5 research outputs found

    Evaluation of neural network performance and generalisation using thresholding functions

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    The application of a simple thresholding technique to help assess the satisfactory performance of classification networks formed from Multi-Layer Perceptron (MLP) artificial neural networks (ANNs) is discussed. Both conventional Maximum Likelihood and Bayesian Evidence based training paradigms were implemented. Firstly a simulated data set drawn from a two-dimensional Gaussian distribution was investigated to illustrate the physical significance of the threshold plots compared to the classifier output probability contours. Secondly a real world application data set comprising of low-frequency vibration measurements on an aircraft wing (a GNAT trainer) is considered. It is demonstrated that simple threshold based plots applied to classifier network outputs may provide a simple yet powerful technique to aid in the rejection of poorly regularised network structures

    Estimating Relevant Input Dimensions for Self-organizing Algorithms

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    this paper. Approaches like [11] clearly indicate that often a considerable reduction of the data dimension is possible without loss of informatio

    An Overview of SOM Literature

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