Results for 'Scientific Modeling'

998 found
Order:
  1. Is Scientific Modeling an Indirect Methodology?Karlis Podnieks - 2009 - The Reasoner 3 (1):4-5.
    If we consider modeling not as a heap of contingent structures, but (where possible) as evolving coordinated systems of models, then we can reasonably explain as "direct representations" even some very complicated model-based cognitive situations. Scientific modeling is not as indirect as it may seem. "Direct theorizing" comes later, as the result of a successful model evolution.
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   3 citations  
  2.  26
    Scientific Modeling Versus Engineering Modeling: Similarities and Dissimilarities.Aboutorab Yaghmaie - 2021 - Journal for General Philosophy of Science / Zeitschrift für Allgemeine Wissenschaftstheorie 52 (3):455-474.
    This article aims to answer what I call the “constitution question of engineering modeling”: in virtue of what does an engineering model model its target system? To do so, I will offer a category-theoretic, structuralist account of design, using the olog framework. Drawing on this account, I will conclude that engineering and scientific models are not only cognitively but also representationally indistinguishable. I will finally propose an axiological criterion for distinguishing scientific from engineering modeling.
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  3. Imagination in scientific modeling.Adam Toon - 2016 - In Amy Kind (ed.), The Routledge Handbook of the Philosophy of Imagination. New York: Routledge. pp. 451-462.
    Modeling is central to scientific inquiry. It also depends heavily upon the imagination. In modeling, scientists seem to turn their attention away from the complexity of the real world to imagine a realm of perfect spheres, frictionless planes and perfect rational agents. Modeling poses many questions. What are models? How do they relate to the real world? Recently, a number of philosophers have addressed these questions by focusing on the role of the imagination in modeling. (...)
    Direct download  
     
    Export citation  
     
    Bookmark   7 citations  
  4. Qualitative Scientific Modeling and Loop Analysis.James Justus - 2005 - Philosophy of Science 72 (5):1272-1286.
    Loop analysis is a method of qualitative modeling anticipated by Sewall Wright and systematically developed by Richard Levins. In Levins’ (1966) distinctions between modeling strategies, loop analysis sacrifices precision for generality and realism. Besides criticizing the clarity of these distinctions, Orzack and Sober (1993) argued qualitative modeling is conceptually and methodologically problematic. Loop analysis of the stability of ecological communities shows this criticism is unjustified. It presupposes an overly narrow view of qualitative modeling and underestimates the (...)
    Direct download (11 more)  
     
    Export citation  
     
    Bookmark   5 citations  
  5.  14
    Scientific Modeling: A Multilevel Feedback Process.Jan M. Zytkow - 1999 - In L. Magnani, N. J. Nersessian & P. Thagard (eds.), Model-Based Reasoning in Scientific Discovery. Kluwer/Plenum. pp. 311--325.
  6.  51
    Social-Scientific Modeling in Biblical and Related Studies.Petri Luomanen - 2013 - Perspectives on Science 21 (2):202-220.
    Modeling is a relatively new topic in biblical and related subjects—it was first introduced in the 1970s—and it is controversial because the application of social-scientific models raises the difficult question of the cultural gap between the present societies, where the models are usually developed, and the ancient cultural context to which the models are applied.Because biblical and related studies may not belong to the most familiar scholarly fields of the readers of this journal, I first sketch an overall (...)
    Direct download (5 more)  
     
    Export citation  
     
    Bookmark  
  7. Scientific Modeling and the Environment: Toward the Establishment of Michel Serres's Natural Contract.Pamela Carralero - 2020 - Telos: Critical Theory of the Contemporary 2020 (190):53-75.
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  8.  34
    Modals model models: scientific modeling and counterfactual reasoning.Daniel Dohrn - 2023 - Synthese 201 (5):1-22.
    Counterfactual reasoning has been used to account for many aspects of scientific reasoning. More recently, it has also been used to account for the scientific practice of modeling. Truth in a model is truth in a situation considered as counterfactual. When we reason with models, we reason with counterfactuals. Focusing on selected models like Bohr’s atom model or models of population dynamics, I present an account of how the imaginative development of a counterfactual supposition leads us from (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  9.  50
    Idealization and abstraction in scientific modeling.Demetris Portides - 2018 - Synthese 198 (Suppl 24):5873-5895.
    I argue that we cannot adequately characterize idealization and abstraction and the distinction between the two on the grounds that they have distinct semantic properties. By doing so, on the one hand, we focus on the conceptual products of the two processes in making the distinction and we overlook the importance of the nature of the thought processes that underlie model-simplifying assumptions. On the other hand, we implicitly rely on a sense of abstraction as subtraction, which is unsuitable for explicating (...)
    No categories
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   13 citations  
  10. Handbook of Philosophy of Scientific Modeling.Rawad El Skaf & Michael T. Stuart (eds.) - forthcoming - London: Routledge.
    No categories
     
