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  <title><![CDATA[PhD Defense by Zilong Wang]]></title>
  <body><![CDATA[<p>&nbsp;</p><p>Title: Applications of Optimization and Causal Inference</p><p>&nbsp;</p><p>Date: Wednesday, May 6, 2026</p><p>Time: 3:00 pm – 5:00 pm ET</p><p>Location: Remote on Zoom — <a href="https://nam12.safelinks.protection.outlook.com/?url=https%3A%2F%2Fgatech.zoom.us%2Fj%2F93388746171%3Fpwd%3DIknDRQHq8fIL8QJi7YQTV9kveeYnxp.1&amp;data=05%7C02%7Ctm186%40gtvault.onmicrosoft.com%7Cddc37aace4634964f88c08dea44dab71%7C482198bbae7b4b258b7a6d7f32faa083%7C1%7C0%7C639128850683090519%7CUnknown%7CTWFpbGZsb3d8eyJFbXB0eU1hcGkiOnRydWUsIlYiOiIwLjAuMDAwMCIsIlAiOiJXaW4zMiIsIkFOIjoiTWFpbCIsIldUIjoyfQ%3D%3D%7C0%7C%7C%7C&amp;sdata=gTtMhNY6zp0rgcPU2wxG1ZoFjhfiVj6ZL5%2FQb240mOM%3D&amp;reserved=0">https://gatech.zoom.us/j/93388746171?pwd=IknDRQHq8fIL8QJi7YQTV9kveeYnxp.1</a>&nbsp;</p><p>Meeting ID: 933 8874 6171</p><p>Passcode: 734561</p><p>&nbsp;</p><p>&nbsp;</p><p>Committee:</p><p>Dr. Turgay Ayer (Advisor), Virginia C. and Joseph C. Mello Endowed Chair, H. Milton Stewart School of Industrial and Systems Engineering, Georgia Institute of Technology</p><p>Dr. Shihao Yang, Harold E. Smalley Early Career Professor, H. Milton Stewart School of Industrial and Systems Engineering, Georgia Institute of Technology</p><p>Dr. Santanu Dey, Anderson-Interface Chair and Professor, H. Milton Stewart School of Industrial and Systems Engineering, Georgia Institute of Technology</p><p>Dr. David Goldsman, Coca-Cola Foundation Professor, H. Milton Stewart School of Industrial and Systems Engineering, Georgia Institute of Technology</p><p>Dr. Jagpreet Chhatwal, Director, Center for Health Technology Assessment, Mass General Brigham; Associate Professor, Harvard Medical School</p><p>&nbsp;</p><p>Abstract:</p><p>This thesis develops methods for causal learning under</p><p>data scarcity and distributional shift, combining transfer learning,</p><p>kernel learning, and doubly robust semi-parametric estimation in public health&nbsp;</p><p>and personalized medicine.</p><p>&nbsp;</p><p>The first part develops Transfer Learning Random Forests (TLRF) for</p><p>county-level epidemic growth-rate estimation and outbreak prioritization</p><p>under fixed public-health capacity. Its core technical step is a</p><p>proxy-identification argument that recasts latent</p><p>growth-rate estimation as conditional mean learning on observable</p><p>log-difference outcomes, followed by adaptive spatiotemporal transfer</p><p>via random-forest weighting. In a retrospective comparison against</p><p>historical decisions by the Colorado Department of Public Health and</p><p>Environment, TLRF yields substantially higher investigation positive</p><p>predictive value (including a 224% relative improvement as a point</p><p>estimate under the same decision budget).</p><p>&nbsp;</p><p>The second part develops a causal-kernel subgroup discovery framework:</p><p>Neyman-orthogonalized CATE estimation and kernel learning under the</p><p>Robinson decomposition are followed by kernelized convex clustering to</p><p>identify subpopulations defined by treatment responsiveness rather than</p><p>covariate similarity alone. This component turns treatment-effect</p><p>heterogeneity into decision-ready subgroup structure to support</p><p>hypothesis generation, follow-up trial enrichment, and targeted</p><p>intervention design.</p><p>&nbsp;</p><p>The third part develops a placebo-anchored transfer framework for</p><p>transporting individualized treatment effects across heterogeneous</p><p>trials under covariate shift, including settings where the target</p><p>population has limited or no treated outcomes. A sparsity-driven,</p><p>LASSO-based proxy-gold transfer correction is integrated with</p><p>cross-fitted doubly robust estimation to support target-population</p><p>effect learning under explicit transport assumptions. This provides a</p><p>practical evidence-synthesis pathway for target-population decision</p><p>support when standard IPD meta-analysis assumptions are not fully met.</p><p>&nbsp;</p><p>Across these three settings, the unifying theme is principled</p><p>information borrowing: semiparametric identification, orthogonalized</p><p>causal kernel learning, and transfer-based doubly robust inference for</p><p>decision-making when target data alone are insufficient.</p>]]></body>
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