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Hierarchical Nonlinear Factor Analysis (2001)  (Make Corrections)  (1 citation)
Tapani Raiko



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Abstract: of Master's thesis Department of Engineering Physics and Mathematics Author: Tapani Raiko Department: Department of Engineering Physics and Mathematics Major subject: Computer and Information Science Minor subject: Mathematics Title: Hierarchical Nonlinear Factor Analysis Title in Finnish: Hierarkkinen epalineaarinen faktorianalyysi Chair: Tik-61 Computer and Information Science Supervisor: Prof. Juha Karhunen Instructor: Harri Valpola, D.Sc. (Tech.) Abstract: A common problem... (Update)

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T. Raiko. Hierarchical nonlinear factor analysis. Master 's thesis, Helsinki University of Technology, Espoo, 2001. http://citeseer.ist.psu.edu/raiko01hierarchical.html   More

@misc{ raiko01hierarchical,
  author = "T. Raiko",
  title = "Hierarchical nonlinear factor analysis",
  text = "T. Raiko. Hierarchical nonlinear factor analysis. Master 's thesis, Helsinki
    University of Technology, Espoo, 2001.",
  year = "2001",
  url = "citeseer.ist.psu.edu/raiko01hierarchical.html" }
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