi & Daniele Toti - 2023 - Applied ontology 18 (2):99-118.
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  16.  5
    Using modeling knowledge to guide design space search.Andrew Gelsey, Mark Schwabacher & Don Smith - 1998 - Artificial Intelligence 101 (1-2):35-62.
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  17.  13
    Modeling the Relations Among Morphological Awareness Dimensions, Vocabulary Knowledge, and Reading Comprehension in Adult Basic Education Students.Elizabeth L. Tighe & Christopher Schatschneider - 2016 - Frontiers in Psychology 7.
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  18.  28
    Knowledge in Flux: Modeling the Dynamics of Episternic States by Peter Gärdenfors. [REVIEW]Isaac Levi - 1991 - Journal of Philosophy 88 (8):437-444.
  19. Dynamic Epistemic Logic I: Modeling Knowledge and Belief.Eric Pacuit - 2013 - Philosophy Compass 8 (9):798-814.
    Dynamic epistemic logic, broadly conceived, is the study of logics of information change. This is the first paper in a two-part series introducing this research area. In this paper, I introduce the basic logical systems for reasoning about the knowledge and beliefs of a group of agents.
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  20. Fuzzy Networks for Modeling Shared Semantic Knowledge.Farshad Badie & Luis M. Augusto - 2023 - Journal of Artificial General Intelligence 14 (1):1-14.
    Shared conceptualization, in the sense we take it here, is as recent a notion as the Semantic Web, but its relevance for a large variety of fields requires efficient methods of extraction and representation for both quantitative and qualitative data. This notion is particularly relevant for the investigation into, and construction of, semantic structures such as knowledge bases and taxonomies, but given the required large, often inaccurate, corpora available for search we can get only approximations. We see fuzzy description (...)
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  21.  23
    US History Content Knowledge and Associated Effects of Race, Gender, Wealth, and Urbanity: Item Response Theory (IRT) Modeling of NAEP-USH Achievement.Tina L. Heafner & Paul G. Fitchett - 2018 - Journal of Social Studies Research 42 (1):11-25.
    Using an Item response theory (IRT) analysis, this study examined ethnic and gender groups differences in exposure to content material (i.e. access to curriculum) assessed on the 12th grade NAEP US History 2010 exam. Employing multi-step data analysis procedures, authors examined race and gender using the NAEP Item Mapping Tool available through NCES. Results revealed item-level patterns, which suggest that females and Black students are more likely to answer questions, related to social history, particularly the Civil Rights, when accounting for (...)
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  22. 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 (...)
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  23.  6
    Extending adaptive world modeling by identifying and handling insufficient knowledge models.Achim Kuwertz & Jürgen Beyerer - 2016 - Journal of Applied Logic 19:102-127.
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  24.  17
    Combining Fuzzy Knowledge and Data for Neuro-Fuzzy Modeling.Abderrahim Labbi - 1997 - Journal of Intelligent Systems 7 (1-2):145-164.
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  25.  43
    To Share or Not to Share: Modeling Tacit Knowledge Sharing, Its Mediators and Antecedents.Chieh-Peng Lin - 2007 - Journal of Business Ethics 70 (4):411-428.
    Tacit knowledge sharing discussed in this study is important in the area of business ethics, because an unwillingness to share knowledge that may hurt an organization’s survival is seen as being seriously unethical. In the proposed model of this study, distributive justice, procedural justice, and cooperativeness influence tacit knowledge sharing indirectly via two mediators: organizational commitment and trust in co-workers. Accordingly, instrumental ties and expressive ties influence tacit knowledge sharing indirectly only via the mediation of trust (...)
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  26.  19
    Computational Modeling of Cognition and Behavior.Simon Farrell & Stephan Lewandowsky - 2017 - Cambridge University Press.
    Computational modeling is now ubiquitous in psychology, and researchers who are not modelers may find it increasingly difficult to follow the theoretical developments in their field. This book presents an integrated framework for the development and application of models in psychology and related disciplines. Researchers and students are given the knowledge and tools to interpret models published in their area, as well as to develop, fit, and test their own models. Both the development of models and key features (...)
