Replication Markets: Results, Lessons, Challenges and Opportunities in AI Replication
Yang Liu, Michael Gordon, Juntao Wang, Michael Bishop, Yiling Chen,, Thomas Pfeiffer, Charles Twardy, Domenico Viganola

TL;DR
This paper reviews replication efforts in social sciences and explores how lessons learned can inform credibility improvement strategies in AI and ML research, emphasizing forecasting and resource-efficient validation methods.
Contribution
It analyzes social science replication strategies and discusses their applicability to AI and ML, highlighting the role of forecasting in enhancing research credibility.
Findings
Forecasting can leverage replication outcomes to improve research validation.
Lessons from social sciences can inform AI/ML credibility strategies.
Resource-efficient replication methods are promising for AI/ML research.
Abstract
The last decade saw the emergence of systematic large-scale replication projects in the social and behavioral sciences, (Camerer et al., 2016, 2018; Ebersole et al., 2016; Klein et al., 2014, 2018; Collaboration, 2015). These projects were driven by theoretical and conceptual concerns about a high fraction of "false positives" in the scientific publications (Ioannidis, 2005) (and a high prevalence of "questionable research practices" (Simmons, Nelson, and Simonsohn, 2011). Concerns about the credibility of research findings are not unique to the behavioral and social sciences; within Computer Science, Artificial Intelligence (AI) and Machine Learning (ML) are areas of particular concern (Lucic et al., 2018; Freire, Bonnet, and Shasha, 2012; Gundersen and Kjensmo, 2018; Henderson et al., 2018). Given the pioneering role of the behavioral and social sciences in the promotion of novel…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Scientific Computing and Data Management · Meta-analysis and systematic reviews
