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Wikipedia

Bin Yu

Bin Yu (Chinese: 郁彬) is a Chinese-American statistician. She is currently Chancellor's Professor in the Departments of Statistics and of Electrical Engineering & Computer Sciences at the University of California, Berkeley.[1][2]

Bin Yu
郁彬
EducationPeking University (BA, 1984)
University of California, Berkeley (MS, 1987; PhD, 1990)
AwardsIMS Fellow (1999)
IEEE Fellow (2001)
ASA Fellow (2005)
AAAS Fellow (2013)
Member of NAS (2014)
Elizabeth L. Scott Award (2018)
COPSS Distinguished Achievement Award and Lectureship (2023)
Scientific career
FieldsStatistics
Machine Learning
InstitutionsUniversity of California, Berkeley
University of Wisconsin–Madison
Bell Labs
Doctoral advisorLucien Le Cam
Terry Speed
Websitewww.stat.berkeley.edu/~binyu/

Biography edit

Yu earned a bachelor's degree in mathematics in 1984 from Peking University, and went on to pursue graduate studies in statistics at Berkeley, earning a master's degree in 1987 and a Ph.D. in 1990. Her dissertation, Some Results on Empirical Processes and Stochastic Complexity, was jointly supervised by Lucien Le Cam and Terry Speed.[3]

After postdoctoral studies at the Mathematical Sciences Research Institute and an assistant professorship at the University of Wisconsin–Madison, she returned to Berkeley as a faculty member in 1993, was tenured in 1997, and became Chancellor's Professor in 2006. She also worked at Bell Labs from 1998 to 2000, while on leave from Berkeley, and has held visiting positions at several other universities. She chaired the Department of Statistics at Berkeley from 2009 to 2012, and was president of the Institute of Mathematical Statistics in 2014.[1][2][4] In 2023, she was awarded the COPSS Distinguished Achievement Award and Lectureship.


Research edit

Yu's work leverages computational developments to solve scientific problems by combining statistical machine learning approaches with the domain expertise of many collaborators, spanning many fields including statistics, machine learning, neuroscience, genomics, and remote sensing.[5] Her recent work has focused on solidifying a vision for data science, including a framework for veridical data science[6] and a framework for interpretable machine learning.[7] Yu has also developed a PCS (predictability, computability, and stability) framework for veridical data science to unify, streamline and expand on ideas and best practices of machine learning and statistics. Yu has received recent news coverage regarding her veridical data science framework,[8] investigations into the theoretical foundations of deep learning,[9] and work forecasting COVID-19 severity in the US.[10]

Other research included research in the area of statistical machine learning methods/algorithms (and associated statistical inference problems) such as dictionary learning, non-negative matrix factorization (NMF), EM and deep learning (CNNs and LSTMs), and heterogeneous effect estimation in randomized experiments (X-learner).

Honors and awards edit

Yu is a fellow of the Institute of Mathematical Statistics, the IEEE, the American Statistical Association, the American Association for the Advancement of Science, the American Academy of Arts and Sciences, and the National Academy of Sciences.[1][2][11][12][13] In 2012, she was the Tukey Lecturer of the Bernoulli Society for Mathematical Statistics and Probability.[1][2] In 2018, she was awarded the Elizabeth L. Scott Award. She was invited to give the Breiman lecture at NeurIPS 2019 (formally known as NIPS), on the topic of veridical data science.[14][15][16][17]

