Aparna V. Huzurbazar

Aparna V. Huzurbazar is an American statistician known for her work using graphical models to understand time-to-event data. She is the author of a book on this subject, Flowgraph Models for Multistate Time-to-Event Data (Wiley, 2004).[1]

Huzurbazar is a research scientist at the Los Alamos National Laboratory. She graduated in 1988 with two bachelor's degrees from two different universities: one in mathematics from Claremont McKenna College, and another in aerospace engineering from the University of Colorado Boulder. She completed a Ph.D. in statistics in 1994 at Colorado State University.[2] Her dissertation, supervised by Ronald W. Butler, was Prediction in Stochastic Networks.[3] She took a faculty position at the University of Florida, but then moved to the University of New Mexico in 1996, and moved again to Los Alamos in 2007.[2]

Huzurbazar is the daughter of noted Indian statistician V. S. Huzurbazar and the sister of noted statistician Snehalata V. Huzurbazar;[4] her husband, Brian J. Williams of Los Alamos, is also a statistician.[5] All four are Fellows of the American Statistical Association; Aparna was elected as a Fellow in 2008, her father in 1983, Williams in 2015, and her sister in 2017.[6] Huzurbazar was also elected as a member of the International Statistical Institute in 2006.[2]

References

  1. Reviews of Flowgraph Models for Multistate Time-to-Event Data:
  2. "Aparna V. Huzurbazar", Profile Pages, Los Alamos National Laboratory, retrieved 2017-11-28
  3. Aparna V. Huzurbazar at the Mathematics Genealogy Project
  4. Deshpande, J. V., Vasant Shankar Huzurbazar (PDF), Indian National Science Academy, retrieved 2017-11-28
  5. "Snehalata Huzurbazar Joins SAMSI as Deputy Director" (PDF), Statistical and Applied Mathematical Sciences Institute, vol. 5 no. 1, p. 1, Spring 2012
  6. ASA Fellows list, American Statistical Association, archived from the original on 2017-12-01, retrieved 2017-11-28
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