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Bayesian Inference and Forecasting in Dynamic Neural Networks with Fully Markov Switching ARCH Noises

机译:用全马上Markov切换拱噪声动态神经网络推动和预测

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摘要

We deal with one-layer feed-forward neural network for the Bayesian analysis of nonlinear time series. Noises are modeled nonlinearly and nonnormally, by means of ARCH models whose parameters are all dependent on a hidden Markov chain. Parameter estimation is performed by sampling from the posterior distribution via Evolutionary Monte Carlo algorithm, in which two new crossover operators have been introduced. Unknown parameters of the model also include the missing values which can occur within the observed series, so, considering future values as missing, it is also possible to compute point and interval multi-step-ahead predictions.
机译:我们处理非线性时间序列贝叶斯分析的一层前馈神经网络。噪声通过拱形模型非线性和非正常模拟,其参数依赖于隐藏的马尔可夫链。通过通过进化蒙特卡罗算法从后部分布进行采样来执行参数估计,其中已经引入了两个新的交叉运算符。该模型的未知参数还包括缺失的值,可以在观察到的系列内发生,因此,考虑到未来的值,也可以计算点和间隔的多步前预测。

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