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  • Real AdaBoost With Gate Con...
    Mayhua-Lopez, E.; Gomez-Verdejo, V.; Figueiras-Vidal, A. R.

    IEEE transaction on neural networks and learning systems, 12/2012, Letnik: 23, Številka: 12
    Journal Article

    In this brief, we propose to increase the capabilities of standard real AdaBoost (RAB) architectures by replacing their linear combinations with a fusion controlled by a gate with fixed kernels. Experimental results in a series of well-known benchmark problems support the effectiveness of this approach in improving classification performance. Although the need for cross-validation processes obviously leads to higher training requirements and more computational effort, the operation load is never much higher; in many cases it is even lower than that of competitive RAB schemes.