Manifesto da ciência social computacional

Autores

  • Rosaria Conte Laboratory of Agent Based Social Simulation - LABSS https://orcid.org/0000-0002-3509-9456
  • Nigel Gilbert Universty of Surry
  • Giulia Bonelli Institute of Cognitive Science and Techonology
  • Claudio Cioffi-Revilla Center for Social Complexity, George Mason Universty
  • Guillaume Deffuant George Mason Universty
  • János Dertész Budapest Univesity of Techonology and Economics
  • Vittoio Loreto Universitá di Roma
  • Suzy Moat Warwick Business School
  • Jean-Pierre Nadal École Normale Supérieure
  • Ángel Sánchez Escuela Politécnica Superior, Universidad Carlos III
  • Andrzeij Nowak University of Warsaw
  • Andreas Flache University of Groningen
  • Maxi San Miguel Universitat Illes Balears
  • Dirk Helbing Instituto Federal de Tecnologia

DOI:

https://doi.org/10.5433/2176-6665.2013v18n1p20

Palavras-chave:

Manifesto, Ciência social computacional, Pesquisa qauntitativa, Base de dados

Resumo

A crescente integração da tecnologia em nossas vidas criou volumes sem precedentes de dados sobre o comportamento cotidiano da sociedade. Esses dados abrem novas oportunidades para se trabalhar em direção a um entendimento quantitativo dos sistemas sociais complexos, no âmbito de uma nova disciplina conhecida como Ciência Social Computacional. Num contexto de crises financeiras, revoltas e epidemias internacionais, fica clara a urgente necessidade de maior compreensão da complexidade da sociedade global interconectada, bem como da capacidade de se aplicar tais conhecimentos às formulações de políticas. Este manifesto descreve os objetivos dessa nova direção científica, considerando os desafios envolvidos, e os amplos impactos que o sucesso deste empreendimento pode trazer para a ciência, a tecnologia e a sociedade.

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Biografia do Autor

Rosaria Conte, Laboratory of Agent Based Social Simulation - LABSS

Diretora do Laboratory of Agent Based Social Simulation - LABSS.

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Publicado

2013-03-23

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CONTE, Rosaria et al. Manifesto da ciência social computacional. Mediações - Revista de Ciências Sociais, Londrina, v. 18, n. 1, p. 20–54, 2013. DOI: 10.5433/2176-6665.2013v18n1p20. Disponível em: https://ojs.uel.br/revistas/uel/index.php/mediacoes/article/view/16806. Acesso em: 24 nov. 2024.

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