References edit

  1. ^ a b c d Faculty biography, UC Berkeley, accessed 2020-10-18.
  2. ^ a b c d "Bin Yu", People News for August 2012, Amstatnews, American Statistical Association, August 1, 2012, archived from the original on July 3, 2013.
  3. ^ Bin Yu at the Mathematics Genealogy Project
  4. ^ Current officials 2016-10-31 at the Wayback Machine, Institute of Mathematical Statistics, retrieved 2013-04-24.
  5. ^ "Google Scholar Profile for Bin Yu".
  6. ^ Yu, Bin; Kumbier, Karl (2019-11-12). "Veridical Data Science" (PDF). PNAS. 117 (8): 3920–3929. arXiv:1901.08152. doi:10.1073/pnas.1901326117. PMC 7049126. PMID 32054788.
  7. ^ Murdoch, W. James; Singh, Chandan; Kumbier, Karl; Abbasi-Asl, Reza; Yu, Bin (2019-10-29). "Interpretable machine learning: definitions, methods, and applications". Proceedings of the National Academy of Sciences. 116 (44): 22071–22080. arXiv:1901.04592. doi:10.1073/pnas.1900654116. ISSN 0027-8424. PMC 6825274. PMID 31619572. S2CID 204755862.
  8. ^ "Bin Yu | Computing, Data Science, and Society". data.berkeley.edu. Retrieved 2020-10-19.
  9. ^ "UC Berkeley to lead $10M NSF/Simons Foundation program to investigate theoretical underpinnings of deep learning | Computing, Data Science, and Society". data.berkeley.edu. Retrieved 2020-10-19.
  10. ^ "Getting the right equipment to the right people". Berkeley Engineering. Retrieved 2020-10-19.
  11. ^ Honored fellows 2016-10-19 at the Wayback Machine, Institute of Mathematical Statistics, retrieved 2013-04-24.
  12. ^ Directory of IEEE Fellows 2013-01-31 at the Wayback Machine, retrieved 2013-04-24.
  13. ^ Newly elected members 2013-05-01 at the Wayback Machine, American Academy of Arts and Sciences, April 2013, retrieved 2013-04-24.
  14. ^ . Archived from the original on 15 August 2018. Retrieved 30 March 2019.
  15. ^ "Yu Award Release". 2018-07-12. Retrieved 30 March 2019.
  16. ^ "Yu Award Release". 2018-09-11. Retrieved 30 March 2019.
  17. ^ "Breiman Lecture recording". YouTube. 2020-10-18. Retrieved 18 October 2020.

