Artificial Neural Networks and Time Series of Counts: A Class of Nonlinear INGARCH Models

Malte Jahn
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Abstract

Time series of counts are frequently analyzed using generalized integer-valued autoregressive models with conditional heteroskedasticity (INGARCH). These models employ response functions to map a vector of past observations and past conditional expectations to the conditional expectation of the present observation. In this paper, it is shown how INGARCH models can be combined with artificial neural network (ANN) response functions to obtain a class of nonlinear INGARCH models. The ANN framework allows for the interpretation of many existing INGARCH models as a degenerate version of a corresponding neural model. Details on maximum likelihood estimation, marginal effects and confidence intervals are given. The empirical analysis of time series of bounded and unbounded counts reveals that the neural INGARCH models are able to outperform reasonable degenerate competitor models in terms of the information loss.
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人工神经网络和计数时间序列:一类非线性 INGARCH 模型
计数时间序列经常使用具有条件异方差性的广义整数值自回归模型(INGARCH)进行分析。这些模型采用响应函数将过去观测值和过去条件期望值的向量映射到当前观测值的条件期望值。本文展示了如何将 INGARCH 模型与人工神经网络(ANN)响应函数相结合,从而获得一类非线性 INGARCH 模型。ANN 框架允许将许多现有 INGARCH 模型解释为相应神经模型的退化版本。本文详细介绍了最大似然估计、边际效应和置信区间。对有界和无界计数时间序列的实证分析表明,神经 INGARCH 模型在信息损失方面优于合理的退化竞争模型。
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