The Science Fiction Science Method
August 05, 2025 Β· Declared Dead Β· π Nature
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Authors
Iyad Rahwan, Azim Shariff, Jean-FranΓ§ois Bonnefon
arXiv ID
2508.03430
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.AI
Citations
4
Venue
Nature
Last Checked
4 months ago
Abstract
Predicting the social and behavioral impact of future technologies, before they are achieved, would allow us to guide their development and regulation before these impacts get entrenched. Traditionally, this prediction has relied on qualitative, narrative methods. Here we describe a method which uses experimental methods to simulate future technologies, and collect quantitative measures of the attitudes and behaviors of participants assigned to controlled variations of the future. We call this method 'science fiction science'. We suggest that the reason why this method has not been fully embraced yet, despite its potential benefits, is that experimental scientists may be reluctant to engage in work facing such serious validity threats as science fiction science. To address these threats, we consider possible constraints on the kind of technology that science fiction science may study, as well as the unconventional, immersive methods that science fiction science may require. We seek to provide perspective on the reasons why this method has been marginalized for so long, what benefits it would bring if it could be built on strong yet unusual methods, and how we can normalize these methods to help the diverse community of science fiction scientists to engage in a virtuous cycle of validity improvement.
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