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首页> 外文期刊>Journal of Statistical Planning and Inference >A deletion/substitution/addition algorithm for classification neural networks, with applications to biomedical data
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A deletion/substitution/addition algorithm for classification neural networks, with applications to biomedical data

机译:一种用于分类神经网络的删除/替代/添加算法,应用于生物医学数据

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Neural networks are a popular machine learning tool particularly in applications such as protein structure prediction: however. overfitting can pose an obstacle to their effective use. Due to the large number of parameters in a typical neural network. one may obtain a network fit that perfectly predicts the learning data, yet fails to generalize to other data sets. One way of reducing the size of the parmeter space is to alter the network topology so that some edges are removed: however it is often not immediately apparent which edges should be eliminated. We propose a data-adaptive method of selecting an optimal network architecture using a deletion/substitution/addition algorithm. Results of this approach to classification are presented on simulated data and the breast cancer data of Wolberg and Mangasarian [1990. Multisurface method of pattern separation for medical diagnosis applied to breast cytology. Proc. Nat. Acad. Sci. 87. 9193-9196].
机译:神经网络是一种流行的机器学习工具,特别是在蛋白质结构预测等应用中:但是。过度安装可能会阻碍其有效使用。由于典型神经网络中的大量参数。人们可能会获得一种网络拟合,可以完美地预测学习数据,但无法推广到其他数据集。减小参数空间大小的一种方法是更改​​网络拓扑,以除去一些边缘:但是,通常并不能立即清楚应该消除哪些边缘。我们提出一种使用删除/替换/添加算法选择最佳网络体系结构的数据自适应方法。这种分类方法的结果在Wolberg和Mangasarian [1990年]的模拟数据和乳腺癌数据中给出。用于乳腺细胞学的医学诊断模式分离的多表面方法。进程纳特学院科学87. 9193-9196]。

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