Results for 'Computational social science'

968 found
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  1.  23
    Big Data in Computational Social Science and Humanities.Shu-Heng Chen (ed.) - 2018 - Springer Verlag.
    This edited volume focuses on big data implications for computational social science and humanities from management to usage. The first part of the book covers geographic data, text corpus data, and social media data, and exemplifies their concrete applications in a wide range of fields including anthropology, economics, finance, geography, history, linguistics, political science, psychology, public health, and mass communications. The second part of the book provides a panoramic view of the development of big data (...)
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  2.  29
    For a heterodox computational social science.Petter Törnberg & Justus Uitermark - 2021 - Big Data and Society 8 (2).
    The proliferation of digital data has been the impetus for the emergence of a new discipline for the study of social life: ‘computational social science’. Much research in this field is founded on the premise that society is a complex system with emergent structures that can be modeled or reconstructed through digital data. This paper suggests that computational social science serves practical and legitimizing functions for digital capitalism in much the same way that (...)
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  3.  17
    Handbook of computational social science: theory, case studies and ethics.Uwe Engel, Anabel Quan-Haase, Sunny Xun Liu & Lars Lyberg (eds.) - 2022 - New York, NY: Routledge, Taylor & Francis Group.
    The Handbook of Computational Social Science is a comprehensive reference source for scholars across multiple disciplines. It outlines key debates in the field, showcasing novel statistical modeling and machine learning methods, and draws from specific case studies to demonstrate the opportunities and challenges in CSS approaches. The Handbook is divided into two volumes written by outstanding, internationally renowned scholars in the field. This first volume focuses on the scope of computational social science, ethics, and (...)
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  4.  25
    Philosophy of Computational Social Science.Sebastian Benthall - 2016 - Cosmos and History 12 (2):13-30.
  5.  27
    No recognised ethical standards, no broad consent: navigating the quandary in computational social science research.Seliem El-Sayed & Filip Paspalj - 2024 - Research Ethics 20 (3):433-452.
    Recital 33 GDPR has often been interpreted as referring to ‘broad consent’. This version of informed consent was intended to allow data subjects to provide their consent for certain areas of research, or parts of research projects, conditional to the research being in line with ‘recognised ethical standards’. In this article, we argue that broad consent is applicable in the emerging field of Computational Social Science (CSS), which lies at the intersection of data science and (...) science. However, the lack of recognised ethical standards specific to CSS poses a practical barrier to the use of broad consent in this field and other fields that lack recognised ethical standards. Upon examining existing research ethics standards in social science and data science, we argue that they are insufficient for CSS. We further contend that the fragmentation of European Union (EU) law and research ethics sources makes it challenging to establish universally recognised ethical standards for scientific research. As a result, CSS researchers and other researchers in emerging fields that lack recognised ethical standards are left without sufficient guidance on the use of broad consent as provided for in the GDPR. We conclude that responsible EU bodies should provide additional guidance to facilitate the use of broad consent in CSS research. (shrink)
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  6.  19
    Paths Study on Knowledge Convergence and Development in Computational Social Science: Data Metric Analysis Based on Web of Science.Yuxi Liu, Xin Feng, Yue Zhang, Ying Kong & Rongyao Yang - 2022 - Complexity 2022:1-18.
    Computational social science, as an emerging interdisciplinary discipline, is a field ushered in by long-term development of traditional social science. It is committed to supplying data thinking, resources, and analytics to study human social behavior and social operation laws to accurately grasp and judge the developing path of the discipline, which is of great significance to promote the innovation and development of social sciences. This study is to conduct a systematic quantitative analysis (...)
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  7.  31
    Generative Social Science: Studies in Agent-Based Computational Modeling.Joshua M. Epstein - 2006 - Princeton University Press.
    This book argues that this powerful technique permits the social sciences to meet an explanation, in which one 'grows' the phenomenon of interest in an artificial society of interacting agents: heterogeneous, boundedly rational actors.
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  8.  31
    Knowledge transfer in agent-based computational social science.David Anzola - 2019 - Studies in History and Philosophy of Science Part A 77:29-38.
