Dear Applied Statistics Workshop Community,


Our last meeting of this semester will be on November 29 (12:00 EST). Yi Zhang presents "Individualized Policy Evaluation and Learning under Clustered Network Interference." 


<When>

November 29, 12:00 to 1:30 PM, EST

Lunch will be available for pick-up inside CGIS K354.


<Where>

In-person: CGIS K354

Zoom:

https://harvard.zoom.us/j/93217566507?pwd=elBwYjRJcWhlVE5teE1VNDZoUXdjQT09


<Abstract>

While there now exists a large literature on policy evaluation and learning, much of prior work assumes that the treatment assignment of one unit does not affect the outcome of another unit. Unfortunately, ignoring interference may lead to biased policy evaluation and yield ineffective learned policies. For example, treating influential individuals who have many friends can generate positive spillover effects, thereby improving the overall performance of an individualized treatment rule (ITR). We consider the problem of evaluating and learning an optimal ITR under clustered network (or partial) interference where clusters of units are sampled from a population and units may influence one another within each cluster. Under this model, we propose an estimator that can be used to evaluate the empirical performance of an ITR. We show that this estimator is substantially more efficient than the standard inverse probability weighting estimator, which does not impose any assumption about spillover effects. We derive the finite-sample regret bound for a learned ITR, showing that the use of our efficient evaluation estimator leads to the improved performance of learned policies. Finally, we conduct simulation and empirical studies to illustrate the advantages of the proposed methodology. 


The most recent draft can be found here.



<2023 Schedule>

GOV 3009 Website:

https://projects.iq.harvard.edu/applied.stats.workshop-gov3009

Calendar:

https://calendar.google.com/calendar/u/0?cid=Y18zdjkzcGF2OWZqa2tsZHJidTlzbmJobmVkOEBncm91cC5jYWxlbmRhci5nb29nbGUuY29t



Best,

Jialu


--
Jialu Li
Department of Government
Harvard University
jialu_li@g.harvard.edu