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  27. Modeling practical thinking.Matthew Mosdell - 2018 - Mind and Language 34 (4):445-464.
    Intellectualists about knowledge how argue that knowing how to do something is knowing the content of a proposition (i.e, a fact). An important component of this view is the idea that propositional knowledge is translated into behavior when it is presented to the mind in a peculiarly practical way. Until recently, however, intellectualists have not said much about what it means for propositional knowledge to be entertained under thought's practical guise. Carlotta Pavese fills this gap in the (...)
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  28.  24
    Modeling the Structure and Dynamics of Semantic Processing.Armand S. Rotaru, Gabriella Vigliocco & Stefan L. Frank - 2018 - Cognitive Science 42 (8):2890-2917.
    The contents and structure of semantic memory have been the focus of much recent research, with major advances in the development of distributional models, which use word co‐occurrence information as a window into the semantics of language. In parallel, connectionist modeling has extended our knowledge of the processes engaged in semantic activation. However, these two lines of investigation have rarely been brought together. Here, we describe a processing model based on distributional semantics in which activation spreads throughout a (...)
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  29.  18
    Modeling the Development of Children's Use of Optional Infinitives in Dutch and English Using MOSAIC.Daniel Freudenthal, Julian M. Pine & Fernand Gobet - 2006 - Cognitive Science 30 (2):277-310.
    In this study we use a computational model of language learning called model of syntax acquisition in children (MOSAIC) to investigate the extent to which the optional infinitive (OI) phenomenon in Dutch and English can be explained in terms of a resource-limited distributional analysis of Dutch and English child-directed speech. The results show that the same version of MOSAIC is able to simulate changes in the pattern of finiteness marking in 2 children learning Dutch and 2 children learning English as (...)
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  30. Modeling, Truth, and Philosophy.Paul Teller - 2012 - Metaphilosophy 43 (3):257-274.
    Knowledge requires truth, and truth, we suppose, involves unflawed representation. Science does not provide knowledge in this sense but rather provides models, representations that are limited in their accuracy, precision, or, most often, both. Truth as we usually think of it is an idealization, one that serves wonderfully in most ordinary applications, but one that can terribly mislead for certain issues in philosophy. This article sketches how this happens for five important issues, thereby showing how philosophical method must (...)
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  31.  9
    Multimodal Modeling: Bridging Biosemiotics and Social Semiotics.Alin Olteanu - 2021 - Biosemiotics 14 (3):783-805.
    This paper explores a semiotic notion of body as starting point for bridging biosemiotic with social semiotic theory. The cornerstone of the argument is that the social semiotic criticism of the classic view of meaning as double articulation can support the criticism of language-centrism that lies at the foundation of biosemiotics. Besides the pragmatic epistemological advantages implicit in a theoretical synthesis, I argue that this brings a semiotic contribution to philosophy of mind broadly. Also, it contributes to overcoming the polemic (...)
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  32.  29
    Peter Gärdenfors. Knowledge in flux. Modeling the dynamics of epistemic states. Bradford books. The MIT Press, Cambridge, Mass., and London, 1988, xi + 262 pp. - Carlos E. Alchourrón, Peter Gärdenfors, and David Makinson. On the logic of theory change: partial meet contraction and revision functions. The journal of symbolic logic, vol. 50 , pp. 510–530. [REVIEW]André Fuhrmann - 1992 - Journal of Symbolic Logic 57 (4):1479-1481.
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  33.  18
    Review: Peter Gardenfors, Knowledge in Flux. Modeling the Dynamics of Epistemic States; Carlos E. Alchourron, Peter Gardenfors, David Makinson, On the Logic of Theory Change: Partial Meet Contraction and Revision Functions. [REVIEW]Andre Fuhrmann - 1992 - Journal of Symbolic Logic 57 (4):1479-1481.
