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Non-Linear Data for Neural Networks Training and Testing

机译:神经网络训练和测试的非线性数据

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Highly nonlinear data sets are important in the field of artificial neural networks. It is not feasible to design a neural network and try to classify some real world data directly with that network. N-bit parity is one of the oldest data used to train and test neural networks. The simplest is the 2-bit parity also known as the XOR classification problem. Some researchers say that N-bit parity s set though highly nonlinear it is a simple task to learn by neural networks, others were drifted to tailor special purpose neural networks to solve only the N-bit parity problem without explaining why there is such a need. Is it possible to judge the N-bit parity is a simple data due to the fact that it can be modeled by a deterministic finite accepter? Moreover, should patterns that are in the form of context free which require a pushdown automaton, or context-sensitive and recursively enumerable that require a Turing machine be harder to learn by neural networks? The aim of this paper is to focus on and propose some complex nonlinear data to be used in training and testing of neural networks. The most important in these parity data is that the developer can tune the complexity of nonlinearity through various amounts of degrees; the user can select various numbers of categories, huge number of pattern samples, and many hybrid symbols. Testing for various neural networks and their generalization and ability to classify unseen patterns can be more effective. Experimental results on the classification of prime numbers showed that neural networks can learn the classification of prime numbers.
机译:高度非线性的数据集在人工神经网络领域很重要。设计神经网络并尝试直接使用该网络对一些真实世界的数据进行分类是不可行的。 N位奇偶校验是用于训练和测试神经网络的最古老的数据之一。最简单的是2位奇偶校验,也称为XOR分类问题。一些研究人员说,尽管N位奇偶校验是高度非线性的,但它是神经网络学习的一项简单任务,而另一些研究人员则偏向于定制专用神经网络以仅解决N位奇偶校验问题,而没有解释为什么有这种需求。由于可以由确定性有限接受器建模,因此可以判断N位奇偶校验是简单数据吗?此外,是否需要通过下推式自动机的无上下文形式的模式,或需要图灵机的上下文相关且可递归枚举的模式更难被神经网络学习?本文的目的是集中并提出一些复杂的非线性数据,用于神经网络的训练和测试。在这些奇偶校验数据中,最重要的是,开发人员可以通过各种程度来调整非线性的复杂性。用户可以选择各种类别,大量图案样本以及许多混合符号。测试各种神经网络及其泛化能力和对看不见的模式进行分类的能力可能会更有效。关于素数分类的实验结果表明,神经网络可以学习素数的分类。

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