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High-dimensional function approximation using local linear embedding

机译:使用局部线性嵌入的高维函数逼近

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Neural network approximation of highdimensional nonlinear functions is difficult due to the sparsity of the data in the high-dimensional data space and the need for good coverage of the data space by the ‘receptive fields’ of the neurons. However, high-dimensional data often resides around a much lower dimensional supporting manifold. Given that a low dimensional approximation of the target function is likely to be more precise than a high-dimensional approximation, if we can find a mapping of the data points onto a lower-dimensional space corresponding to the supporting manifold, we expect to be able to build neural network approximations of the target function with improved precision and generalization ability. Here we use the local linear embedding (LLE) method to find the low-dimensional manifold and show that the neural networks trained on the transformed data achieve much better function approximation performance than neural networks trained on the original data.
机译:由于高维数据空间中数据的稀疏性以及神经元“感受野”需要很好地覆盖数据空间,因此难以对高维非线性函数进行神经网络逼近。但是,高维数据通常驻留在低维的支持流形周围。鉴于目标函数的低维近似值可能比高维近似值更为精确,因此,如果我们能够找到数据点到对应于支撑流形的低维空间上的映射,我们希望能够建立具有精确度和泛化能力的目标函数的神经网络逼近。在这里,我们使用局部线性嵌入(LLE)方法找到低维流形,并表明,在转换后的数据上训练的神经网络比在原始数据上训练的神经网络具有更好的函数逼近性能。

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