Related references
Note: Only part of the references are listed.Machine learning, artificial neural networks and social research
Giovanni Di Franco et al.
QUALITY & QUANTITY (2020)
Using Sociometers to Advance Small Group Research
John N. Parker et al.
SOCIOLOGICAL METHODS & RESEARCH (2020)
Demography and the Future of Democracy
Jack A. Goldstone et al.
PERSPECTIVES ON POLITICS (2020)
Theory In, Theory Out: The Uses of Social Theory in Machine Learning for Social Science
Jason Radford et al.
FRONTIERS IN BIG DATA (2020)
Human impacts on planetary boundaries amplified by Earth system interactions
Steven J. Lade et al.
NATURE SUSTAINABILITY (2020)
The Seven Tools of Causal Inference, with Reflections on Machine Learning
Judea Pearl
COMMUNICATIONS OF THE ACM (2019)
The More American Sociology Seeks to Become a Politically-Relevant Discipline, the More Irrelevant it Becomes to Solving Societal Problems
Jonathan H. Turner
AMERICAN SOCIOLOGIST (2019)
Dacura: A new solution to data harvesting and knowledge extraction for the historical sciences
Peter N. Peregrine et al.
HISTORICAL METHODS (2018)
An Introduction to Deep Reinforcement Learning
Vincent Francois-Lavet et al.
FOUNDATIONS AND TRENDS IN MACHINE LEARNING (2018)
Artificial Intelligence and Social Simulation: Studying Group Dynamics on a Massive Scale
Jesse Hoey et al.
SMALL GROUP RESEARCH (2018)
Causal inference and the data-fusion problem
Elias Bareinboim et al.
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA (2016)
'Language, Truth and Reason' 30 years later
Ian Hacking
STUDIES IN HISTORY AND PHILOSOPHY OF SCIENCE (2012)
The Mandate of Heaven and Performance Legitimation in Historical and Contemporary China
Dingxin Zhao
AMERICAN BEHAVIORAL SCIENTIST (2009)
The transverse science and technology culture: dynamics and roles of research-technology
T Shinn et al.
SOCIAL SCIENCE INFORMATION SUR LES SCIENCES SOCIALES (2002)