    Export citation  
     
    Bookmark  
  11. Routledge Handbook of Scientific Modeling.Tarja Knuuttila, Natalia Carrillo & Rami Koskinen (eds.) - forthcoming - Routledge.
    No categories
     
    Export citation  
     
    Bookmark  
  12.  10
    Representation and Denotation in Scientific Modeling.Demetris Portides - 2018 - Proceedings of the XXIII World Congress of Philosophy 62:131-136.
    Nelson Goodman argued convincingly that in order to understand the representation relation one should dissociate it from the relation of resemblance because of the logical differences between the two concepts. Resemblance is reflexive and symmetric whereas representation is not. Furthermore, Goodman suggested that what lies at the core of representation is denotation. According to Goodman, if X represents Y then X must denote Y, but he recognized that by opting for an analysis of representation only based on this idea of (...)
    No categories
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  13.  44
    Abstraction as an Autonomous Process in Scientific Modeling.Sim-Hui Tee - 2020 - Philosophia 48 (2):789-801.
    ion is one of the important processes in scientific modeling. It has always been implied that abstraction is an agent-centric activity that involves the cognitive processes of scientists in model building. I contend that there is an autonomous aspect of abstraction in many modeling activities. I argue that the autonomous process of abstraction is continuous with the agent-centric abstraction but capable of evolving independently from the modeler’s abstraction activity.
    No categories
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   2 citations  
  14.  47
    Visual Representations of Structure and the Dynamics of Scientific Modeling.William Goodwin - 2012 - Spontaneous Generations 6 (1):131-141.
    Understanding what is distinctive about the role of models in science requires characterizing broad patterns in how these models evolve in the face of experimental results. That is, we must examine not just model statics—how the model relates to theory, or represents the world, at some point in time—but also model dynamics—how the model both generates new experimental results and is modified in response to them. Visual representations of structure play a central role in the theoretical reasoning of organic chemists. (...)
    Direct download (8 more)  
     
    Export citation  
     
    Bookmark   2 citations  
  15.  35
    Of Predators and Prey: Imagination in Scientific Modeling.Fiora Salis - 2020 - In Keith Moser & Ananta Ch Sukla (eds.), Imagination and Art: Explorations in Contemporary Theory. Brill | Rodopi. pp. 451–474.
    What are theoretical models and how do they contribute to a scientific understanding of reality? In this chapter, I will argue that models are akin to fictional stories in that they are human-made artifacts created through the imaginative activities of scientists. And I will suggest that the sort of imagination involved in modeling is make-believe and that this is constrained in three main ways which, together, enable knowledge of reality. I will conclude by addressing recent criticisms against the (...)
    Direct download  
     
    Export citation  
     
    Bookmark   1 citation  
  16.  89
    Symbolic versus Modelistic Elements in Scientific Modeling.Chuang Liu - 2015 - Theoria: Revista de Teoría, Historia y Fundamentos de la Ciencia 30 (2):287.
    In this paper, we argue that symbols are conventional vehicles whose chief function is denotation, while models are epistemic vehicles, and their chief function is to show what their targets are like in the relevant aspects. And we explain why this is incompatible with the deflationary view on scientific modeling. Although the same object may serve both functions, the two vehicles are conceptually distinct and most models employ both elements. With the clarification of this point we offer an (...)
    Direct download (6 more)  
     
    Export citation  
     
    Bookmark   2 citations  
  17. Integración de analogías en la investigación científica (Integration of Analogies in Scientific Modeling).Natalia Carrillo-Escalera - 2019 - Revista Colombiana de Filosofía de la Ciencia 37 (18):318-335.
    Discussion of modeling within philosophy of science has focused in how models, understood as finished products, represent the world. This approach has some issues accounting for the value of modeling in situations where there are controversies as to which should be the object of representation. In this work I show that a historical analysis of modeling complements the aforementioned representational program, since it allows us to examine processes of integration of analogies that play a role in the (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark  
  18. Routledge Handbook of Philosophy of Scientific Modeling.Rasmus Grønfeldt Winther (ed.) - forthcoming - London, UK:
    No categories
     
