Isabelle Guyon
Isabelle Guyon | |
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Pronunciation |
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Born | |
Citizenship | French Swiss American |
Alma mater | ESPCI Paris (MSc) Pierre and Marie Curie University (PhD) |
Known for | Support Vector Machines Siamese neural network |
Awards | BBVA Foundation Frontiers of Knowledge Awards (2020) AMIA Fellow (2011) |
Scientific career | |
Fields | Machine Learning |
Institutions | Bell Labs University of Paris-Saclay |
Thesis | Réseaux de neurones pour la reconnaissance des formes : architectures et apprentissage (neural networks for pattern recognition) (1988) |
Doctoral advisor | Gerard Dreyfus |
Website | www |
Signature |
Isabelle Guyon (French pronunciation: [izabɛl ɡɥijɔ̃]; born August 15, 1961) is a French-born researcher in machine learning known for her work on support-vector machines, artificial neural networks and bioinformatics.[1] She is a Chair Professor at the University of Paris-Saclay.[2] Guyon serves as the Director, Research Scientist at Google Research since October 2022.[3]
She is considered to be a pioneer in the field, with her contribution to the support-vector machines with Vladimir Vapnik and Bernhard Boser.[4][5]
Biography
After graduating from the French engineering school ESPCI Paris in 1985,[6] she joined the group of Gerard Dreyfus at the Université Pierre-et-Marie-Curie to do a PhD on neural networks architectures and training.[7][8]
Guyon defended her thesis in 1988 and was hired the year after at AT&T Bell Laboratories, first as a post-doc, then as a group leader.[5] She worked at Bell Labs for six years, where she explored several research areas, from neural networks to pattern recognition and computational learning theory, with application to handwriting recognition.[9] She collaborated with Yann LeCun, Léon Bottou, Vladimir Vapnik, Corinna Cortes, Yoshua Bengio, Patrice Simard, and met her future husband, Bernhard Boser.[1][5]
In 1996, Guyon left Bell Labs and raised her children at Berkeley, California.[1] In Berkeley, she created her own machine learning consulting company, Clopinet.[10] She became interested in medical applications, and used her previous work to classify the genes responsible for different types of cancers.[11]
Since 2003, Guyon has organized many challenges in data science, in order to stimulate research in this field.[5][12] She founded ChaLearn in 2011, a non-profit organization aimed at creating machine learning challenges open to everyone.[12] She was Program Chair of NeurIPS 2016[13] and became General Chair of NeurIPS in 2017.[14] She is also Action Editor for the Journal of Machine Learning Research[15] and Series Editor for Series: Challenges in Machine Learning.[16] She is a member of the European Laboratory for Learning and Intelligent Systems.[17]
In 2016, Guyon came back to France to take the Chair Professorship in Big data between the University of Paris-Saclay and INRIA.[4] She works in TAU (TAckling the Underspecified), a research collaboration of the Laboratoire de recherche en informatique.[18]
Together ith Bernhard Schölkopf and Vladimir Vapnik, she received in 2020 the BBVA Foundation Frontiers of Knowledge Awards for her work in machine learning.[5]
Scientific work
Guyon has worked in many subfields of machine learning, including neural networks, support-vector machines, feature selection and applications of machine learning to biology.
Support-vector machines
Among her most notable contributions, Guyon co-invented support-vector machines (SVM) in 1992, with Bernhard Boser and Vladimir Vapnik.[19] SVM is a supervised machine learning algorithm, comparable to neural networks or decision trees, which has quickly become a classical technique in machine learning. SVMs have especially contributed to the popularization of kernel methods.
