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Improving generalization capability of neural networks under conditions of sparse data: A new committee formation approach.

机译:在稀疏数据条件下提高神经网络的泛化能力:一种新的委员会组建方法。

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This dissertation attempts to improve the generalization capability of committee networks under sparse data conditions. The committees are formed based on a linear combination of neural networks using the concepts of ridge regression, principal component regression, and the r-k class estimator. Here a set of trained bootstrap networks serve as an input variable and the target response is the dependent variable in the regression models. The experimental results suggest improvement in models' generalization capability of the proposed algorithms when compared to that of a single network and the bootstrap committee fused using the simple average. By automatically and properly selecting the tuning parameters, the proposed algorithms can integrate unique and useful knowledge from the committee members as well as effectively reduce multicollinearity effects, and thus perform robustly in all kinds of sparse data conditions. The recommend method can also be applied to non-sparse data cases.
机译:本文试图提高稀疏数据条件下委员会网络的泛化能力。这些委员会是基于神经网络的线性组合,使用岭回归,主成分回归和r-k类估计器的概念组成的。在这里,一组经过训练的自举网络用作输入变量,目标响应是回归模型中的因变量。实验结果表明,与单个网络和使用简单平均值融合的引导委员会相比,所提出算法的模型泛化能力有所提高。通过自动和适当地选择调整参数,所提出的算法可以整合来自委员会成员的独特而有用的知识,并有效地减少多重共线性效应,从而在各种稀疏数据条件下均具有出色的性能。推荐方法也可以应用于非稀疏数据案例。

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