Aapo Hyvärinen

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Aapo Johannes Hyvärinen (born 1970 in Helsinki) is a Finnish professor of computer science at the University of Helsinki and known for his research in independent component analysis.[1]

Education and career[edit]

Hyvärinen was born in Helsinki and studied mathematics at the University of Helsinki and received his Doctor of Technology in information science in 1997 at the Helsinki University of Technology under the supervision of Erkki Oja. His doctoral thesis, titled "Independent component analysis: A neural network approach",[2] introduced the FastICA algorithm. Since then, Hyvärinen has conducted research especially in relation to the independent component analysis, as well as score matching (also known as Hyvärinen scoring rule). In November 2007, he was appointed as a professor at the University of Helsinki.[3] Hyvärinen has been a member of the Finnish Academy of Sciences since 2016. From August 2016 to March 2019, he held a professorship in machine learning at the Gatsby Computational Neuroscience Unit of the University College London.

Bibliography[edit]

  • Hyvärinen, Aapo; Karhunen, Juha; Oja, Erkki (2001). Independent component analysis. New York: J. Wiley. ISBN 0-471-46419-8. OCLC 53228828.
  • Hyvärinen, Aapo; Hurri, Jarmo; Hoyer, Patrik O. (2009). Natural image statistics : a probabilistic approach to early computational vision. London: Springer-Verlag. ISBN 978-1-84882-491-1. OCLC 405546192.
  • Hyvärinen, Aapo (2022). Painful intelligence: What AI can tell us about human suffering. arXiv:2205.15409.

References[edit]

  1. ^ "Aapo Hyvärinen". datasig.ac.uk. Retrieved 2022-12-21.
  2. ^ "HUT - CIS - Teaching - Theses". www.cis.hut.fi. Retrieved 2022-12-21.
  3. ^ "9.11.2007: Dr. Aapo Hyvärinen invited to professorship at UH | HIIT". 2008-05-10. Archived from the original on 2008-05-10. Retrieved 2022-12-21.