    Export citation  
     
    Bookmark  
  19.  22
    Making coherent senses of success in scientific modeling.Beckett Sterner & Christopher DiTeresi - 2021 - European Journal for Philosophy of Science 11 (1):1-20.
    Making sense of why something succeeded or failed is central to scientific practice: it provides an interpretation of what happened, i.e. an hypothesized explanation for the results, that informs scientists’ deliberations over their next steps. In philosophy, the realism debate has dominated the project of making sense of scientists’ success and failure claims, restricting its focus to whether truth or reliability best explain science’s most secure successes. Our aim, in contrast, will be to expand and advance the practice-oriented project (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark  
  20. Workshop on Abduction and Induction in Ai and Scientific Modeling.P. A. Flach, A. C. Kakas, L. Magnani & O. Ray (eds.) - 2006
     
    Export citation  
     
    Bookmark  
  21.  5
    Sexualized Brains: Scientific Modeling of Emotional Intelligence from a Cultural Perspective. [REVIEW]Yiftach Fehige - 2009 - Isis 100:887-888.
  22.  36
    The Routledge Handbook of Philosophy of Scientific Modeling.Tarja Knuuttila, Natalia Carrillo & Rami Koskinen (eds.) - 2024 - Routledge.
    An outstanding reference source to this fast-growing area and is the first volume of its kind. Essential reading for students and scholars of philosophy of science, formal epistemology, and philosophy of social science, and for those in related fields such as computer science and information technology.
    No categories
    Direct download  
     
    Export citation  
     
    Bookmark  
  23.  50
    Modeling Organs with Organs on Chips: Scientific Representation and Engineering Design as Modeling Relations.Michael Poznic - 2016 - Philosophy and Technology 29 (4):357-371.
    On the basis of a case study in bioengineering, this paper proposes a novel perspective on models in science and engineering. This is done with the help of two notions: representation and design. These two notions are interpreted as referring to modeling relations between vehicles and targets that differ in their respective directions of fit. The representation relation has a vehicle-to-target direction of fit and the design relation has a target-to-vehicle direction of fit. The case study of an organ (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   4 citations  
  24.  31
    Scientific Practice in Modeling Diseases: Stances from Cancer Research and Neuropsychiatry.Marta Bertolaso & Raffaella Campaner - 2020 - Journal of Medicine and Philosophy 45 (1):105-128.
    In the last few decades, philosophy of science has increasingly focused on multilevel models and causal mechanistic explanations to account for complex biological phenomena. On the one hand, biological and biomedical works make extensive use of mechanistic concepts; on the other hand, philosophers have analyzed an increasing range of examples taken from different domains in the life sciences to test—support or criticize—the adequacy of mechanistic accounts. The article highlights some challenges in the elaboration of mechanistic explanations with a focus on (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   2 citations  
  25. Scientific Understanding and Representation: Modeling in the Physical Sciences.Insa Lawler, Kareem Khalifa & Elay Shech (eds.) - 2022 - New York, NY: Routledge.
    This volume brings together leading scholars working on understanding and representation in philosophy of science. It features a critical conversation format between contributors that advances debates concerning scientific understanding, scientific representation, and their delicate interplay.
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  26. Modeling scientific evidence: the challenge of specifying likelihoods.Patrick Forber - 2010 - In Henk W. de Regt (ed.), Epsa Philosophy of Science: Amsterdam 2009. Springer. pp. 55--65.
    Evidence is an objective matter. This is the prevailing view within science, and confirmation theory should aim to capture the objective nature of scientific evidence. Modeling an objective evidence relation in a probabilistic framework faces two challenges: the probabilities must have the right epistemic foundation, and they must be specifiable given the hypotheses and data under consideration. Here I will explore how Sober's approach to confirmation handles these challenges of foundation and specification. In particular, I will argue that (...)
    Direct download (5 more)  
     
