Award Abstract # 2106961
III: Medium: Collaborative Research: Principled Uncertainty Quantification in Deep Learning Models for Time Series Analysis

NSF Org: IIS
Div Of Information & Intelligent Systems
Recipient: GEORGIA TECH RESEARCH CORP
Initial Amendment Date: July 28, 2021
Latest Amendment Date: September 8, 2021
Award Number: 2106961
Award Instrument: Continuing Grant
Program Manager: Hector Munoz-Avila
hmunoz@nsf.gov
 (703)292-4481
IIS
 Div Of Information & Intelligent Systems
CSE
 Direct For Computer & Info Scie & Enginr
Start Date: October 1, 2021
End Date: September 30, 2025 (Estimated)
Total Intended Award Amount: $675,271.00
Total Awarded Amount to Date: $675,271.00
Funds Obligated to Date: FY 2021 = $675,271.00
History of Investigator:
  • Chao Zhang (Principal Investigator)
    chaozhang@gatech.edu
  • B Aditya Prakash (Co-Principal Investigator)
Recipient Sponsored Research Office: Georgia Tech Research Corporation
926 DALNEY ST NW
ATLANTA
GA  US  30318-6395
(404)894-4819
Sponsor Congressional District: 05
Primary Place of Performance: Georgia Institute of Technology
225 North Ave NW
Atlanta
GA  US  30332-0002
Primary Place of Performance
Congressional District:
05
Unique Entity Identifier (UEI): EMW9FC8J3HN4
Parent UEI: EMW9FC8J3HN4
NSF Program(s): Info Integration & Informatics
Primary Program Source: 01002122DB NSF RESEARCH & RELATED ACTIVIT
01002223DB NSF RESEARCH & RELATED ACTIVIT
Program Reference Code(s): 7364, 7924
Program Element Code(s): 736400
Award Agency Code: 4900
Fund Agency Code: 4900
Assistance Listing Number(s): 47.070

ABSTRACT

Time series data are ubiquitous in modern science and engineering. An unprecedented amount is being collected in diverse applications such as healthcare systems, the Web, cyber network monitoring, self-driving cars, and Internet-of-Things services. While deep learning has achieved enormous success in time series predictive analysis, a key bottleneck of such models is that they are ignorant about the uncertainties in their predictions. A consequence is that they can produce wildly wrong predictions without noticing---this will lead to misguided decisions, which can be catastrophic in life-critical applications. This project aims to remedy this issue and advance deep learning towards more trustworthy time series analysis. The project will enable principled deep learning models for uncertainty-aware and reliable time series regression and classification without sacrificing their predictive power. Research findings from the project will be incorporated into graduate-level classes, tutorials, and workshops to bring multiple stakeholders and domain scientists together.

