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An Improved Self-Structuring Neural Network

机译:改进的自构造神经网络

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Creating a neural network based classification model is traditionally accomplished using the trial and error technique. However, the trial and error structuring method nornally suffers from several difficulties including overtraining. In this article, a new algorithm that simplifies structuring neural network classification models has been proposed. It aims at creating a large structure to derive classifiers from the training dataset that have generally good predictive accuracy performance on domain applications. The proposed algorithm tunes crucial NN model thresholds during the training phase in order to cope with dynamic behavior of the learning process. This indeed may reduce the chance of overfitting the training dataset or early convergence of the model. Several experiments using our algorithm as well as other classification algorithms, have been conducted against a number of datasets from University of California Irvine (UCI) repository. The experiments' are performed to assess the pros and cons of our proposed NN method. The derived results show that our algorithm outperformed the compared classification algorithms with respect to several performance measures.
机译:传统上,使用试错法创建基于神经网络的分类模型。然而,反复试验的构造方法通常会遭受包括过度训练在内的若干困难。在本文中,提出了一种简化结构化神经网络分类模型的新算法。它旨在创建一个大型结构,以从训练数据集中获取分类器,这些分类器在域应用程序上通常具有良好的预测准确性。所提出的算法在训练阶段调整关键的NN模型阈值,以应对学习过程的动态行为。实际上,这可以减少过度拟合训练数据集或模型的早期收敛的机会。针对加州大学尔湾分校(UCI)储存库中的许多数据集,使用我们的算法以及其他分类算法进行了几次实验。进行实验是为了评估我们提出的NN方法的利弊。得出的结果表明,就几种性能指标而言,我们的算法优于分类算法。

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