首页> 外文会议>Engineering in Medicine and Biology Society, 1995., IEEE 17th Annual Conference >Comparison of gradient descent and conjugate gradient learning algorithms for classification of electrogastrogram
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Comparison of gradient descent and conjugate gradient learning algorithms for classification of electrogastrogram

机译:梯度下降与共轭梯度学习算法在胃电图分类中的比较

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Our previous study showed that the possibility of using an optical three-layer feedforward neural network employing the gradient descent learning algorithm for automated assessment of normality of the electrogastrogram. However, problems with this algorithm are slow convergence rate and critical user-dependent parameters. In the present study, two conjugate gradient learning algorithms (quasi-Newton and scaled conjugate algorithm) were introduced and compared with the gradient descent learning algorithm for the classification of the normal and abnormal electrogastrogram. Three indexes, the convergence rate, complexity per iteration and parameter robustness, were used to evaluate the performance of each algorithm. The results showed that the scaled conjugate gradient algorithm performed the best, which was robust and provided a super linear convergence rate.
机译:我们以前的研究表明,使用光学三层前馈神经网络的可能性,该网络采用梯度下降学习算法来自动评估胃电图的正态性。但是,该算法的问题是收敛速度慢和关键的用户相关参数。在本研究中,介绍了两种共轭梯度学习算法(准牛顿法和比例共轭算法),并与梯度下降学习算法进行了比较,以对正常和异常胃电图进行分类。使用三个指标,即收敛速度,每次迭代的复杂度和参数的鲁棒性,来评估每种算法的性能。结果表明,按比例缩放的共轭梯度算法表现最好,鲁棒性强,并提供了超线性收敛速度。

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