A. Islam, M. Hasan, R. Rahaman, S. Kabir, S. Ahmmed
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引用次数: 5

摘要

如今,人工神经网络(ANN)已经成为人工智能领域最突出的概念之一。人工神经网络已经在现实生活中得到了成千上万的应用。在分类问题领域,人工神经网络被大量使用。但关键问题是,在几乎所有情况下,它的性能取决于人工神经网络的体系结构。因此,设计一个合适的人工神经网络一直是神经网络领域的一个重要问题。对于人工神经网络设计者来说,确定一个合适的人工神经网络体系结构一直是一项具有挑战性的任务。提出了一种用于设计三层神经网络结构的剪枝算法。众所周知,三层人工神经网络可以解决任何类型的线性和非线性问题。该算法采用了相关系数、标准差和统计假设检验等主要数学概念来设计人工神经网络。为此,作者提出了一种新的基于灵敏度和假设相关性检验(SHCT)的神经网络设计剪枝算法来自动确定神经网络的结构。SHCT的显著特点是使用统计假设检验方案、标准差、相关系数,并结合适当的替换来设计人工神经网络。为了证明SHCT的性能,它已经在许多基准问题数据集上进行了测试,如澳大利亚信用卡、乳腺癌、糖尿病、心脏病和甲状腺。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing ANN using sensitivity & hypothesis correlation testing
Now a day artificial neural network (ANN) has become one of the most prominent concepts in the field of artificial intelligence. ANN has already been applied in the thousands of real life applications. In the arena of classification problem ANN is used massively. But the key issue is in almost all situations the performance of it depends on the architecture of the ANN. As a result designing a proper ANN is always a vital issue in the field of neural networks. The determination of an appropriate ANN architecture is always a challenging task for the ANN designers. This paper proposes a pruning algorithm for designing a three layered ANN architectures. It is well known that a three layered ANN can solve any kind of linear and nonlinear problems. The proposed algorithm uses some major mathematical concepts: correlation coefficients, standard deviations, and statistical hypothesis testing scheme for designing the ANNs. For that reason the authors propose the new pruning algorithm, ANN designing by sensitivity and hypothesis correlations testing (SHCT), to determine ANN architectures automatically. The salient features of SHCT are that it uses statistical hypothesis testing scheme, standard deviations, correlation coefficients, merging with proper replacements to design the ANNs. To justify the performances of SHCT it has been tested on a number of benchmark problem datasets such as Australian credit cards, breast cancer, diabetes, heart disease, and thyroid.
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