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Neural networks for invariant pattern recognition

机译:神经网络用于不变模式识别

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In this paper, we discuss a methodology for applying feedforward networks to problems of invariant pattern recognition. We present the Group Representation Network (GRN), a type of feedforward network with the property that its output is invariant under a group of transformations of its input. Since the invariance of such a network is inbuilt, it does not need to be learned. Consequently it is capable of a better generalization performance than a conventional network for solving the same symmetric problem. In addition, the GRN has fewer free parameters than connections and we can hence expect it to train faster than an ordinary network of the same connectivity.
机译:在本文中,我们讨论了将前馈网络应用于不变模式识别问题的方法。我们介绍了组表示网络(GRN),这是一种前馈网络,其属性是在其输入的一组转换下其输出是不变的。由于这种网络的不变性是内在的,因此无需学习。因此,与用于解决相同对称问题的常规网络相比,它具有更好的泛化性能。此外,GRN具有比连接更少的空闲参数,因此我们可以期望它比具有相同连接性的普通网络更快地训练。

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