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Home | Events Archive | SEMINAR CANCELLED Inference for Ranks with Applications to Mobility across Neighborhoods and Academic Achievements across Countries
Seminar

SEMINAR CANCELLED Inference for Ranks with Applications to Mobility across Neighborhoods and Academic Achievements across Countries


  • Series
    Seminars Econometric Institute
  • Speaker(s)
    Daniel Wilhelm (University College London, United Kingdom)
  • Field
    Econometrics
  • Location
    Erasmus University, Polak Building, Room 2-22
    Rotterdam
  • Date and time

    March 19, 2020
    16:00 - 17:00

It is often desired to rank different populations according to the value of some feature of each population.

For example, it may be desired to rank neighborhoods according to some measure of intergenerational mobility or countries according to some measure of academic achievement. These rankings are invari-ably computed using estimates rather than the true values of these features. As a result, there may be considerable uncertainty concerning the rank of each population. In this paper, we consider the problem of accounting for such uncertainty by constructing confidence sets for the rank of each population. We consider both the problem of constructing marginal confidence sets for the rank of a particular popula-tion as well as simultaneous confidence sets for the ranks of all populations. We show how to construct such confidence sets satisfying desired coverage properties under weak assumptions. An important fea-ture of all of our constructions is that they remain computationally feasible even when the number of populations is very large. We apply our theoretical results to re-examine the rankings of both neighbor-hoods in the United States in terms of intergenerational mobility and developed countries in terms of academic achievement. The conclusions about which countries do best and worst at reading, math, and science are fairly robust to accounting for uncertainty. By comparison, several celebrated findings about intergenerational mobility in the United states are not robust to taking uncertainty into account.

Co-authors: Magne Mogstat, Azeem M. Shaikh and Joseph P. Romano