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Bernhard Schölkopf

    Bernhard Schölkopf is a leading researcher in machine learning, renowned for his foundational work on kernel methods and large-margin classifiers. His research delves into the theoretical aspects and practical implementations of artificial intelligence, investigating how machines can efficiently and reliably learn from data. Through his significant publications and academic leadership, he has profoundly influenced the trajectory of contemporary AI, making sophisticated concepts understandable to a broad scientific audience.

    Support vector learning
    Learning theory and kernel machines
    Empirical inference
    • 2013

      Empirical inference

      • 287 pages
      • 11 hours of reading

      This book honours the outstanding contributions of Vladimir Vapnik, a rare example of a scientist for whom the following statements hold true simultaneously: his work led to the inception of a new field of research, the theory of statistical learning and empirical inference; he has lived to see the field blossom; and he is still as active as ever

      Empirical inference
    • 2003

      Learning theory and kernel machines

      • 746 pages
      • 27 hours of reading

      This book constitutes the joint refereed proceedings of the 16th Annual Conference on Computational Learning Theory, COLT 2003, and the 7th Kernel Workshop, Kernel 2003, held in Washington, DC in August 2003. The 47 revised full papers presented together with 5 invited contributions and 8 open problem statements were carefully reviewed and selected from 92 submissions. The papers are organized in topical sections on kernel machines, statistical learning theory, online learning, other approaches, and inductive inference learning.

      Learning theory and kernel machines