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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Enhanced quantum-based neural network learning and its application to signature verification
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Enhanced quantum-based neural network learning and its application to signature verification

机译:增强了基于量子的神经网络学习及其应用于签名验证

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In this paper, an enhanced quantum-based neural network learning algorithm (EQNN-S) which constructs a neural network architecture using the quantum computing concept is proposed for signature verification. The quantum computing concept is used to decide the connection weights and threshold of neurons. A boundary threshold parameter is introduced to optimally determine the neuron threshold. This parameter uses min, max function to decide threshold, which assists efficient learning. A manually prepared signature dataset is used to test the performance of the proposed algorithm. To uniquely identify the signature, several novel features are selected such as the number of loops present in the signature, the boundary calculation, the number of vertical and horizontal dense patches, and the angle measurement. A total of 45 features are extracted from each signature. The performance of the proposed algorithm is evaluated by rigorous training and testing with these signatures using partitions of 60-40 and 70-30%, and a tenfold cross-validation. To compare the results derived from the proposed quantum neural network, the same dataset is tested on support vector machine, multilayer perceptron, back propagation neural network, and Naive Bayes. The performance of the proposed algorithm is found better when compared with the above methods, and the results verify the effectiveness of the proposed algorithm.
机译:在本文中,提出了一种使用量子计算概念构建神经网络架构的增强量子的神经网络学习算法(EQNN-S)以进行签名验证。量子计算概念用于决定神经元的连接权重和阈值。引入边界阈值参数以最佳地确定神经元阈值。此参数使用MIN,MAX功能来决定阈值,有助于高效学习。手动准备的签名数据集用于测试所提出的算法的性能。为了唯一地识别签名,选择了几种新颖特征,例如签名中存在的循环的数量,边界计算,垂直和水平致密贴片的数量和角度测量。每个签名中共提取45个功能。所提出的算法的性能是通过使用60-40和70-30%的分区的分区和十倍交叉验证的分区进行严格的训练和测试。为了比较来自所提出的量子神经网络的结果,在支持向量机器,多层erceptron,后传播神经网络和幼稚贝叶斯上测试了相同的数据集。与上述方法相比,所提出的算法的性能更好,结果验证了所提出的算法的有效性。

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