    Export citation  
     
    Bookmark   1 citation  
  27.  17
    Modeling scientific practice: Paul Thagard's computational approach.Stephen M. Downes - 1993 - New Ideas in Psychology 11 (2):229-243.
    In this paper I examine Paul Thagard's computational approach to studying science, which is a contribution to the cognitive science of science. I present several criticisms of Thagard's approach and use them to motivate some suggestions for alternative approaches in cognitive science of science. I first argue that Thagard does not clearly establish the units of analysis of his study. Second, I argue that Thagard mistakenly applies the same model to both individual and group decision making. Finally, I argue that (...)
    Direct download  
     
    Export citation  
     
    Bookmark   1 citation  
  28.  15
    Nicole C. Karafyllis;, Gotlind Ulshöfer . Sexualized Brains: Scientific Modeling of Emotional Intelligence from a Cultural Perspective. xvii + 429 pp., illus., bibl., index. Cambridge, Mass./London: MIT Press, 2008. $50. [REVIEW]Yiftach J. H. Fehige - 2009 - Isis 100 (4):887-888.
    No categories
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark  
  29. Understanding scientific study via process modeling.Robert W. P. Luk - 2010 - Foundations of Science 15 (1):49-78.
    This paper argues that scientific studies distinguish themselves from other studies by a combination of their processes, their (knowledge) elements and the roles of these elements. This is supported by constructing a process model. An illustrative example based on Newtonian mechanics shows how scientific knowledge is structured according to the process model. To distinguish scientific studies from research and scientific research, two additional process models are built for such processes. We apply these process models: (1) to (...)
    Direct download (8 more)  
     
    Export citation  
     
    Bookmark   12 citations  
  30. Constructive modeling in creating scientific understanding.Nancy J. Nersessian - 1995 - Science & Education 4:203-226.
  31. Modeling without models.Arnon Levy - 2015 - Philosophical Studies 172 (3):781-798.
    Modeling is an important scientific practice, yet it raises significant philosophical puzzles. Models are typically idealized, and they are often explored via imaginative engagement and at a certain “distance” from empirical reality. These features raise questions such as what models are and how they relate to the world. Recent years have seen a growing discussion of these issues, including a number of views that treat modeling in terms of indirect representation and analysis. Indirect views treat the model (...)
    Direct download (2 more)  
     
    Export citation  
     
    Bookmark   62 citations  
  32. 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 (...)
    Direct download (4 more)  
     
    Export citation  
     
    Bookmark   4 citations  
  33.  17
    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 (...)
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   5 citations  
  34.  74
    Modeling without Mathematics.Martin Thomson-Jones - 2012 - Philosophy of Science 79 (5):761-772.
    Inquiries into the nature of scientific modeling have tended to focus their attention on mathematical models and, relatedly, to think of nonconcrete models as mathematical structures. The arguments of this article are arguments for rethinking both tendencies. Nonmathematical models play an important role in the sciences, and our account of scientific modeling must accommodate that fact. One key to making such accommodations, moreover, is to recognize that one kind of thing we use the term ‘model’ to (...)
    Direct download (6 more)  
     
    Export citation  
     
    Bookmark   15 citations  
  35.  28
    Modeling prototypes: Daniela M. Bailer-Jones, Scientific models in philosophy of science. Pittsburgh: University of Pittsburgh Press, 2009, x+ 235 pp. US $45 ΗΒ.Demetris P. Portides - 2010 - Metascience 19 (2):281-284.
    No categories
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark  
  36. A MODERN SCIENTIFIC INSIGHT OF SPHOTA VADA: IMPLICATIONS TO THE DEVELOPMENT OF SOFTWARE FOR MODELING NATURAL LANGUAGE COMPREHENSION.Varanasi Ramabrahmam - manuscript
    Sabdabrahma Siddhanta, popularized by Patanjali and Bhartruhari will be scientifically analyzed. Sphota Vada, proposed and nurtured by the Sanskrit grammarians will be interpreted from modern physics and communication engineering points of view. Insight about the theory of language and modes of language acquisition and communication available in the Brahma Kanda of Vakyapadeeyam will be translated into modern computational terms. A flowchart of language processing in humans will be given. A gross model of human language acquisition, comprehension and communication process forming (...)
    Direct download  
     