Neural networks
During her years at Bell Labs, Guyon took part of numerous projects involving neural networks. In particular, she wrote some of the first papers on the use of neural network for handwriting recognition using the MNIST database.[20] She is also a co-inventor of the siamese neural networks, a neural network architecture used to learn similarities, with applications to signature, face or object recognition.[11]
Machine learning for biology
Guyon is the author of many publications at the intersection of biology (cancer research and genomics) and artificial intelligence. She has notably introduced the use of support-vector machines to detect cancer using genes.[21]
Machine learning challenges
Through her non-profit organization ChaLearn, Guyon has organized and directed challenges open to everyone in order to solve open problems in machine learning,[12] including computer vision,[22] neurosciences,[23] particle physics,[24] feature selection,[25] causality[26] and automated machine learning.[27] Most of the challenges organized by ChaLearn have resulted in publications. Among the most cited ones are:
- Guyon et al., Result analysis of the NIPS 2003 feature selection challenge, Advances in neural information processing systems, 2005, link
- Escalera et al., ChaLearn Looking at People Challenge 2014: Dataset and Results, Computer Vision - ECCV 2014 Workshops, Springer International Publishing, 2014, link
- Guyon et al., A brief Review of the ChaLearn AutoML Challenge, JMLR: Workshop and Conference Proceedings 64:21-30, 2016, link
- Adam-Bourdario et al., The Higgs boson machine learning challenge, JMLR: Workshop and Conference Proceedings 42:19-55, 2015, link
Private life
She is married to Bernhard Boser, a professor at UC Berkeley.[28] She has twins and one daughter, all three of whom have completed a science degree.[29] Guyon has three citizenships: French by birth, Swiss by marriage and American by naturalization.[1]
Awards and honors
- Recipient of the BBVA Foundation Frontiers of Knowledge Awards (2020)[5]
- American Medical Informatics Association Fellow (2011)[30]
Publications
- Bernhard Boser, Isabelle Guyon and Vladmir Vapnik, A training algorithm for optimal margin classifiers, Proceedings of the fifth annual workshop on Computational learning theory, 1992, doi:10.1145/130385.130401
- Jane Bromley, Isabelle Guyon, Yann LeCun, Eduard Säckinger and Roopak Shah, Signature verification using a" siamese" time delay neural network, Advances in Neural Information Processing Systems, 1994.
- Isabelle Guyon and André Elisseeff, An introduction to variable and feature selection, Journal of Machine Learning Research, 2003.
- Isabelle Guyon, Jason Weston, Stephen Barnhill and Vladimir Vapnik, Gene selection for cancer classification using support vector machines, Machine Learning, Kluwer Academic Publishers, 2002, doi:10.1023/A:1012487302797
See also
References
- ^ a b c d Larousserie, David (2018-04-08). "Isabelle Guyon veut démocratiser l'intelligence artificielle". Le Monde (in French). Retrieved 2020-06-15.
- ^ "Des algorithmes qui apprennent et classent : le travail d'Isabelle Guyon récompensé". Université Paris-Saclay (in French). 2020-05-28. Retrieved 2020-06-15.
- ^ "Isabelle Guyon". guyon.chalearn.org. Retrieved 2024-05-24.
- ^ a b "Pionnière : Isabelle Guyon, professeur à l'université de Paris-Saclay - Technos et Innovations". L'Usine nouvelle (in French). 2018-02-07. Retrieved 2020-06-15.
- ^ a b c d e f "Isabelle Guyon". FBBVA. Archived from the original on 2020-06-15. Retrieved 2020-06-15.
- ^ ESPCI Alumnis. "Isabelle Boser (née Guyon), ingénieure de la 100ème promotion". ESPCI (in French). Retrieved 2020-06-15.
- ^ Isabelle Guyon (1988). Réseaux de neurones pour la reconnaissance des formes : architectures et apprentissage (in French).
- ^ "Home Page - Gérard Dreyfus". www.neurones.espci.fr. Retrieved 2020-06-15.
- ^ Wang, Patrick S. P.; Guyon, Isabelle (1994-01-01). World Scientific (ed.). Advances In Pattern Recognition Systems Using Neural Network Technologies. World Scientific. ISBN 978-981-4611-81-7. Retrieved 2020-06-15.
- ^ Isabelle Guyon. "ClopiNet: Isabelle Guyon 's consulting company". Retrieved 2020-06-15.