  34.  12
    What Is the Influence of Morphological Knowledge in the Early Stages of Reading Acquisition Among Low SES Children? A Graphical Modeling Approach.Pascale Colé, Eddy Cavalli, Lynne G. Duncan, Anne Theurel, Edouard Gentaz, Liliane Sprenger-Charolles & Abdessadek El-Ahmadi - 2018 - Frontiers in Psychology 9.
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  35.  21
    Modeling Reference Production as the Probabilistic Combination of Multiple Perspectives.Mindaugas Mozuraitis, Suzanne Stevenson & Daphna Heller - 2018 - Cognitive Science 42 (S4):974-1008.
    While speakers have been shown to adapt to the knowledge state of their addressee in choosing referring expressions, they often also show some egocentric tendencies. The current paper aims to provide an explanation for this “mixed” behavior by presenting a model that derives such patterns from the probabilistic combination of both the speaker's and the addressee's perspectives. To test our model, we conducted a language production experiment, in which participants had to refer to objects in a context that also (...)
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  36.  31
    Modeling parallelization and flexibility improvements in skill acquisition: From dual tasks to complex dynamic skills.Niels Taatgen - 2005 - Cognitive Science 29 (3):421-455.
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  37.  28
    Modeling intentional agency: a neo-Gricean framework.Matti Sarkia - 2021 - Synthese 199 (3-4):7003-7030.
    This paper analyzes three contrasting strategies for modeling intentional agency in contemporary analytic philosophy of mind and action, and draws parallels between them and similar strategies of scientific model-construction. Gricean modeling involves identifying primitive building blocks of intentional agency, and building up from such building blocks to prototypically agential behaviors. Analogical modeling is based on picking out an exemplary type of intentional agency, which is used as a model for other agential types. Theoretical modeling involves reasoning (...)
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  38.  18
    Modeling Statistical Insensitivity: Sources of Suboptimal Behavior.Annie Gagliardi, Naomi H. Feldman & Jeffrey Lidz - 2016 - Cognitive Science 40 (7):188-217.
    Children acquiring languages with noun classes have ample statistical information available that characterizes the distribution of nouns into these classes, but their use of this information to classify novel nouns differs from the predictions made by an optimal Bayesian classifier. We use rational analysis to investigate the hypothesis that children are classifying nouns optimally with respect to a distribution that does not match the surface distribution of statistical features in their input. We propose three ways in which children's apparent statistical (...)
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  39.  74
    Modeling the social organization of science: Chasing complexity through simulations.Carlo Martini & Manuela Fernández Pinto - 2016 - European Journal for Philosophy of Science 7 (2):221-238.
    At least since Kuhn’s Structure, philosophers have studied the influence of social factors in science’s pursuit of truth and knowledge. More recently, formal models and computer simulations have allowed philosophers of science and social epistemologists to dig deeper into the detailed dynamics of scientific research and experimentation, and to develop very seemingly realistic models of the social organization of science. These models purport to be predictive of the optimal allocations of factors, such as diversity of methods used in science, (...)
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  40.  10
    Participatory modeling in sustainability science: the road to value-neutrality.Miles MacLeod & Michiru Nagatsu - forthcoming - Philosophy of Science:1-13.
    Participatory modeling in sustainability science allows scientists to take stakeholders’ interests, knowledge and values into account when designing a model-based solution to a sustainability problem, by incorporating stakeholders in the model-building process. This improves the chance of generating socially robust knowledge and consensus on solutions. Part of what helps in this regard is that scientists, through involving stakeholders, limit their own values from influencing the outcome, thus achieving some level of value-neutrality. We argue that while it might (...)
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  41.  14
    Modeling Mental Spatial Reasoning About Cardinal Directions.Holger Schultheis, Sven Bertel & Thomas Barkowsky - 2014 - Cognitive Science 38 (8):1521-1561.