    Export citation  
     
    Bookmark  
  37. Variables of Scientific Concept Modeling and Their Formalization.Vladimir Kuznetsov - 2009 - In В.И Маркин (ed.), Philosophy of mathematics: current problems. Proceedings of the second international conference (Философия математики: актуальные проблемы. Тезисы второй международной конференции). pp. 268-270.
    There are no universally adopted answers to the natural questions about scientific concepts: What are they? What is their structure? What are their functions? How many kinds of them are there? Do they change? Ironically, most if not all scientific monographs or articles mention concepts, but the scientific studies of scientific concepts are rare in occurrence. It is well known that the necessary stage of any scientific study is constructing the model of objects in question. (...)
    Direct download  
     
    Export citation  
     
    Bookmark  
  38.  60
    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 to (...)
    Direct download (4 more)  
     
    Export citation  
     
    Bookmark   4 citations  
  39. Analogical reasoning and modeling in the sciences.Paulo Abrantes - 1999 - Foundations of Science 4 (3):237-270.
    This paper aims at integrating the work onanalogical reasoning in Cognitive Science into thelong trend of philosophical interest, in this century,in analogical reasoning as a basis for scientificmodeling. In the first part of the paper, threesimulations of analogical reasoning, proposed incognitive science, are presented: Gentner''s StructureMatching Engine, Mitchel''s and Hofstadter''s COPYCATand the Analogical Constraint Mapping Engine, proposedby Holyoak and Thagard. The differences andcontroversial points in these simulations arehighlighted in order to make explicit theirpresuppositions concerning the nature of analogicalreasoning. In the (...)
    Direct download (6 more)  
     
    Export citation  
     
    Bookmark   3 citations  
  40. Experimental Modeling in Biology: In Vivo Representation and Stand-ins As Modeling Strategies.Marcel Weber - 2014 - Philosophy of Science 81 (5):756-769.
    Experimental modeling in biology involves the use of living organisms (not necessarily so-called "model organisms") in order to model or simulate biological processes. I argue here that experimental modeling is a bona fide form of scientific modeling that plays an epistemic role that is distinct from that of ordinary biological experiments. What distinguishes them from ordinary experiments is that they use what I call "in vivo representations" where one kind of causal process is used to stand (...)
    Direct download (7 more)  
     
    Export citation  
     
    Bookmark   15 citations  
  41. Modeling reality.Christopher Pincock - 2011 - Synthese 180 (1):19 - 32.
    My aim in this paper is to articulate an account of scientific modeling that reconciles pluralism about modeling with a modest form of scientific realism. The central claim of this approach is that the models of a given physical phenomenon can present different aspects of the phenomenon. This allows us, in certain special circumstances, to be confident that we are capturing genuine features of the world, even when our modeling occurs independently of a wholly theoretical (...)
    Direct download (7 more)  
     
    Export citation  
     
    Bookmark   10 citations  
  42. Perspectival Modeling.Michela Massimi - 2018 - Philosophy of Science 85 (3):335-359.
    The goal of this article is to address the problem of inconsistent models and the challenge it poses for perspectivism. I analyze the argument, draw attention to some hidden premises behind it, and deflate them. Then I introduce the notion of perspectival models as a distinctive class of modeling practices whose primary function is exploratory. I illustrate perspectival modeling with two examples taken from contemporary high-energy physics at the Large Hadron Collider at the European Organization for Nuclear Research, (...)
    Direct download (6 more)  
     
    Export citation  
     
    Bookmark   39 citations  
  43.  20
    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 of (...)
    No categories
    Direct download  
     
    Export citation  
     
    Bookmark   4 citations  
  44. The Dynamics of Explanation: Mathematical Modeling and Scientific Understanding.Ruth Berger - 1997 - Dissertation, Indiana University
    This dissertation challenges two prevalent views on the topic of scientific explanation: that science explains by revealing causal mechanisms, and that science explains by unifying our knowledge of the world. ;My methodological strategy is to compare our best current philosophical accounts of scientific explanation with evidence from contemporary scientific research. In particular, I focus on evidence from dynamical explanations, that is, explanations which appeal to nonlinear dynamical modeling for their force. Nonlinear dynamical modeling is a (...)
     
