Authors: Jesse Hoey Tobias Schröder Jonathan Morgan Kimberly Rogers Deepak Rishi Meiyappan Nagappan
Venue: Small Group Research, Vol. 49, No. 6, pp. 647–683, 2018
Year: 2018
Abstract: Recent advances in artificial intelligence and computer science can be used by social scientists in their study of groups and teams. Here, we explain how developments in machine learning and simulations with artificially intelligent agents can help group and team scholars to overcome two major problems they face when studying group dynamics. First, because empirical research on groups relies on manual coding, it is hard to study groups in large numbers (the scaling problem). Second, conventional statistical methods in behavioral science often fail to capture the nonlinear interaction dynamics occurring in small groups (the dynamics problem). Machine learning helps to address the scaling problem, as massive computing power can be harnessed to multiply manual codings of group interactions. Computer simulations with artificially intelligent agents help to address the dynamics problem by implementing social psychological theory in data-generating algorithms that allow for sophisticated statements and tests of theory. We describe an ongoing research project aimed at computational analysis of virtual software development teams.
BibTeX:
@article{jessehoey2018aiasssgdoams,
author = "Jesse Hoey and Tobias Schröder and Jonathan Morgan and Kimberly Rogers and Deepak Rishi and Meiyappan Nagappan",
title = "Artificial Intelligence and Social Simulation: Studying Group Dynamics on a Massive Scale",
year = "2018",
pages = "647–683",
journal = "Small Group Research",
volume = "49",
number = "6"
}
Plain Text:
Jesse Hoey, Tobias Schröder, Jonathan Morgan, Kimberly Rogers, Deepak Rishi, and Meiyappan Nagappan, "Artificial Intelligence and Social Simulation: Studying Group Dynamics on a Massive Scale," Small Group Research, pp. 647–683