Angela Zhou
400A Bridge Hall
I am an Assistant Professor at USC Marshall Data Sciences and Operations and Computer Science (by courtesy). I am in the Operations group.
My research interests are broadly in data-driven decision making under uncertainty, including operations, statistical machine learning, and causal inference, and the interplay of statistics and optimization.
My applied work focuses on evaluation and governance of automated decision-making systems, especially in the public sector, and data-driven social service operations. I’ve collaborated with municipal agencies and nonprofits. I’m always eager to connect with civil society and others; please reach out!
Previously, I was a research fellow in the Simons program on causality and a FODSI postdoc at UC Berkeley, and I received my PhD in Operations Research and Information Engineering from Cornell University, where I worked with Nathan Kallus at Cornell Tech; my work was supported by an NDSEG fellowship.
Email: zhoua at usc.edu. Google Scholar, CV
Interested in working with me? Advising/mentorship plan and FAQ
Research interests by topic:
- Computerized influence functions for optimization-based estimators in causal inference
- Program evaluation perspective on algorithmic accountability; equity and efficacy in the provision of social services: fair/optimal encouragement designs
- Credible causal inference for optimal decisions and bounds; and for infinite-horizon and finite horizon (scalable) offline reinforcement learning under violations of assumptions
- Algorithmic fairness: biased data, partial identification bounds on causal disparities. Substantive: don’t use CJ data for ML benchmarks, evaluating short term impacts of bail reform on aggregate crime.
news
| Jun 10, 2026 | Robust Fitted-Q-Evaluation and Iteration under Sequentially Exogenous Unobserved Confounders received a major revision at Management Science. |
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| May 26, 2026 | Congrats Ezinne! Reduced-Rank Outcome Compression for Causal Policy Optimization is accepted at TMLR with minor revisions. |
| May 26, 2026 | Excited to share our new preprint: Due Process on Hold: A Queueing Framework for Improving Access in SNAP. We also have non-technical explainers for a policy/legal audience. Kudos Andrew Daw and DSO Summer Scholar Chloe Pache! |
| Apr 26, 2026 | Updated version of Mind the Gap: Optimal and Equitable Encouragement Policies, highlighting our audit-to-remedy workflow for disentangling the gains and limits of targeting via changes in take-up versus efficacy, with case studies in SNAP reminders and supervised-release algorithmic advice. |
| Mar 15, 2026 | Updated Data-Driven Influence Functions for Optimization-Based Causal Inference, including new results on finite-difference methods for sensitivity analysis functionals. |
| Jan 15, 2026 | Batch-Adaptive Annotations for Causal Inference with Complex-Embedded Outcomes and Structured Difference-of-Q via Orthogonal Learning were accepted at AISTATS 2026. Recent work on causal structure in offline RL was also featured in an INI Newton talk. |
| Sep 15, 2025 | Updated the confounding-robust offline reinforcement learning paper under observed Markov marginals, with a new title. Talk at OCIS. Our new results make the memoryless UCs assumption testable under observed Markovian marginals. |
| Jun 18, 2025 | I received a courtesy joint appointment in the Department of Computer Science! Apply to DSO or CS if you want to work with me, and put my name down. |
| Jun 17, 2025 | We have been working on a whitepaper from the BIRS Bridging Predictions and Interventions in Social Systems Workshop. It’s a great reference on predictive vs. causal targeting in consequential public-sector algorithmic decision making. Working Paper |
| Feb 17, 2025 | We have exciting new work on optimally annotating outcomes for doubly-robust causal inference, motivated by an ongoing collaboration in homelessness services. It works really well! paper |