New computational tools to protect Homeland Security data

Jingrui He
Jingrui He, Professor and MSIM Program Director

Associate Professor Jingrui He is developing computational tools to protect against leaks and/or unauthorized use of sensitive data held and distributed among Department of Homeland Security (DHS) agencies and other parties. Her project, "Privacy-Preserving Analytics for Non-IID Data," has been awarded a three-year, $651,927 grant from the DHS Center for Accelerating Operational Efficiency (CAOE).

Innate risks exist from the unprecedented speed in which large amounts of data can be transferred to outside organizations, and these conditions have had negative consequences for DHS in the past.

"In 2019, a subcontractor working for CBP (DHS Customs and Border Protection) transferred copies of CBP's biometric data, such as traveler images, to its own company network and compromised approximately 184,000 traveler images from CBP's facial recognition pilot," He said. "This later led to a major privacy incident, as the subcontractor's network was subjected to a malicious cyberattack."

According to He, while the huge amount of collected data contains critical information that informs policy and decision making, the potential risks pertaining to sensitive information raise serious concerns regarding the use of such collected data. "It is of great importance to develop privacy-enhancing technologies to mitigate these risks while making effective use of the collected data," she said.

He's work is challenging, because the datasets involved in her research are held by multiple parties and distributed in varying ways. She proposes a two-pronged approach to sharing information while providing privacy protection.

One strategy involves generating synthetic data that mimics the actual data, and then sharing the synthetic information. "Our proposed techniques would guarantee that the parties receiving the synthetic data cannot use the synthetic data to recover the original data," she said.

The other method would create predictive analytics that can be performed for multiple parties via federated learning, in which artificial intelligence models are trained without anyone seeing or touching the data. This offers a means to unlock information to feed new artificial intelligence applications and enjoys the privacy protection because individual parties do not have to share data.

"The agencies holding the actual data will need to use their own data for analysis. But the central server responsible for creating the final predictive model orchestrating the efforts from all agencies will not have access to the actual data. Different agencies do not need to share their own data with each other either," He said.

She envisions several DHS agencies, including the Transportation Security Administration, the Office of Intelligence and Analysis, and the Federal Emergency Management Agency, will make use of the new tools.

He's general research theme is to design, build, and test a suite of automated and semi-automated methods to explore, understand, characterize, and predict real-world data by means of statistical machine learning. She received her PhD in machine learning from Carnegie Mellon University.

Updated on
Backto the news archive

Related News

Schneider selected as 2024-2025 Harvard Radcliffe Institute Fellow

Associate Professor Jodi Schneider has been selected as a 2024-2025 fellow of the Harvard Radcliffe Institute, an institute of Harvard University that fosters interdisciplinary research across the humanities, sciences, social sciences, arts, and professions.

Jodi Schneider

Fab Lab Engagement Team wins campus award

The Champaign-Urbana (CU) Community Fab Lab Engagement Team has been selected as the recipient of the Campus Excellence in Public Engagement Team Award. The team will be honored on May 28 at a special event hosted by the Office of Public Engagement.

iSchool researchers to present at ACM Web Conference

Members of Associate Professor Dong Wang's research group, the Social Sensing and Intelligence Lab, will present their research at the Web Conference 2024, which will be held from May 13-17 in Singapore. The Web Conference is the premier venue to present and discuss progress in research, development, standards, and applications of topics related to the Web.

Spectrum Scholar Spotlight: Alyssa Brown

Seventeen iSchool master's students have been named 2023-2024 Spectrum Scholars by the American Library Association (ALA) Office for Diversity, Literacy, and Outreach Services. This "Spectrum Scholar Spotlight" series highlights the School's scholars. MSLIS student Alyssa Brown earned her BA in environmental studies from Middlebury College.

Alyssa Brown

iSchool researchers to present at CHI 2024

iSchool faculty and students will present their research at the ACM Conference on Human Factors in Computing Systems (CHI 2024), which will be held from May 11-16 in Honolulu, Hawaii. The conference, considered the most prestigious in the field of Human-Computer Interaction, attracts researchers and practitioners from around the globe. The theme for CHI 2024 is "Surfing the World."

CHI 2024