  9.  17
    The locus of legitimate interpretation in Big Data sciences: Lessons for computational social science from -omic biology and high-energy physics.Neil Stephens, Luis Reyes-Galindo, Jamie Lewis & Andrew Bartlett - 2018 - Big Data and Society 5 (1).
    This paper argues that analyses of the ways in which Big Data has been enacted in other academic disciplines can provide us with concepts that will help understand the application of Big Data to social questions. We use examples drawn from our Science and Technology Studies analyses of -omic biology and high energy physics to demonstrate the utility of three theoretical concepts: primary and secondary inscriptions, crafted and found data, and the locus of legitimate interpretation. These help us (...)
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  10.  43
    On agent-based modeling and computational social science.Rosaria Conte & Mario Paolucci - 2014 - Frontiers in Psychology 5.
  11.  32
    Human Simulation as the Lingua Franca for Computational Social Sciences and Humanities: Potential and Pitfalls.Andreas Tolk, Wesley J. Wildman, F. LeRon Shults & Saikou Y. Diallo - 2018 - Journal of Cognition and Culture 18 (5):462-482.
    The social sciences and humanities are fragmented into specialized areas, each with their own parlance and procedures. This hinders information sharing and the growth of a coherent body of knowledge. Modeling and simulation can be the scientific lingua franca, or shared technical language, that can unite, integrate, and relate relevant parts of these diverse disciplines.Models are well established in the scientific community as mediators, contributors, and enablers of scientific knowledge. We propose a potentially revolutionary linkage between social sciences, (...)
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  12.  17
    Adapting computational text analysis to social science.Paul DiMaggio - 2015 - Big Data and Society 2 (2).
    Social scientists and computer scientist are divided by small differences in perspective and not by any significant disciplinary divide. In the field of text analysis, several such differences are noted: social scientists often use unsupervised models to explore corpora, whereas many computer scientists employ supervised models to train data; social scientists hold to more conventional causal notions than do most computer scientists, and often favor intense exploitation of existing algorithms, whereas computer scientists focus more on developing new (...)
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  13.  72
    Agent‐based computational models and generative social science.Joshua M. Epstein - 1999 - Complexity 4 (5):41-60.
  14.  24
    Complementary social science? Quali-quantitative experiments in a Big Data world.Morten Axel Pedersen & Anders Blok - 2014 - Big Data and Society 1 (2).
    The rise of Big Data in the social realm poses significant questions at the intersection of science, technology, and society, including in terms of how new large-scale social databases are currently changing the methods, epistemologies, and politics of social science. In this commentary, we address such epochal questions by way of a experiment: at the Danish Technical University in Copenhagen, an interdisciplinary group of computer scientists, physicists, economists, sociologists, and anthropologists is setting up a large-scale (...)
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  15.  53
    An invitation to critical social science of big data: from critical theory and critical research to omniresistance.Ulaş Başar Gezgin - 2020 - AI and Society 35 (1):187-195.
    How a social science of big data would look like? In this article, we exemplify such a social science through a number of cases. We start our discussion with the epistemic qualities of big data. We point out to the fact that contrary to the big data champions, big data is neither new nor a miracle without any error nor reliable and rigorous as assumed by its cheer leaders. Secondly, we identify three types of big data: (...)
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  16. The mindsponge and BMF analytics for innovative thinking in social sciences and humanities.Quan-Hoang Vuong, Minh-Hoang Nguyen & Viet-Phuong La (eds.) - 2022 - Berlin, Germany: De Gruyter.
    Academia is a competitive environment. Early Career Researchers (ECRs) are limited in experience and resources and especially need achievements to secure and expand their careers. To help with these issues, this book offers a new approach for conducting research using the combination of mindsponge innovative thinking and Bayesian analytics. This is not just another analytics book. 1. A new perspective on psychological processes: Mindsponge is a novel approach for examining the human mind’s information processing mechanism. This conceptual framework is used (...)
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  17. Administrative social science data: The challenge of reproducible research.Alasdair J. G. Gray, Roxanne Connelly, Vernon Gayle & Christopher J. Playford - 2016 - Big Data and Society 3 (2).
    Powerful new social science data resources are emerging. One particularly important source is administrative data, which were originally collected for organisational purposes but often contain information that is suitable for social science research. In this paper we outline the concept of reproducible research in relation to micro-level administrative social science data. Our central claim is that a planned and organised workflow is essential for high quality research using micro-level administrative social science data. (...)