- ^ a b Bromley, Jane; Guyon, Isabelle; LeCun, Yann; Säckinger, Eduard (1994). Morgan-Kaufmann (ed.). "Signature Verification using a "Siamese" Time Delay Neural Network" (PDF). Advances in Neural Information Processing Systems. 6: 737–744. Retrieved 2020-06-15.
- ^ a b c "Chalearn: Challenges in Machine Learning". Retrieved 2020-06-15.
- ^ "NeurIPS 2016: Committees". Retrieved 2020-06-15.
- ^ "NeurIPS 2017: Committees". Retrieved 2020-06-15.
- ^ "Journal of Machine Learning Research: Editorial Board". Retrieved 2020-06-15.
- ^ "Series: Challenges in Machine Learning". Retrieved 2020-06-15.
- ^ "Membres d'ELLIS". Retrieved 2020-06-15.
- ^ "TikiWiki | People". Retrieved 2020-06-20.
- ^ "A training algorithm for optimal margin classifiers | Proceedings of the fifth annual workshop on Computational learning theory". CiteSeerX 10.1.1.21.3818. doi:10.1145/130385.130401. S2CID 207165665.
{{cite journal}}
: Cite journal requires|journal=
(help) - ^ Bottou, L.; Cortes, C.; Denker, J.S.; Drucker, H. (1994). "Comparison of classifier methods: A case study in handwritten digit recognition". Proceedings of the 12th IAPR International Conference on Pattern Recognition (Cat. No.94CH3440-5). Vol. 2. pp. 77–82 vol.2. doi:10.1109/ICPR.1994.576879. ISBN 0-8186-6270-0. S2CID 46946958.
- ^ Guyon, Isabelle; Weston, Jason; Barnhill, Stephen; Vapnik, Vladimir (2002-01-01). "Gene Selection for Cancer Classification using Support Vector Machines". Machine Learning. 46 (1): 389–422. doi:10.1023/A:1012487302797. ISSN 1573-0565. S2CID 207720429.
- ^ "Looking at people: Chalearn workshop series". Retrieved 2020-06-17.
- ^ Springer International Publishing, ed. (2017). Neural Connectomics Challenge. The Springer Series on Challenges in Machine Learning. ISBN 978-3-319-53069-7. Retrieved 2020-06-17.
- ^ "NIPS 2014 workshop: high-energy particle physics". 2014. Retrieved 2020-06-17.
- ^ Springer-Verlag, ed. (2006). Feature Extraction: Foundations and Applications. Studies in Fuzziness and Soft Computing. ISBN 978-3-540-35487-1. Retrieved 2020-06-17.
- ^ "ChaLearn Fast Causation Coefficient Challenge". competitions.codalab.org. Retrieved 2024-03-16.
- ^ Springer International Publishing, ed. (2019). "10". Automated Machine Learning: Methods, Systems, Challenges. The Springer Series on Challenges in Machine Learning. ISBN 978-3-030-05317-8. Retrieved 2020-06-17.
- ^ "Bernhard Boser | EECS at UC Berkeley". www2.eecs.berkeley.edu. Retrieved 2020-06-15.
- ^ Anwar, Yasmin; May 11, Media Relations| (2020-05-11). "Rejection turned out great for Berkeley's top graduating senior". Berkeley News. Retrieved 2020-06-15.
{{cite web}}
: CS1 maint: numeric names: authors list (link) - ^ "Isabelle Guyon, PhD, FACMI | AMIA". www.amia.org. Retrieved 2020-06-15.
External links
- Official website
- Isabelle Guyon publications indexed by Google Scholar
- Living people
- French emigrants to the United States
- Machine learning researchers
- French computer scientists
- American computer scientists
- Scientists at Bell Labs
- Academic staff of Paris-Saclay University
- Artificial intelligence researchers
- Pierre and Marie Curie University alumni
- ESPCI Paris alumni
- 1961 births