Award Abstract # 2023109
TRIPODS: Institute for Foundations of Data Science

NSF Org: DMS
Division Of Mathematical Sciences
Recipient: UNIVERSITY OF CHICAGO
Initial Amendment Date: August 31, 2020
Latest Amendment Date: August 21, 2024
Award Number: 2023109
Award Instrument: Continuing Grant
Program Manager: Stacey Levine
slevine@nsf.gov
 (703)292-2948
DMS
 Division Of Mathematical Sciences
MPS
 Directorate for Mathematical and Physical Sciences
Start Date: September 1, 2020
End Date: February 28, 2026 (Estimated)
Total Intended Award Amount: $833,337.00
Total Awarded Amount to Date: $883,337.00
Funds Obligated to Date: FY 2020 = $175,001.00
FY 2021 = $175,000.00

FY 2022 = $150,001.00

FY 2023 = $166,667.00

FY 2024 = $216,668.00
History of Investigator:
  • Rebecca Willett (Principal Investigator)
    willett@g.uchicago.edu
  • Mary Silber (Co-Principal Investigator)
  • Rina Barber (Co-Principal Investigator)
Recipient Sponsored Research Office: University of Chicago
5801 S ELLIS AVE
CHICAGO
IL  US  60637-5418
(773)702-8669
Sponsor Congressional District: 01
Primary Place of Performance: University of Chicago
5747 S. Ellis Avenue
Chicago
IL  US  60637-5418
Primary Place of Performance
Congressional District:
01
Unique Entity Identifier (UEI): ZUE9HKT2CLC9
Parent UEI: ZUE9HKT2CLC9
NSF Program(s): TRIPODS Transdisciplinary Rese
Primary Program Source: 01002021DB NSF RESEARCH & RELATED ACTIVIT
01002122DB NSF RESEARCH & RELATED ACTIVIT

01002223DB NSF RESEARCH & RELATED ACTIVIT

01002324DB NSF RESEARCH & RELATED ACTIVIT

01002425DB NSF RESEARCH & RELATED ACTIVIT
Program Reference Code(s): 048Z, 075Z, 079Z, 9102
Program Element Code(s): 041Y00
Award Agency Code: 4900
Fund Agency Code: 4900
Assistance Listing Number(s): 47.049, 47.070

ABSTRACT

Data science is making an enormous impact on science and society, but its success is uncovering pressing new challenges that stand in the way of further progress. Outcomes and decisions arising from many machine learning processes are not robust to errors and corruption in the data; data science algorithms are yielding biased and unfair outcomes, as concerns about data privacy continue to mount; and machine learning systems suited to dynamic, interactive environments are less well developed than corresponding tools for static problems. Only by an appeal to the foundations of data science can we understand and address challenges such as these. Building on the work of three TRIPODS Phase I institutes, the new Institute for Foundations of Data Science (IFDS) brings together researchers from the Universities of Washington, Wisconsin-Madison, California-Santa Cruz, and Chicago, organized around the goal of tackling these critical issues. Members of IFDS have complementary strengths in the TRIPODS disciplines of mathematics, statistics, and theoretical computer science, and a proven record of collaborating to push theoretical boundaries by synthesizing knowledge and experience from diverse areas. Students and postdoctoral members of IFDS will be trained to be fluent in the languages of several disciplines, and able to bridge these communities and perform transdisciplinary research in the foundations of data science. In concert with its research agenda, IFDS will engage the data science community through workshops, summer schools, and hackathons. Its diverse leadership, committed to equity and inclusion, proposes extensive plans for outreach to traditionally underrepresented groups. Governance, management, and evaluation of the institute will build on the successful and efficient models developed during Phase I.

