Machine behaviour

被引:0
|
作者
Iyad Rahwan
Manuel Cebrian
Nick Obradovich
Josh Bongard
Jean-François Bonnefon
Cynthia Breazeal
Jacob W. Crandall
Nicholas A. Christakis
Iain D. Couzin
Matthew O. Jackson
Nicholas R. Jennings
Ece Kamar
Isabel M. Kloumann
Hugo Larochelle
David Lazer
Richard McElreath
Alan Mislove
David C. Parkes
Alex ‘Sandy’ Pentland
Margaret E. Roberts
Azim Shariff
Joshua B. Tenenbaum
Michael Wellman
机构
[1] Massachusetts Institute of Technology,Media Lab
[2] Massachusetts Institute of Technology,Institute for Data, Systems & Society
[3] Max Planck Institute for Human Development,Center for Humans and Machines
[4] University of Vermont,Department of Computer Science
[5] Université Toulouse Capitole,Toulouse School of Economics (TSM
[6] Brigham Young University,R), CNRS
[7] Yale University,Computer Science Department
[8] Yale University,Department of Sociology
[9] Yale University,Department of Statistics and Data Science
[10] Yale University,Department of Ecology and Evolutionary Biology
[11] Max Planck Institute for Ornithology,Yale Institute for Network Science
[12] University of Konstanz,Department of Collective Behaviour
[13] University of Konstanz,Department of Biology
[14] Stanford University,Centre for the Advanced Study of Collective Behaviour
[15] Canadian Institute for Advanced Research,Department of Economics
[16] The Sante Fe Institute,Department of Computing
[17] Imperial College London,Department of Electrical and Electronic Engineering
[18] Imperial College London,Department of Political Science
[19] Microsoft Research,College of Computer & Information Science
[20] Facebook AI,Institute for Quantitative Social Science
[21] Facebook Inc,Department of Anthropology
[22] Google Brain,College of Computer & Information Science
[23] Montreal,School of Engineering and Applied Sciences
[24] Northeastern University,Harvard Data Science Initiative
[25] Northeastern University,Department of Political Science
[26] Harvard University,Department of Psychology
[27] Max Planck Institute for Evolutionary Anthropology,Department of Brain and Cognitive Sciences
[28] University of California,Computer Science & Engineering
[29] Davis,undefined
[30] Northeastern University,undefined
[31] Harvard University,undefined
[32] Harvard University,undefined
[33] University of California,undefined
[34] San Diego,undefined
[35] University of British Columbia,undefined
[36] Massachusetts Institute of Technology,undefined
[37] University of Michigan,undefined
来源
Nature | 2019年 / 568卷
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学科分类号
摘要
Machines powered by artificial intelligence increasingly mediate our social, cultural, economic and political interactions. Understanding the behaviour of artificial intelligence systems is essential to our ability to control their actions, reap their benefits and minimize their harms. Here we argue that this necessitates a broad scientific research agenda to study machine behaviour that incorporates and expands upon the discipline of computer science and includes insights from across the sciences. We first outline a set of questions that are fundamental to this emerging field and then explore the technical, legal and institutional constraints on the study of machine behaviour.
引用
收藏
页码:477 / 486
页数:9
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