PhD Projects in Economics

Micro to Macro: Causal Micro Evidence for Macro Prevention Models

Project Summary

The aim is to generate robust causal evidence on the economic consequences of better health. This will be achieved by exploiting rich, linked administrative health and earnings records to obtain quasi-experimental estimates of how medical interventions and major health events affect workers’ employment, earnings trajectories, and firm-switching decisions over time. The focus is on credible identification: natural policy roll-outs, clinical eligibility thresholds, and diagnostic timing shocks will isolate causal effects that standard cross-sectional studies miss. These high-resolution estimates will form the empirical backbone for evidence-based decisions on prevention subsidies, workplace policy, and social insurance design, and will inform the calibration of macro-prevention models.

naction.

  • Governments require reliable numbers on the economic cost of chronic disease and the payoff to prevention, yet most existing figures rely on correlations or aggregate averages.
  • Accurate micro parameters are essential inputs for agencies such as finance ministries and healthcare technology assessment bodies when assessing the fiscal and welfare implications of health spending.

Why EITis the place
EIT holds secure access to a portfolio of rich data assets that link health and labour‑market histories. Daily interaction with EIT’s prevention, clinical and data‑science teams fosters methodological innovation and rapid policy translation. Oxford’s economics and public‑policy departments add a world‑class setting for labour‑economics training and debate.

Potential Supervisors  

  • Supervisors are to be confirmed

Skills Recommended

  • Graduate econometrics, particularly causal inference methods
  • Proficiency in Python, R or Stata for large‑scale data analysis
  • Interest in labour‑ and health‑economics questions

Skills to be Developed

  • Advanced quasi‑experimental techniques (difference‑in‑differences, event studies, regression discontinuity, instrumental variables) applied to administrative micro‑data
  • Translation of empirical findings into policy recommendations and model calibration
  • Communication of results to interdisciplinary audiences in health, economics and public finance

University DPhil Courses 

Supervisors

We are bringing together experts from across the globe, with a shared drive to create lasting impact.

Research Engineer

Dr Micah Bowles

Research Engineer for AI & Robotics at EIT. Visiting academic in the Physics Department of the University of Oxford.

Senior Director - Product Science

Dr James Clarke

Senior Director of Product Science in the Pathogen Program at EIT.

Research Scientist

Dr Ben Chamberlain

AI: Principled Generalisation for Scientific ML You need more than Attention Discrete diffusion for biomolecules Multimodal Foundational Models

Research Scientist

Dr Flaviu Cipcigan

Research Scientist in the AI Research team at EIT. Recipient of IBM Pat Goldberg Award and three IBM Outstanding Technical Accomplishment awards.