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  • 1
    Electronic Resource
    Electronic Resource
    Springer
    Machine learning 41 (2000), S. 295-313 
    ISSN: 0885-6125
    Keywords: capacity control ; decision trees ; perceptron ; learning theory ; learning algorithm
    Source: Springer Online Journal Archives 1860-2000
    Topics: Computer Science
    Notes: Abstract Capacity control in perceptron decision trees is typically performed by controlling their size. We prove that other quantities can be as relevant to reduce their flexibility and combat overfitting. In particular, we provide an upper bound on the generalization error which depends both on the size of the tree and on the margin of the decision nodes. So enlarging the margin in perceptron decision trees will reduce the upper bound on generalization error. Based on this analysis, we introduce three new algorithms, which can induce large margin perceptron decision trees. To assess the effect of the large margin bias, OC1 (Journal of Artificial Intelligence Research, 1994, 2, 1–32.) of Murthy, Kasif and Salzberg, a well-known system for inducing perceptron decision trees, is used as the baseline algorithm. An extensive experimental study on real world data showed that all three new algorithms perform better or at least not significantly worse than OC1 on almost every dataset with only one exception. OC1 performed worse than the best margin-based method on every dataset.
    Type of Medium: Electronic Resource
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  • 2
    Electronic Resource
    Electronic Resource
    Springer
    Axiomathes 6 (1995), S. 429-437 
    ISSN: 1572-8390
    Source: Springer Online Journal Archives 1860-2000
    Topics: Philosophy
    Notes: Abstract The deep formal and conceptual link existing between artificial life and artificial intelligence can be highlighted using conceptual tools derived by Karl Popper's evolutionary epistemology. Starting from the observation that the structure itself of an organism embodies knowledge about the environment which it is adapted to, it is possible to regard evolution as a learning process. This process is subject to the same rules indicated by Popper for the growth of scientific knowledge: causal conjectures (mutations) and successive refutations (extinction). In the field of machine learning such a paradigm is represented by genetic algorithms that, simulating biological processes, emulate cognitive processes. From a practical viewpoint, that perspective allows to identify the two different kinds of learning considered by artificial intelligence, knowledge acquisition and skill improvement, and to get a different view of the problem of heuristic knowledge in learning systems. From a theoretical point of view, these considerations can shade a new light on an old epistemological problem: why do we live in a learnable world?
    Type of Medium: Electronic Resource
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  • 3
    Book
    Book
    New York :Cambridge University Press,
    Title: Kernel methods for pattern analysis /
    Author: Shawe-Taylor, John
    Contributer: Cristianini, Nello
    Publisher: New York :Cambridge University Press,
    Year of publication: 2004
    Pages: XIV, 462 S.
    ISBN: 0-521-81397-2
    Type of Medium: Book
    Language: Undetermined
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