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  18.  8
    Epistemological aspects of computer simulation in the social sciences: second International Workshop, EPOS 2006, Brescia, Italy, October 5-6, 2006: revised selected and invited papers.Flaminio Squazzoni (ed.) - 2009 - New York: Springer.
    This book constitutes the revised versions of the invited and selected papers from the Second Epistemological Perspectives on Simulation Workshop, EPOS 2006, which was held in Brescia, Italy, during October 5-6, 2006. The 11 papers presented together with 2 invited papers were carefully reviewed and selected from 35 submissions. The topics addressed were epistemological and methodological contents, such as the relevance of empirical foundations for agent-based simulations, the role of theory, the concepts and meaning of emergence, the trade-off between simplification (...)
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  19. Assyrian Merchants meet Nuclear Physicists: History of the Early Contributions from Social Sciences to Computer Science. The Case of Automatic Pattern Detection in Graphs (1950s-1970s).Sébastien Plutniak - 2021 - Interdisciplinary Science Reviews 46 (4):547-568.
    Community detection is a major issue in network analysis. This paper combines a socio-historical approach with an experimental reconstruction of programs to investigate the early automation of clique detection algorithms, which remains one of the unsolved NP-complete problems today. The research led by the archaeologist Jean-Claude Gardin from the 1950s on non-numerical information and graph analysis is retraced to demonstrate the early contributions of social sciences and humanities. The limited recognition and reception of Gardin's innovative computer application to the (...)
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  20. Tools or toys? On specific challenges for modeling and the epistemology of models and computer simulations in the social sciences.Eckhart Arnold - manuscript
    Mathematical models are a well established tool in most natural sciences. Although models have been neglected by the philosophy of science for a long time, their epistemological status as a link between theory and reality is now fairly well understood. However, regarding the epistemological status of mathematical models in the social sciences, there still exists a considerable unclarity. In my paper I argue that this results from specific challenges that mathematical models and especially computer simulations face in the (...)
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  21.  38
    Humanities and social sciences (HSS) and the challenges posed by AI: a French point of view.Laurent Petit - 2024 - AI and Society 39 (6):2791-2797.
    The humanities and social sciences (HSS) are being turned upside down by advances in artificial intelligence (AI), and their very existence could be threatened. These sciences are being profoundly destabilised by a dual process of naturalisation of social phenomena and fetishisation of numbers, accentuated by the development of AI (part 1). Both STM (science, technology, medicine) and HSS are facing major epistemological challenges, but for the latter they carry the risk of marginalisation (part 2). The humanities and (...)
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  22.  19
    The potential value of computational models in social science research.Ken Kollman - 2012 - In Harold Kincaid (ed.), The Oxford Handbook of Philosophy of Social Science. Oxford University Press. pp. 355.
  23.  55
    Scientific Discovery in the Social Sciences.Mark Addis, Fernand Gobet & Peter Sozou (eds.) - 2019 - Springer Verlag.
    This volume offers selected papers exploring issues arising from scientific discovery in the social sciences. It features a range of disciplines including behavioural sciences, computer science, finance, and statistics with an emphasis on philosophy. The first of the three parts examines methods of social scientific discovery. Chapters investigate the nature of causal analysis, philosophical issues around scale development in behavioural science research, imagination in social scientific practice, and relationships between paradigms of inquiry and scientific fraud. (...)
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  24.  8
    Explainable artificial intelligence and the social sciences: a plea for interdisciplinary research.Wim De Mulder - forthcoming - AI and Society:1-20.
    Recent research emphasizes the complexity of providing useful explanations of computer-generated output. In developing an explanation-generating tool, the computer scientist should take a user-centered perspective, while taking into account the user’s susceptibility to certain biases. The purpose of this paper is to expand the research results on explainability from the social sciences, and to indicate how these results are relevant to the field of XAI. This is done through the presentation of two surveys to university students. The analysis of (...)
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  25.  16
    Methodological Investigations in Agent-Based Modelling: With Applications for the Social Sciences.Eric Silverman - 2018 - Cham: Springer Verlag.