External links edit

  • A conversation with Professor Bin Yu By Tao Shi, July 9, 2013

native, form, this, personal, name, this, article, uses, western, name, order, when, mentioning, individuals, chinese, 郁彬, chinese, american, statistician, currently, chancellor, professor, departments, statistics, electrical, engineering, computer, sciences, . The native form of this personal name is Yu Bin This article uses Western name order when mentioning individuals Bin Yu Chinese 郁彬 is a Chinese American statistician She is currently Chancellor s Professor in the Departments of Statistics and of Electrical Engineering amp Computer Sciences at the University of California Berkeley 1 2 Bin Yu郁彬EducationPeking University BA 1984 University of California Berkeley MS 1987 PhD 1990 AwardsIMS Fellow 1999 IEEE Fellow 2001 ASA Fellow 2005 AAAS Fellow 2013 Member of NAS 2014 Elizabeth L Scott Award 2018 COPSS Distinguished Achievement Award and Lectureship 2023 Scientific careerFieldsStatisticsMachine LearningInstitutionsUniversity of California Berkeley University of Wisconsin Madison Bell LabsDoctoral advisorLucien Le CamTerry SpeedWebsitewww wbr stat wbr berkeley wbr edu wbr binyu wbr Contents 1 Biography 2 Research 3 Honors and awards 4 References 5 External linksBiography editYu earned a bachelor s degree in mathematics in 1984 from Peking University and went on to pursue graduate studies in statistics at Berkeley earning a master s degree in 1987 and a Ph D in 1990 Her dissertation Some Results on Empirical Processes and Stochastic Complexity was jointly supervised by Lucien Le Cam and Terry Speed 3 After postdoctoral studies at the Mathematical Sciences Research Institute and an assistant professorship at the University of Wisconsin Madison she returned to Berkeley as a faculty member in 1993 was tenured in 1997 and became Chancellor s Professor in 2006 She also worked at Bell Labs from 1998 to 2000 while on leave from Berkeley and has held visiting positions at several other universities She chaired the Department of Statistics at Berkeley from 2009 to 2012 and was president of the Institute of Mathematical Statistics in 2014 1 2 4 In 2023 she was awarded the COPSS Distinguished Achievement Award and Lectureship Research editThis article appears to contain a large number of buzzwords There might be a discussion about this on the talk page Please help improve this article if you can March 2021 Yu s work leverages computational developments to solve scientific problems by combining statistical machine learning approaches with the domain expertise of many collaborators spanning many fields including statistics machine learning neuroscience genomics and remote sensing 5 Her recent work has focused on solidifying a vision for data science including a framework for veridical data science 6 and a framework for interpretable machine learning 7 Yu has also developed a PCS predictability computability and stability framework for veridical data science to unify streamline and expand on ideas and best practices of machine learning and statistics Yu has received recent news coverage regarding her veridical data science framework 8 investigations into the theoretical foundations of deep learning 9 and work forecasting COVID 19 severity in the US 10 Other research included research in the area of statistical machine learning methods algorithms and associated statistical inference problems such as dictionary learning non negative matrix factorization NMF EM and deep learning CNNs and LSTMs and heterogeneous effect estimation in randomized experiments X learner Honors and awards editYu is a fellow of the Institute of Mathematical Statistics the IEEE the American Statistical Association the American Association for the Advancement of Science the American Academy of Arts and Sciences and the National Academy of Sciences 1 2 11 12 13 In 2012 she was the Tukey Lecturer of the Bernoulli Society for Mathematical Statistics and Probability 1 2 In 2018 she was awarded the Elizabeth L Scott Award She was invited to give the Breiman lecture at NeurIPS 2019 formally known as NIPS on the topic of veridical data science 14 15 16 17 References edit a b c d Faculty biography UC Berkeley accessed 2020 10 18 a b c d Bin Yu People News for August 2012 Amstatnews American Statistical Association August 1 2012 archived from the original on July 3 2013 Bin Yu at the Mathematics Genealogy Project Current officials Archived 2016 10 31 at the Wayback Machine Institute of Mathematical Statistics retrieved 2013 04 24 Google Scholar Profile for Bin Yu Yu Bin Kumbier Karl 2019 11 12 Veridical Data Science PDF PNAS 117 8 3920 3929 arXiv 1901 08152 doi 10 1073 pnas 1901326117 PMC 7049126 PMID 32054788 Murdoch W James Singh Chandan Kumbier Karl Abbasi Asl Reza Yu Bin 2019 10 29 Interpretable machine learning definitions methods and applications Proceedings of the National Academy of Sciences 116 44 22071 22080 arXiv 1901 04592 doi 10 1073 pnas 1900654116 ISSN 0027 8424 PMC 6825274 PMID 31619572 S2CID 204755862 Bin Yu Computing Data Science and Society data berkeley edu Retrieved 2020 10 19 UC Berkeley to lead 10M NSF Simons Foundation program to investigate theoretical underpinnings of deep learning Computing Data Science and Society data berkeley edu Retrieved 2020 10 19 Getting the right equipment to the right people Berkeley Engineering Retrieved 2020 10 19 Honored fellows Archived 2016 10 19 at the Wayback Machine Institute of Mathematical Statistics retrieved 2013 04 24 Directory of IEEE Fellows Archived 2013 01 31 at the Wayback Machine retrieved 2013 04 24 Newly elected members Archived 2013 05 01 at the Wayback Machine American Academy of Arts and Sciences April 2013 retrieved 2013 04 24 Elizabeth L Scott Award Archived from the original on 15 August 2018 Retrieved 30 March 2019 Yu Award Release 2018 07 12 Retrieved 30 March 2019 Yu Award Release 2018 09 11 Retrieved 30 March 2019 Breiman Lecture recording YouTube 2020 10 18 Retrieved 18 October 2020 External links editA conversation with Professor Bin Yu By Tao Shi July 9 2013 Retrieved from https en wikipedia org w index php title Bin Yu amp oldid 1171693760, wikipedia, wiki, book, books, library,

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