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Udo Seiffert

    Self-organizing neural networks
    Bioinformatics using computational intelligence paradigms
    • Bioinformatics and computational intelligence are undoubtedly remarkably fast growing fields of research and real-world applications with enormous potential for current and future developments. Bioinformatics Using Computational Intelligence Paradigms contains recent theoretical approaches and guiding applications of biologically inspired information processing systems (computational intelligence) against the background of bioinformatics. This carefully edited monograph combines the latest results of bioinformatics and computational intelligence, and offers promising cross-fertilization and interdisciplinary work between these growing fields.

      Bioinformatics using computational intelligence paradigms
    • Self-organizing neural networks

      • 278pagine
      • 10 ore di lettura

      The Self-Organizing Map (SOM) is a widely utilized architecture for unsupervised artificial neural networks, introduced by Teuvo Kohonen in the 1980s. It has become a powerful method for visualization and unsupervised classification, thanks to a vibrant community of international researchers who have developed numerous extensions and modifications over the past two decades. The original algorithm's strength lies in its universal applicability and ease of use, requiring only a few parameters, making it accessible even for beginners while still delivering reliable results. This book showcases the latest theoretical advancements and presents a variety of challenging real-world applications, demonstrating the ongoing potential for improvements and innovative developments in the field. The extensive range of published applications utilizing SOMs is remarkable. Our objective is to provide a contemporary overview of self-organizing neural networks, making it accessible to researchers, practitioners, and graduate students across various academic and industrial disciplines. We extend our gratitude to Professor Teuvo Kohonen, the pioneer of SOMs, for his support and for contributing the first chapter of this book.

      Self-organizing neural networks