    This open access book examines the methodological complications of using complexity science concepts within the social science domain. The opening chapters take the reader on a tour through the development of simulation methodologies in the fields of artificial life and population biology, then demonstrates the growing popularity and relevance of these methods in the social sciences. Following an in-depth analysis of the potential impact of these methods on social science and social theory, the (...)
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  26.  49
    Philosophy and its children: logic, computation, and the emergence of natural and social science: Soames, Scott, The World Philosophy Made: From Plato to the digital age, Princeton University Press, 2019, xviii + 439 pages.John P. Burgess - 2021 - Philosophical Studies 179 (6):2087-2095.
    The middle chapters of Soames’s The World Philosophy Made are briefly summarized and examined. There are some local slips, but globally the work displays an impressive knowledge of and a distinctive viewpoint on a wide range of important intellectual disciplines and their original roots in and continuing connections with philosophy.
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  27.  91
    Artificial intelligence and work: a critical review of recent research from the social sciences.Jean-Philippe Deranty & Thomas Corbin - forthcoming - AI and Society:1-17.
    This review seeks to present a comprehensive picture of recent discussions in the social sciences of the anticipated impact of AI on the world of work. Issues covered include: technological unemployment, algorithmic management, platform work and the politics of AI work. The review identifies the major disciplinary and methodological perspectives on AI’s impact on work, and the obstacles they face in making predictions. Two parameters influencing the development and deployment of AI in the economy are highlighted: the capitalist imperative (...)
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  28.  42
    Mathematical Modeling in the Social Sciences.Paul Humphreys - 2003 - In Stephen P. Turner & Paul Andrew Roth (eds.), The Blackwell Guide to the Philosophy of the Social Sciences. Malden, MA: Wiley-Blackwell. pp. 166–184.
    This chapter contains sections titled: Why Use Mathematical Models? Theory‐based Models Data‐based Modeling Computational Approaches Conclusions Notes.
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  29.  14
    It’s time to scale the science in the social sciences.Prabhakar Raghavan - 2014 - Big Data and Society 1 (1).
    The social sciences are at a remarkable confluence of events. Advances in computing have made it feasible to analyze data at the scale of the population of the world. How can we combine the depth of inquiry in the social sciences with the scale and robustness of statistics and computer science? Can we decompose complex questions in the social sciences into simpler, more robustly testable hypotheses? We discuss these questions and the role of machine learning in (...)
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  30.  16
    The human difference: Animals, computers, and the necessity of social science.Thomas J. Fararo - 1996 - History of European Ideas 22 (2):158-159.
  31.  12
    The Mystery of Rationality: Mind, Beliefs and the Social Sciences.Gérald Bronner & Francesco Di Iorio (eds.) - 2018 - Cham: Springer.
    This book contributes to the developing dialogue between cognitive science and social sciences. It focuses on a central issue in both fields, i.e. the nature and the limitations of the rationality of beliefs and action. The development of cognitive science is one of the most important and fascinating intellectual advances of recent decades, and social scientists are paying increasing attention to the findings of this new branch of science that forces us to consider many classical (...)
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  32.  17
    Directions for the Development of Social Sciences and Humanities in the Context of Creating Artificial General Intelligence.Андреас Хачатурович Мариносян - 2024 - Russian Journal of Philosophical Sciences 66 (4):26-51.
    The article explores the transformative impact on human and social sciences in response to anticipated societal shifts driven by the forthcoming proliferation of artificial systems, whose intelligence will match human capabilities. Initially, it was posited that artificial intelligence (AI) would excel beyond human abilities in computational tasks and algorithmic operations, leaving creativity and humanities as uniquely human domains. However, recent advancements in large language models have significantly challenged these conventional beliefs about AI’s limitations and strengths. It is projected (...)
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  33.  7
    Pre-College Teacher Development in Science Project for the Application of Computers to the Improvement of Instruction and Research in Bi ology, Chemistry, Mathematics, Physics, Psychology, and Social Science, University of Delaware, Newark, Delaware, 15 June-3 July 1981. [REVIEW]Fred T. Hofstetter - 1981 - Science, Technology and Human Values 6 (4):28-28.
