Maria Eulália Vares

Maria Eulália Vares is a Brazilian mathematical statistician and probability theorist who is known for her expertise in stochastic processes and large deviations theory. She is a professor of statistics in the Institute of Mathematics of the Federal University of Rio de Janeiro,[1] from 2006 to 2009 was the editor-in-chief of the journal Stochastic Processes and their Applications, publisher by Elsevier for the Bernoulli Society for Mathematical Statistics and Probability[2], and from 2015 to 2017 was the editor-in-chief of the Annals of Probability,[3] published by the Institute of Mathematical Statistics.

Vares graduated in 1975 from the Federal University of Rio Grande do Sul with a bachelor's degree in mathematics. After earning a master's degree in statistics in 1977 from the Instituto Nacional de Matemática Pura e Aplicada, she went to the University of California, Berkeley for doctoral study in statistics. She completed her Ph.D. in 1980;[1] her dissertation, supervised by P. Warwick Millar, was On Two Parameter Lévy Processes.[4]

With Enzo Olivieri, Vares is the author of the book Large Deviations and Metastability (Encyclopedia of Mathematics and its Applications 100, Cambridge University Press, 2005).[5]

She is a Fellow of the Institute of Mathematical Statistics,[6] and an elected member of the International Statistical Institute.[7]

References

  1. Maria Eulália Vares, Graduate Program in Statistics, Institute of Mathematics, Federal University of Rio de Janeiro, retrieved 2017-11-30
  2. "Editorial board", Stochastic Processes and their Applications, Elsevier, retrieved 2017-11-30
  3. "Past Editors of IMS Journals".
  4. Maria Eulália Vares at the Mathematics Genealogy Project
  5. Reviews of Large Deviations and Metastability:
  6. Honored Fellows, Institute of Mathematical Statistics, archived from the original on 2014-03-02, retrieved 2017-11-30
  7. Individual members, International Statistical Institute, retrieved 2017-11-30
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