Switch to: References

Citations of:

The World as a Process: Simulations in the Natural and Social Sciences

In Rainer Hegselmann (ed.), Modelling and Simulation in the Social Sciences from the Philosophy of Science Point of View (1996)

Add citations

You must login to add citations.
  1. Introduction: Computer Simulations in Social Epistemology.Igor Douven - 2009 - Episteme 6 (2):107-109.
    Over recent decades, computer simulations have become a common tool among practitioners of the social sciences. They have been utilized to study such diverse phenomena as the integration and segregation of different racial groups, the emergence and evolution of friendship networks, the spread of gossip, fluctuations of housing prices in an area, the transmission of social norms, and many more. Philosophers of science and others interested in the methodological status of these studies have identified a number of distinctive virtues of (...)
    Download  
     
    Export citation  
     
    Bookmark   3 citations  
  • Computer Simulations in Science.Eric Winsberg - forthcoming - Stanford Encyclopedia of Philosophy.
    Download  
     
    Export citation  
     
    Bookmark   36 citations  
  • Modelle.Stephan Hartmann & Daniela Bailer-Jones - 2010 - In Hans Jörg Sandkühler (ed.), Enzyklopädie Philosophie. Meiner Verlag. pp. 1627-1632.
    Der Begriff ‘Modell’ leitet sich vom Lateinischen ‘modulus’ (das Maß) ab, im Italienischen existiert seit dem 16. Jh. ‘modello’ und R. Descartes verwendet im 17. Jh. ‘modèlle’. Während der Begriff in Architektur und Kunst schon seit der Renaissance gängig ist, wird er in den Naturwissenschaften erst im 19. Jh. verwendet.1 Dort greifen wissenschaftliche Modelle die für eine gegebene Problemstellung als wesentlich erachteten Charakteristika (Eigenschaften, Beziehungen, etc.) eines Untersuchungsgegenstandes heraus und machen diesen so einem Verständnis bzw. einer weiterführenden Untersuchung zugänglich. Es (...)
    Download  
     
    Export citation  
     
    Bookmark   1 citation  
  • Eschewing Entities: Outlining a Biology Based Form of Structural Realism.Steven French - 2013 - In Vassilios Karakostas & Dennis Dieks (eds.), Epsa11 Perspectives and Foundational Problems in Philosophy of Science. Springer. pp. 371--381.
    Download  
     
    Export citation  
     
    Bookmark  
  • Idealization in Quantum Field Theory.Stephan Hartmann - 1998 - In Niall Shanks (ed.), Idealization in Contemporary Physics. pp. 99-122.
    This paper explores various functions of idealizations in quantum field theory. To this end it is important to first distinguish between different kinds of theories and models of or inspired by quantum field theory. Idealizations have pragmatic and cognitive functions. Analyzing a case-study from hadron physics, I demonstrate the virtues of studying highly idealized models for exploring the features of theories with an extremely rich structure such as quantum field theory and for gaining some understanding of the physical processes in (...)
    Download  
     
    Export citation  
     
    Bookmark   17 citations  
  • A priori measurable worlds.Ulrich Krohs - unknown
    Part of the scientific enterprise is to measure the material world and to explain its dynamics by means of models. However, not only is measurability of the world limited, analyzability of models is so, too. Most often, computer simulations offer a way out of this epistemic bottleneck. They instantiate the model and may help to analyze it. In relation to the material world a simulation may be regarded as a kind of a “non-material scale model”. Like any other scale model, (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Big Data – The New Science of Complexity.Wolfgang Pietsch - unknown
    Data-intensive techniques, now widely referred to as 'big data', allow for novel ways to address complexity in science. I assess their impact on the scientific method. First, big-data science is distinguished from other scientific uses of information technologies, in particular from computer simulations. Then, I sketch the complex and contextual nature of the laws established by data-intensive methods and relate them to a specific concept of causality, thereby dispelling the popular myth that big data is only concerned with correlations. The (...)
    Download  
     
    Export citation  
     
    Bookmark   1 citation  
  • Explaining Epistemic Opacity.Ramón Alvarado - unknown
    Conventional accounts of epistemic opacity, particularly those that stem from the definitive work of Paul Humphreys, typically point to limitations on the part of epistemic agents to account for the distinct ways in which systems, such as computational methods and devices, are opaque. They point, for example, to the lack of technical skill on the part of an agent, the failure to meet standards of best practice, or even the nature of an agent as reasons why epistemically relevant elements of (...)
    Download  
     
    Export citation  
     
    Bookmark   2 citations  
  • Degrees of Epistemic Opacity.Iñaki San Pedro - manuscript
    The paper analyses in some depth the distinction by Paul Humphreys between "epistemic opacity" —which I refer to as "weak epistemic opacity" here— and "essential epistemic opacity", and defends the idea that epistemic opacity in general can be made sense as coming in degrees. The idea of degrees of epistemic opacity is then exploited to show, in the context of computer simulations, the tight relation between the concept of epistemic opacity and actual scientific (modelling and simulation) practices. As a consequence, (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Simulation and the sense of understanding.Jaakko Kuorikoski - 2011 - In Paul Humphreys & Cyrille Imbert (eds.), Models, Simulations, and Representations. London: Routledge. pp. 168-187.
    Whether simulation models provide the right kind of understanding comparable to that of analytic models has been and remains a contentious issue. The assessment of understanding provided by simulations is often hampered by a conflation between the sense of understanding and understanding proper. This paper presents a deflationist conception of understanding and argues for the need to replace appeals to the sense of understanding with explicit criteria of explanatory relevance and for rethinking the proper way of conceptualizing the role of (...)
    Download  
     
