首页> 外文会议>Hellenic Conference on AI(Artificial Intellignece)(SENTN 2004); 20040505-20040508; Samos; GR >Pap-Smear Classification Using Efficient Second Order Neural Network Training Algorithms
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Pap-Smear Classification Using Efficient Second Order Neural Network Training Algorithms

机译:使用有效的二阶神经网络训练算法进行子宫颈抹片分类

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In this paper we make use of two highly efficient second order neural network training algorithms, namely the LMAM (Levenberg-Marquardt with Adaptive Momentum) and OLMAM (Optimized Levenberg-Marquardt with Adaptive Momentum), for the construction of an efficient pap-smear test classifier. The algorithms are methodologically similar, and are based on iterations of the form employed in the Levenberg-Marquardt (LM) method for non-linear least squares problems with the inclusion of an additional adaptive momentum term arising from the formulation of the training task as a constrained optimization problem. The classification results obtained from the application of the algorithms on a standard benchmark pap-smear data set reveal the power of the two methods to obtain excellent solutions in difficult classification problems whereas other standard computational intelligence techniques achieve inferior performances.
机译:在本文中,我们利用两种高效的二阶神经网络训练算法,即LMAM(具有自适应动量的Levenberg-Marquardt)和OLMAM(具有自适应动量的优化Levenberg-Marquardt)来构建有效的巴氏涂片测试分类器。这些算法在方法上相似,并且基于Levenberg-Marquardt(LM)方法中用于非线性最小二乘问题的形式的迭代,并包含了将训练任务公式化为一个额外的自适应动量项。约束优化问题。通过在标准基准巴氏涂片数据集上应用该算法获得的分类结果表明,这两种方法可在困难的分类问题中获得出色的解决方案,而其他标准计算智能技术的性能则较差。

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