Experiments in predicting the German stock index DAX with density estimating neural networks

Dirk Ormoneit, R. Neuneier
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引用次数: 34

Abstract

We compare the performance of multilayer perceptrons and density estimating neural networks in the task of forecasting the return and the volatility of the DAX index. We claim that for nontrivial target distributions, density estimating networks should lead to improved predictions. The reason is that the latter are capable of embodying more complex probability models for the target noise. We discuss appropriate distribution assumptions for the important cases of outliers and non constant variances, and give interpretations of the new estimates in regression theory.
密度估计神经网络预测德国DAX指数的实验
我们比较了多层感知器和密度估计神经网络在预测DAX指数收益和波动率方面的性能。我们声称,对于非平凡的目标分布,密度估计网络应该导致改进的预测。原因是后者能够体现目标噪声更复杂的概率模型。讨论了异常值和非恒定方差的重要情况下的适当分布假设,并给出了回归理论中新的估计的解释。
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