    This article presents research into human mental spatial reasoning with orientation knowledge. In particular, we look at reasoning problems about cardinal directions that possess multiple valid solutions , at human preferences for some of these solutions, and at representational and procedural factors that lead to such preferences. The article presents, first, a discussion of existing, related conceptual and computational approaches; second, results of empirical research into the solution preferences that human reasoners actually have; and, third, a novel computational model (...)
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  42.  11
    Rethinking Knowledge: The Heuristic View.Carlo Cellucci - 2017 - Cham, Switzerland: Springer.
    This monograph addresses the question of the increasing irrelevance of philosophy, which has seen scientists as well as philosophers concluding that philosophy is dead and has dissolved into the sciences. It seeks to answer the question of whether or not philosophy can still be fruitful and what kind of philosophy can be such. The author argues that from its very beginning philosophy has focused on knowledge and methods for acquiring knowledge. This view, however, has generally been abandoned in (...)
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  43.  21
    Modeling a Cognitive Transition at the Origin of Cultural Evolution Using Autocatalytic Networks.Liane Gabora & Mike Steel - 2020 - Cognitive Science 44 (9):e12878.
    Autocatalytic networks have been used to model the emergence of self‐organizing structure capable of sustaining life and undergoing biological evolution. Here, we model the emergence of cognitive structure capable of undergoing cultural evolution. Mental representations (MRs) of knowledge and experiences play the role of catalytic molecules, and interactions among them (e.g., the forging of new associations) play the role of reactions and result in representational redescription. The approach tags MRs with their source, that is, whether they were acquired through (...)
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  44.  8
    Strategy Use in Second Language Vocabulary Learning and Its Relationships With the Breadth and Depth of Vocabulary Knowledge: A Structural Equation Modeling Study.Na Fan - 2020 - Frontiers in Psychology 11.
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  45. Modeling Cracks and Cracking Models: Structures, Mechanisms, Boundary Conditions, Constraints, Inconsistencies and The Proper Domains of Natural Laws.Jordi Cat - 2005 - Synthese 146 (3):447-487.
    The emphasis on models hasn’t completely eliminated laws from scientific discourse and philosophical discussion. Instead, I want to argue that much of physics lies beyond the strict domain of laws. I shall argue that in important cases the physics, or physical understanding, does not lie either in laws or in their properties, such as universality, consistency and symmetry. I shall argue that the domain of application commonly attributed to laws is too narrow. That is, laws can still play an important, (...)
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  46.  38
    User Modeling via Stereotypes.Elaine Rich - 1979 - Cognitive Science 3 (4):329-354.
    This paper addresses the problems that must be considered if computers are going to treat their users as individuals with distinct personalities, goals, and so forth. It first outlines the issues, and then proposes stereotypes as a useful mechanism for building models of individual users on the basis of a small amount of information about them. In order to build user models quickly, a large amount of uncertain knowledge must be incorporated into the models. The issue of how to (...)
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  47.  20
    Michel Foucault's moral subjectivity and the semiotic modeling of knowledge.Athanasios Votsis - 2012 - Semiotica 2012 (192).
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  48.  14
    Why philosophy? On the importance of knowledge representation and its relation to modeling cognition.Markus F. Peschl - 1997 - In Matjaz Gams (ed.), Mind Versus Computer: Were Dreyfus and Winograd Right? Amsterdam: Ios Press. pp. 43--90.
  49.  46
    Expert system projects at the Banque de France an experience in modeling and representing knowledge.Duc Pham-Hi - 1989 - Theory and Decision 27 (1-2):163-173.
  50. The Causal Nature of Modeling with Big Data.Wolfgang Pietsch - 2016 - Philosophy and Technology 29 (2):137-171.
    I argue for the causal character of modeling in data-intensive science, contrary to widespread claims that big data is only concerned with the search for correlations. After discussing the concept of data-intensive science and introducing two examples as illustration, several algorithms are examined. It is shown how they are able to identify causal relevance on the basis of eliminative induction and a related difference-making account of causation. I then situate data-intensive modeling within a broader framework of an epistemology (...)
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