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  34.  14
    Social impacts of algorithmic decision-making: A research agenda for the social sciences.Frauke Kreuter, Christoph Kern, Ruben L. Bach & Frederic Gerdon - 2022 - Big Data and Society 9 (1).
    Academic and public debates are increasingly concerned with the question whether and how algorithmic decision-making may reinforce social inequality. Most previous research on this topic originates from computer science. The social sciences, however, have huge potentials to contribute to research on social consequences of ADM. Based on a process model of ADM systems, we demonstrate how social sciences may advance the literature on the impacts of ADM on social inequality by uncovering and mitigating biases (...)
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  35. The World as a Process: Simulations in the Natural and Social Sciences.Stephan Hartmann - 1996 - In Rainer Hegselmann et al (ed.), Modelling and Simulation in the Social Sciences from the Philosophy of Science Point of View.
    Simulation techniques, especially those implemented on a computer, are frequently employed in natural as well as in social sciences with considerable success. There is mounting evidence that the "model-building era" (J. Niehans) that dominated the theoretical activities of the sciences for a long time is about to be succeeded or at least lastingly supplemented by the "simulation era". But what exactly are models? What is a simulation and what is the difference and the relation between a model and a (...)
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  36.  23
    Epistemologies of predictive policing: Mathematical social science, social physics and machine learning.Jens Hälterlein - 2021 - Big Data and Society 8 (1).
    Predictive policing has become a new panacea for crime prevention. However, we still know too little about the performance of computational methods in the context of predictive policing. The paper provides a detailed analysis of existing approaches to algorithmic crime forecasting. First, it is explained how predictive policing makes use of predictive models to generate crime forecasts. Afterwards, three epistemologies of predictive policing are distinguished: mathematical social science, social physics and machine learning. Finally, it is shown (...)
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  37. Grounding Social Sciences in Cognitive Sciences. [REVIEW]Jeffrey White - 2015 - Philosophical Psychology 28 (8):1249-1253.
    Readers of Philosophical Psychology may be most familiar with Ron Sun by way of an article recently appearing in this journal on creative composition expressed within his own hybrid computational intelligence model, CLARION (Sun, 2013). That article represents nearly two decades’ work in situated agency stressing the importance of psychologically realistic architectures and processes in the articulation of both functional, and reflectively informative, AI and agent- level social-cultural simulations. Readers may be less familiar with Sun’s 2001 “prolegomena” to (...)
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  38.  84
    How to build and use agent-based models in social science.Nigel Gilbert & Pietro Terna - 2000 - Mind and Society 1 (1):57-72.
    The use of computer simulation for building theoretical models in social science is introduced. It is proposed that agent-based models have potential as a “third way” of carrying out social science, in addition to argumentation and formalisation. With computer simulations, in contrast to other methods, it is possible to formalise complex theories about processes, carry out experiments and observe the occurrence of emergence. Some suggestions are offered about techniques for building agent-based models and for debugging them. (...)
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  39.  73
    Integrating the ethical and social context of computing into the computer science curriculum An interim report from the content sub-committee of the ImpactCS steering committee.Chuck Huff, Ronald Anderson, Joyce Little, Deborah Johnson & Rob Kling - 1996 - Science and Engineering Ethics 2 (2):211.
    This paper describes the major components of ImpactCS, a program to develop strategies and curriculum materials for integrating social and ethical considerations into the computer science curriculum. It presents, in particular, the content recommendations of a subcommittee of ImpactCS; and it illustrates the interdisciplinary nature of the field, drawing upon concepts from computer science, sociology, philosophy, psychology, history and economics.
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  40.  64
    (1 other version)Computer Simulation in the Physical Sciences.Fritz Rohrlich - 1990 - PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association 1990:507-518.
    Computer simulation is shown to be philosophically interesting because it introduces a qualitatively new methodology for theory construction in science different from the conventional two components of "theory" and "experiment and/or observation". This component is "experimentation with theoretical models." Two examples from the physical sciences are presented for the purpose of demonstration but it is claimed that the biological and social sciences permit similar theoretical model experiments. Furthermore, computer simulation permits theoretical models for the evolution of physical systems (...)
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  41.  41
    The computational and confirmational differences between the social and the physical sciences.Ronald Laymon - 1993 - Philosophia 22 (3-4):241-273.