To address critical issues at the cutting edge of data science research, IFDS will organize its research around four core themes. The complexity theme will synthesize various notions of complexity from multiple disciplines to make breakthroughs in the analysis of optimization and sampling methods, develop tools for assessing the complexity of data models, and seek new methods with better complexity properties, to make complexity a more powerful tool for understanding and inventing algorithms in data science. The robustness theme considers data that contains errors or outliers, possibly due to an adversary, and will design methods for data analysis and prediction that are robust in the face of these errors. The theme on closed-loop data science tackles the issues of acquiring data in ways that reveal the information content of the data efficiently, using strategic and sequential policies that leverage information gathered already from past data. The theme on ethics and algorithms addresses issues of fairness and bias in machine learning, data privacy, and causality and interpretability. The four themes intersect in many ways, and most IFDS researchers will work in two or more of them. By making concerted progress on these fundamental fronts, IFDS will lower several of the barriers to better understanding of data science methodology and to its improved effectiveness and wider relevance to application areas. Additionally, IFDS will organize and host activities that engage the data science community at all levels of seniority. Annual workshops will focus on the critical issues identified above and others that are sure to arise over the next five years. Comprehensive plans for outreach and education will draw on previous experience of the Phase I institutes and leverage institutional resources at the four sites. Collaborations with domain science researchers in academia, national laboratories, and industry, so important in illuminating issues in the fundamentals of data science, will continue through the many channels available to IFDS members, including those established in the TRIPODS+X program. Relationships with other institutes at each IFDS site will further extend the impact of IFDS on domain sciences and applications.

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.

PUBLICATIONS PRODUCED AS A RESULT OF THIS RESEARCH

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(Showing: 1 - 10 of 25)
Soloff, Jake and Barber, Rina Foygel and Willett, Rebecca "Bagging Provides Assumption-free Stability" Journal of machine learning research , 2024 Citation Details
Chen, Yuming and Sanz-Alonso, Daniel and Willett, Rebecca "Autodifferentiable Ensemble Kalman Filters" SIAM Journal on Mathematics of Data Science , v.4 , 2022 https://doi.org/10.1137/21M1434477 Citation Details
Chen, Yuming and Sanz-Alonso, Daniel and Willett, Rebecca "Reduced-order autodifferentiable ensemble Kalman filters" Inverse Problems , v.39 , 2023 https://doi.org/10.1088/1361-6420/acff14 Citation Details
Ding, Yi and Rao, Avinash and Song, Hyebin and Willett, Rebecca and Hoffmann, Henry "NURD: Negative-Unlabeled Learning for Online Datacenter Straggler Prediction" Conference on Machine Learning and Systems , 2022 Citation Details
Gilton, Davis and Ongie, Greg and Willett, Rebecca "Model Adaptation for Inverse Problems in Imaging" IEEE Transactions on Computational Imaging , 2021 https://doi.org/10.1109/TCI.2021.3094714 Citation Details
Gilton, Davis and Ongie, Greg and Willett, Rebecca "Neumann Networks for Linear Inverse Problems in Imaging" IEEE Transactions on Computational Imaging , v.6 , 2020 https://doi.org/10.1109/TCI.2019.2948732 Citation Details
Gilton, Davis and Ongie, Gregory and Willett, Rebecca "Deep Equilibrium Architectures for Inverse Problems in Imaging" IEEE Transactions on Computational Imaging , v.7 , 2021 https://doi.org/10.1109/TCI.2021.3118944 Citation Details
Han, Rungang and Willett, Rebecca and Zhang, Anru R. "An optimal statistical and computational framework for generalized tensor estimation" The Annals of Statistics , v.50 , 2022 https://doi.org/10.1214/21-AOS2061 Citation Details
Kurihana, Takuya and Moyer, Elisabeth and Willett, Rebecca and Gilton, Davis and Foster, Ian "Data-Driven Cloud Clustering via a Rotationally Invariant Autoencoder" IEEE Transactions on Geoscience and Remote Sensing , v.60 , 2022 https://doi.org/10.1109/TGRS.2021.3098008 Citation Details
Lee, Yonghoon and Foygel Barber, Rina "Binary classification with corrupted labels" Electronic Journal of Statistics , v.16 , 2022 https://doi.org/10.1214/22-EJS1987 Citation Details
Le, Phong V. V. and Randerson, James T. and Willett, Rebecca and Wright, Stephen and Smyth, Padhraic and Guilloteau, Clement and Mamalakis, Antonios and Foufoula-Georgiou, Efi "Climate-driven changes in the predictability of seasonal precipitation" Nature Communications , v.14 , 2023 https://doi.org/10.1038/s41467-023-39463-9 Citation Details
(Showing: 1 - 10 of 25)

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