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Entropy estimation of the position of the barrier dimension: Applicability nearsighted and farsighted iterative algorithms for processing high-dimensional data

机译:屏障尺寸位置的熵估计:用于处理高维数据的适用性和远视迭代算法

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It is shown that large neural networks allow solving tasks that cannot classical quadratic forms in linear algebra. Thus the assessment of output entropy of neural network converters biometrics code is possible. The assessment of high-dimensional entropy is based on the symmetrization of the problem of the correlation of biometric data. Entropy of low dimension and high-dimensional entropy are differently connected with equally correlated data. For low-dimensional transformations only short-sighted algorithms, which not capable to bypass local extrema of quality are effective. The algorithms constructed on the accounting of multidimensional entropy are far-sighted, they don't see local extrema.
机译:结果表明,大型神经网络允许解决不能在线性代数中古典二次形式的任务。因此,可以进行神​​经网络转换器生物识别代码的输出熵的评估。高维熵的评估基于生物识别数据的相关性的对称性。低尺寸和高维熵的熵与同样相关的数据不同。对于低尺寸变换,只有短视算法,不能够绕过局部极值质量是有效的。在多维熵的会计上构建的算法是远见的,他们没有看到当地极值。

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