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Optimization of the Local Search in the Training for SAMANN Neural Network

机译:SAMANN神经网络训练中局部搜索的优化

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In this paper, we discuss the visualization of multidimensional data. A well-known procedure for mapping data from a high-dimensional space onto a lower-dimensional one is Sammon's mapping. This algorithm preserves as well as possible all interpattern distances. We investigate an unsupervised backpropagation algorithm to train a multilayer feed-forward neural network (SAMANN) to perform the Sammon's nonlinear projection. Sammon mapping has a disadvantage. It lacks generalization, which means that new points cannot be added to the obtained map without recalculating it. The SAMANN network offers the generalization ability of projecting new data, which is not present in the original Sammon's projection algorithm. To save computation time without losing the mapping quality, we need to select optimal values of control parameters. In our research the emphasis is put on the optimization of the learning rate. The experiments are carried out both on artificial and real data. Two cases have been analyzed: (1) training of the SAMANN network with full data set, (2) retraining of the network when the new data points appear.
机译:在本文中,我们讨论了多维数据的可视化。将数据从高维空间映射到低维空间的一种众所周知的过程是Sammon映射。该算法尽可能保留所有图案间的距离。我们研究了一种无监督反向传播算法,以训练多层前馈神经网络(SAMANN)来执行Sammon的非线性投影。 Sammon映射有一个缺点。它缺乏概括性,这意味着如果不重新计算新点就无法将其添加到获得的地图中。 SAMANN网络提供了投影新数据的泛化能力,而原始Sammon的投影算法中没有这种能力。为了节省计算时间而不损失映射质量,我们需要选择控制参数的最佳值。在我们的研究中,重点放在学习率的优化上。实验是在人工和真实数据上进行的。分析了两种情况:(1)用完整的数据集训练SAMANN网络,(2)在出现新的数据点时对网络进行重新训练。

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