Support Vector Machines in Bioinformatics

نویسندگان

  • Florian Markowetz
  • Jorge Luis Borges
چکیده

Acknowledgements This work was written as my diploma thesis in mathematics at the University of Hei-delberg under the supervision of Prof. Dr. Enno Mammen. I wish to thank him for his help and advice. In Tobias Müller I found a very competent advisor. I owe him much for his assistance in all aspects of my work. Thank you very much! Dr. Lutz Edler, head of the Biostatistics Unit at the DKFZ, kindly allowed me to use his data and showed great interest in the progress of my work. Parts of this work will be presented by Dr. Lutz Edler at the conference on Statistics in Functional Genomics, June 2001 at Mount Holyoke College. The article (Markowetz et al., 2001) contains material from this thesis. I have very much enjoyed working at the TBI and can hardly imagine a better working environment. I have learned a lot from the group meetings and the discussions with my colleagues. Thanks, everyone, for the good cooperation and willingness to help! 2 Jede Statistik, jede rein deskriptive oder informative Arbeit beruht auf der großartigen und vielleicht unsinnigen Hoffnung, in der weitläufigen Zukunft könnten Menschen wie wir, nur hellsichtiger, mit Hilfe der von uns hinterlassenen Daten zu einer glücklichen Schlußfolgerung oder einer bemerkenswerten Generalisierung gelangen.

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تاریخ انتشار 2002