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  42.  18
    What is a social pattern? Rethinking a central social science term.Hernan Mondani & Richard Swedberg - 2022 - Theory and Society 51 (4):543-564.
    The main aim of this article is to start a discussion of social pattern, a term that is commonly used in sociology but not specified or defined. The key question can be phrased as follows: Is it possible to transform the notion of social pattern from its current status in sociology as a proto-concept into a fully worked out concept? And if so, how can this be done? To provide material for the discussion we begin by introducing a (...)
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  43. Social, Technical, and Mathematical Opacity: Computer simulation and the scientific work on purification. Science and Art of Simulation II (SAS).Andreas Kaminski, Ralf Schneider, Michael Resch & Petra Gehring (eds.) - forthcoming - Berlin, Heidelberg: Springer.
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  44.  77
    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 (...)
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  45. (1 other version)Agent-Based Models and Simulations in Economics and Social Sciences: from conceptual exploration to distinct ways of experimenting.Franck Varenne & Denis Phan - 2008 - In Nuno David, José Castro Caldas & Helder Coelho (eds.), Proceedings of the 3rd EPOS congress (Epistemological Perspectives On Simulations). pp. 51-69.
    Now that complex Agent-Based Models and computer simulations spread over economics and social sciences - as in most sciences of complex systems -, epistemological puzzles (re)emerge. We introduce new epistemological tools so as to show to what precise extent each author is right when he focuses on some empirical, instrumental or conceptual significance of his model or simulation. By distinguishing between models and simulations, between types of models, between types of computer simulations and between types of empiricity, section 2 (...)
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  46. (1 other version)Agent-Based Modeling: The Right Mathematics for the Social Sciences?Paul Borrill & Leigh Tesfatsion - 2011 - In J. B. Davis & D. W. Hands (eds.), Elgar Companion to Recent Economic Methodology. Edward Elgar Publishers. pp. 228.
    This study provides a basic introduction to agent-based modeling (ABM) as a powerful blend of classical and constructive mathematics, with a primary focus on its applicability for social science research. The typical goals of ABM social science researchers are discussed along with the culture-dish nature of their computer experiments. The applicability of ABM for science more generally is also considered, with special attention to physics. Finally, two distinct types of ABM applications are summarized in order (...)
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  47.  13
    Vygotsky and cognitive science: language and the unification of the social and computational mind.William Frawley - 1997 - Cambridge: Harvard University Press.
    By reconciling the linguistic device and the linguistic person, his book argues for a Vygotskyan cognitive science.
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  48.  65
    Computational Perspectives in the History of Science: To the Memory of Peter Damerow.Manfred D. Laubichler, Jane Maienschein & Jürgen Renn - 2013 - Isis 104 (1):119-130.
    Computational methods and perspectives can transform the history of science by enabling the pursuit of novel types of questions, dramatically expanding the scale of analysis , and offering novel forms of publication that greatly enhance access and transparency. This essay presents a brief summary of a computational research system for the history of science, discussing its implications for research, education, and publication practices and its connections to the open-access movement and similar transformations in the natural and (...)
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  49. Simulation as formal and generative social science: the very idea.Nuno David, Jaime Sichman & Helder Coelho - 2007 - In Carlos Gershenson, Diederik Aerts & Bruce Edmonds (eds.), Worldviews, Science and Us: Philosophy and Complexity. World Scientific. pp. 266--275.
    The formal and empirical-generative perspectives of computation are demonstrated to be inadequate to secure the goals of simulation in the social sciences. Simulation does not resemble formal demonstrations or generative mechanisms that deductively explain how certain models are sufficient to generate emergent macrostructures of interest. The description of scientific practice implies additional epistemic conceptions of scientific knowledge. Three kinds of knowledge that account for a comprehensive description of the discipline were identified: formal, empirical and intentional knowledge. The use of (...)
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  50.  36
    Review of Artificial Intelligence: Reflections in Philosophy, Theology and the Social Sciences by Benedikt P. Göcke and Astrid Rosenthal-von der Pütten. [REVIEW]John-Stewart Gordon - 2021 - AI and Society 36 (2):655-659.
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