    Export citation  
     
    Bookmark   10 citations  
  • Turing Test, Chinese Room Argument, Symbol Grounding Problem. Meanings in Artificial Agents (APA 2013).Christophe Menant - 2013 - American Philosophical Association Newsletter on Philosophy and Computers 13 (1):30-34.
    The Turing Test (TT), the Chinese Room Argument (CRA), and the Symbol Grounding Problem (SGP) are about the question “can machines think?” We propose to look at these approaches to Artificial Intelligence (AI) by showing that they all address the possibility for Artificial Agents (AAs) to generate meaningful information (meanings) as we humans do. The initial question about thinking machines is then reformulated into “can AAs generate meanings like humans do?” We correspondingly present the TT, the CRA and the SGP (...)
    Download  
     
    Export citation  
     
    Bookmark   6 citations  
  • Models and Stories in Hadron Physics.Stephan Hartmann - 1999 - In Margaret Morrison & Mary Morgan (eds.), Models as Mediators: Perspectives on Natural and Social Science. pp. 52--326.
    Fundamental theories are hard to come by. But even if we had them, they would be too complicated to apply. Quantum chromodynamics is a case in point. This theory is supposed to govern all strong interactions, but it is extremely hard to apply and test at energies where protons, neutrons and ions are the effective degrees of freedom. Instead, scientists typically use highly idealized models such as the MIT Bag Model or the Nambu Jona-Lasinio Model to account for phenomena in (...)
    Download  
     
    Export citation  
     
    Bookmark   58 citations  
  • Why Build a Virtual Brain? Large-Scale Neural Simulations as Jump Start for Cognitive Computing.Matteo Colombo - 2016 - Journal of Experimental and Theoretical Artificial Intelligence.
    Despite the impressive amount of financial resources recently invested in carrying out large-scale brain simulations, it is controversial what the pay-offs are of pursuing this project. One idea is that from designing, building, and running a large-scale neural simulation, scientists acquire knowledge about the computational performance of the simulating system, rather than about the neurobiological system represented in the simulation. It has been claimed that this knowledge may usher in a new era of neuromorphic, cognitive computing systems. This study elucidates (...)
    Download  
     
    Export citation  
     
    Bookmark   3 citations  
  • Nociones de simulación computacional: simulaciones y modelos científicos.Juan M. Durán - 2015 - Argumentos de Razón Técnica 18:87-110.
    Download  
     
    Export citation  
     
    Bookmark  
  • Eric Winsberg y la epistemología de las simulaciones computacionales.Juan M. Durán - 2017 - Argumentos de Razón Técnica 20:xx-yy.
    En este trabajo presento un estudio sobre el estado del arte de la llamada ‘epistemología de las simulaciones computacionales’. En particular, me centro en los varios trabajos de Eric Winsberg quién es uno de los filósofos más fructíferos y sistemáticos en este tema. Además de analizar la obra de Winsberg, y basándome en sus trabajos y en el de otros filósofos, mostraré que hay buenas razones para pensar que la epistemología tradicional de la ciencia no es suficiente para el análisis (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Como pensam as espécies?Gustavo Caponi - 2006 - Episteme 11 (24):245-267.
    Segundo Daniel Dennett insistiu em diferentes trabalhos, o programa adaptacionista darwiniano constitui uma legítima e insubstituível translação da perspectiva intencional ao domínio da biologia. Mas, para que essa tese possa ser formulada com toda clareza, e não fique no plano da simples metáfora – coisa que não é o objetivo de Dennett – é necessário esclarecer qual seria o sistema intencional cujo comportamento estudamos conforme essa perspectiva. Assim, e contra a alternativa escolhida pelo próprio Dennett, e retomando uma proposta do (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Beyond the dichotomy in vivo - in vitro: In silico.Pio Garcia - unknown
    From the beginnings of the biochemistry as discipline, the dichotomy between in vivo- in vitro conditions has been in the center of their methodological discussions. With the growing influence of computer simulations - sometimes called "in silico" conditions-, a new methodological problem is added to biochemistry. However, "simulation" could be seen as a core concept that is in fact used in the in vivo - in vitro dichotomy. In this sense, in silico dimension could be considered as a natural extension (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Is Simulation an Epistemic Substitute for Experimentation?Isabelle Peschard - unknown
    It is sometimes said that simulation can serve as epistemic substitute for experimentation. Such a claim might be suggested by the fast-spreading use of computer simulation to investigate phenomena not accessible to experimentation. But what does that mean? The paper starts with a clarification of the terms of the issue and then focuses on two powerful arguments for the view that simulation and experimentation are ‘epistemically on a par’. One is based on the claim that, in experimentation, no less than (...)
    Download  
     
    Export citation  
     
    Bookmark   7 citations  
  • Inverse ontomimetic simulation: A window on complex systems.Claes Andersson - unknown
    The present paper introduces "ontomimetic simulation" and argues that this class of models has enabled the investigation of hypotheses about complex systems in new ways that have epistemological relevance. Ontomimetic simulation can be differentiated from other types of modeling by its reliance on causal similarity in addition to representation. Phenomena are modeled not directly but via mimesis of the ontology (i.e. the "underlying physics", microlevel etc.) of systems and a subsequent animation of the resulting model ontology as a dynamical system. (...)
    Download  
     
    Export citation  
     
    Bookmark