The technical aims of this project are divided into three thrusts. First, the project will develop novel techniques bridging deep sequential models (e.g., recurrent networks, transformers) with Gaussian processes to quantify uncertainty in the functional space. Second, the project will explore how to learn calibrated deep sequential models and how to further decouple different sources of uncertainties to understand where a model's predictive uncertainty comes from. Third, the project will harness uncertainty to improve the reliability and efficiency of time series predictive systems. These techniques will enjoy the representation power of deep neural networks for modeling complex temporal dependencies in time-series data, while providing principled methodologies for quantifying and leveraging uncertainty for robustness and performance. The developed new models, algorithms, and techniques will be deployed in two important applications for times series analysis: 1) public health monitoring and forecasting, and 2) real-time analysis for mobile sensing time series data. The developed tools will also be open-sourced for trustworthy time series analysis that can benefit many other 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 26)
Cramer, Estee Y. and Ray, Evan L. and Lopez, Velma K. and Bracher, Johannes and Brennen, Andrea and Castro Rivadeneira, Alvaro J. and Gerding, Aaron and Gneiting, Tilmann and House, Katie H. and Huang, Yuxin and Jayawardena, Dasuni and Kanji, Abdul H. and "Evaluation of individual and ensemble probabilistic forecasts of COVID-19 mortality in the United States" Proceedings of the National Academy of Sciences , v.119 , 2022 https://doi.org/10.1073/pnas.2113561119 Citation Details
Adhikari, Bijaya and Srivastava, Ajitesh and Pei, Sen and Kefayati, Sarah and Yu, Rose and Yadav, Amulya and Rodríguez, Alexander and Ramanathan, Arvind and Vullikanti, Anil and Prakash, B. Aditya "The 4th International Workshop on Epidemiology meets Data Mining and Knowledge Discovery (epiDAMIK 4.0 @ KDD2021)" KDD '21: Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining , 2021 https://doi.org/10.1145/3447548.3469475 Citation Details
Anand, Vivek and Cui, Jiaming and Heavey, Jack and Vullikanti, Anil and Prakash, B Aditya "H2ABM: Heterogeneous Agent-based Model on Hypergraphs to Capture Group Interactions" , 2024 Citation Details
Chopra, Ayush and Rodriguez, Alexander and Prakash, B Aditya and Raskar, Ramesh and Kingsley, Thomas "Using neural networks to calibrate agent based models enables improved regional evidence for vaccine strategy and policy" Vaccine , v.41 , 2023 https://doi.org/10.1016/j.vaccine.2023.08.060 Citation Details
Cui, Jiaming and Cho, Sungjun and Kamruzzaman, Methun and Bielskas, Matthew and Vullikanti, Anil and Prakash, B Aditya "Using spectral characterization to identify healthcare-associated infection (HAI) patients for clinical contact precaution" Scientific Reports , v.13 , 2023 https://doi.org/10.1038/s41598-023-41852-5 Citation Details
Cui, Jiaming and Heavey, Jack and Lin, Leo and Klein, Eili Y and Madden, Gregory R and Sifri, Costi D and Lewis, Bryan and Vullikanti, Anil K and Prakash, B Aditya "Modeling relaxed policies for discontinuation of methicillin-resistant Staphylococcus aureus contact precautions" Infection Control & Hospital Epidemiology , 2024 https://doi.org/10.1017/ice.2024.23 Citation Details
Das_Swain, Vedant and Xie, Jiajia and Madan, Maanit and Sargolzaei, Sonia and Cai, James and De_Choudhury, Munmun and Abowd, Gregory D and Steimle, Lauren N and Prakash, B Aditya "Empirical networks for localized COVID-19 interventions using WiFi infrastructure at university campuses" Frontiers in Digital Health , v.5 , 2023 https://doi.org/10.3389/fdgth.2023.1060828 Citation Details
Feng, Rui and Luo, Chen and Yin, Qingyu and Yin, Bing and Zhao, Tuo and Zhang, Chao "CERES: Pretraining of Graph-Conditioned Transformer for Semi-Structured Session Data" Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies , 2022 https://doi.org/10.18653/v1/2022.naacl-main.16 Citation Details
Hashemi, Mohammad and Gong, Shengbo and Ni, Juntong and Fan, Wenqi and Prakash, B Aditya and Jin, Wei "A Comprehensive Survey on Graph Reduction: Sparsification, Coarsening, and Condensation" , 2024 Citation Details
Heavey, Jack and Cui, Jiaming and Chen, Chen and Prakash, B. Aditya and Vullikanti, Anil "Provable Sensor Sets for Epidemic Detection over Networks with Minimum Delay" Proceedings of the AAAI Conference on Artificial Intelligence , 2022 Citation Details
Kamarthi, Harshavardhan and Kong, Lingkai and Rodriguez, Alexander and Zhang, Chao and Prakash, B Aditya "CAMul: Calibrated and Accurate Multi-view Time-Series Forecasting" Proceedings of the ACM Web Conference 2022 , 2022 https://doi.org/10.1145/3485447.3512037 Citation Details
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