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Bayesian decision theory on three-layer neural networks

机译:三层神经网络的贝叶斯决策理论

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We discuss the Bayesian decision theory on neural networks. In the two-category case where the state-conditional probabilities are normal, a three-layer neural network having d hidden layer units can approximate the posterior probability in L~p(R~d,p), where d is the dimension of the space of observables. We extend this result to multicategory cases. Then, the number of the hidden layer units must be increased, but can be bounded by 1/2 d(d +1) irrespective of the number of categories if the neural network has direct connections between the input and output layers. In the case where the state-conditional probability is one of familiar probability distributions such as binomial, multinomial, Poisson, negative binomial distributions and so on, a two-layer neural network can approximate the posterior probability.
机译:我们讨论了神经网络的贝叶斯决策理论。在状态条件概率正常的两类情况下,具有d个隐层单元的三层神经网络可以近似表示L〜p(R〜d,p)的后验概率,其中d是维数的维数。可观察空间。我们将此结果扩展到多类别案例。然后,必须增加隐藏层单位的数量,但是如果神经网络在输入层和输出层之间具有直接连接,则不管类别的数量如何,隐藏层单位的数量都可以限制为1/2 d(d +1)。在状态条件概率是二项式,多项式,泊松,负二项式分布等熟悉的概率分布之一的情况下,两层神经网络可以近似后验概率。

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