    Export citation  
     
    Bookmark  
  45.  5
    Scientific Models and Decision Making.Eric Winsberg & Stephanie Harvard - 2024 - Cambridge University Press.
    This Element introduces the philosophical literature on models, with an emphasis on normative considerations relevant to models for decision-making. Chapter 1 gives an overview of core questions in the philosophy of modeling. Chapter 2 examines the concept of model adequacy for purpose, using three examples of models from the atmospheric sciences to describe how this sort of adequacy is determined in practice. Chapter 3 explores the significance of using models that are not adequate for purpose, including the purpose of (...)
    No categories
    Direct download  
     
    Export citation  
     
    Bookmark  
  46. Kuznetsov V. From studying theoretical physics to philosophical modeling scientific theories: Under influence of Pavel Kopnin and his school.Volodymyr Kuznetsov - 2017 - ФІЛОСОФСЬКІ ДІАЛОГИ’2016 ІСТОРІЯ ТА СУЧАСНІСТЬ У НАУКОВИХ РОЗМИСЛАХ ІНСТИТУТУ ФІЛОСОФІЇ 11:62-92.
    The paper explicates the stages of the author’s philosophical evolution in the light of Kopnin’s ideas and heritage. Starting from Kopnin’s understanding of dialectical materialism, the author has stated that category transformations of physics has opened from conceptualization of immutability to mutability and then to interaction, evolvement and emergence. He has connected the problem of physical cognition universals with an elaboration of the specific system of tools and methods of identifying, individuating and distinguishing objects from a scientific theory domain. (...)
    Direct download  
     
    Export citation  
     
    Bookmark  
  47.  16
    From Features via Frames to Spaces: Modeling Scientific Conceptual Change Without Incommensurability or Aprioricity.Frank Zenker - 2014 - In Thomas Gamerschlag, Doris Gerland, Rainer Osswald & Wiebke Petersen (eds.), Frames and Concept Types: Applications in Language and Philosophy. pp. 69-89.
    The frame model, originating in artificial intelligence and cognitive psychology, has recently been applied to change-phenomena traditionally studied within history and philosophy of science. Its application purpose is to account for episodes of conceptual dynamics in the empirical sciences suggestive of incommensurability as evidenced by “ruptures” in the symbolic forms of historically successive empirical theories with similar classes of applications. This article reviews the frame model and traces its development from the feature list model. Drawing on extant literature, examples of (...)
    No categories
    Direct download (4 more)  
     
    Export citation  
     
    Bookmark   8 citations  
  48.  9
    From Features via Frames to Spaces: Modeling Scientific Conceptual Change Without Incommensurability or Aprioricity.Frank Zenker - 2014 - In T. Gamerschlag, R. Gerland, R. Osswald & W. Petersen (eds.), Frames and Concept Types: Applications in Language and Philosophy. pp. 69-89.
    The frame model, originating in artificial intelligence and cognitive psychology, has recently been applied to change-phenomena traditionally studied within history and philosophy of science. Its application purpose is to account for episodes of conceptual dynamics in the empirical sciences suggestive of incommensurability as evidenced by “ruptures” in the symbolic forms of historically successive empirical theories with similar classes of applications. This article reviews the frame model and traces its development from the feature list model. Drawing on extant literature, examples of (...)
    No categories
    Direct download (3 more)  
     
    Export citation  
     
    Bookmark   6 citations  
  49. Modeling without representation.Alistair M. C. Isaac - 2013 - Synthese 190 (16):3611-3623.
    How can mathematical models which represent the causal structure of the world incompletely or incorrectly have any scientific value? I argue that this apparent puzzle is an artifact of a realist emphasis on representation in the philosophy of modeling. I offer an alternative, pragmatic methodology of modeling, inspired by classic papers by modelers themselves. The crux of the view is that models developed for purposes other than explanation may be justified without reference to their representational properties.
    Direct download (5 more)  
     
    Export citation  
     
    Bookmark   7 citations  
  50. Modeling Measurement: Error and Uncertainty.Alessandro Giordani & Luca Mari - 2014 - In Marcel Boumans, Giora Hon & Arthur Petersen (eds.), Error and Uncertainty in Scientific Practice. Pickering & Chatto. pp. 79-96.
    In the last few decades the role played by models and modeling activities has become a central topic in the scientific enterprise. In particular, it has been highlighted both that the development of models constitutes a crucial step for understanding the world and that the developed models operate as mediators between theories and the world. Such perspective is exploited here to cope with the issue as to whether error-based and uncertainty-based modeling of measurement are incompatible, and thus (...)
    Direct download  
     
    Export citation  
     
    Bookmark   8 citations  
1 — 50 / 998