Description
The rapid advancement of artificial intelligence (AI) has produced remarkable achievements, from generating realistic text and images to designing new proteins and supporting healthcare delivery. However, the opaque nature of these powerful technologies poses significant challenges to scientific progress and public trust. When AI systems make predictions in sensitive domains such as medicine, education, or public policy, we need to understand which factors drive their decisions and whether their discoveries are reliable and reproducible. This project develops methods to extract interpretable, verifiable and trustworthy insights from sophisticated AI algorithms. By doing so, it will accelerate scientific discovery across disciplines, while strengthening public confidence in data-driven research. Beyond methodological innovation, the project will contribute to training the next generation of AI researchers and data scientists. This project will develop novel statistical methods for testing large number of hypotheses about variable importance in complex predictive models, with rigorous control of false discovery rates. The research will focus on context-dependent variable importance, studying how explanatory variables influence outcomes under different conditions and through non-additive interactions, leveraging sophisticated machine learning architectures. The methodological framework will integrate recent advances including knockoff inference, e-values, conditional randomization tests, and explainable AI techniques. A key innovation will be designing inference procedures robust to multiple data passes, avoiding selection bias and circular reasoning, while adapting to the signal in the data. Applications will focus on genomic data analysis, including inference on gene-gene interactions. The project will contribute to training one graduate student. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria. NSF Award ID: 2610271 | Program: 01002627DB NSF RESEARCH & RELATED ACTIVIT | Principal Investigator: Chiara Sabatti | Institution: Stanford University, STANFORD, CA | Award Amount: $270,000 View on NSF Award Search: https://www.nsf.gov/awardsearch/show-award/?AWD_ID=2610271 View on Research.gov: https://www.research.gov/awardapi-service/v1/awards/2610271.html
Interested in this grant?
Sign up to get match scores, save grants, and start your application with AI-powered tools.
Grant Details
$270,000 - $270,000
August 31, 2029
STANFORD, CA
External Links
View Original ListingWant to see how well this grant matches your organization?
Get Your Match Score