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In AI research and practice, rigor remains largely understood in terms of methodological rigor — such as whether mathematical, statistical, or computational methods are correctly applied. We argue that this narrow conception of rigor has contributed to the concerns raised by the responsible AI community, including overblown claims about AI capabilities. Our position is that a broader conception of what rigorous AI research and practice should entail is needed. We believe such a conception — in addition to a more expansive understanding of (1) methodological rigor — should include aspects related to (2) what background knowledge informs what to work on (epistemic rigor); (3) how disciplinary, community, or personal norms, standards, or beliefs influence the work (normative rigor); (4) how clearly articulated the theoretical constructs under use are (conceptual rigor); (5) what is reported and how (reporting rigor); and (6) how well-supported the inferences from existing evidence are (interpretative rigor). In doing so, we also aim to provide useful language and a framework for much-needed dialogue about the AI community’s work by researchers, policymakers, journalists, and other stakeholders.more » « lessFree, publicly-accessible full text available December 2, 2026
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Tahaei, Mohammad; Constantinides, Marios; Quercia, Daniele; Kennedy, Sean; Muller, Michael; Stumpf, Simone; Liao, Q. Vera; Baeza-Yates, Ricardo; Aroyo, Lora; Holbrook, Jess; et al (, ACM Conference on Human Factors in Computing Systems)In recent years, the CHI community has seen significant growth in research on Human-Centered Responsible Artificial Intelligence. While different research communities may use different terminol- ogy to discuss similar topics, all of this work is ultimately aimed at developing AI that benefits humanity while being grounded in human rights and ethics, and reducing the potential harms of AI. In this special interest group, we aim to bring together researchers from academia and industry interested in these topics to map cur- rent and future research trends to advance this important area of research by fostering collaboration and sharing ideas.more » « less
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