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引用次数: 0
摘要
本文介绍了一种人工神经网络(ANN)方法,用于估计自相关参数接近 1 时的自回归过程 AR(1)。传统的普通最小二乘法(OLS)估计器在小样本时存在偏差,因此需要采用文献中提出的各种修正方法。在模拟数据基础上训练的方差网络因其非线性结构而优于这些方法。与需要根据特定样本大小进行模拟以纠正偏差的竞争对手不同,方差网络直接将样本大小作为输入,无需重复模拟。稳定性测试包括探索不同的 ANN 架构和激活函数,以及对过程创新的不同分布的稳健性。金融和工业数据的实证应用凸显了各种方法之间的显著差异,其中方差网络估算的持久性低于其他方法。
Artificial neural network small‐sample‐bias‐corrections of the AR(1) parameter close to unit root
This paper introduces an artificial neural network (ANN) approach to estimate the autoregressive process AR(1) when the autocorrelation parameter is near one. Traditional ordinary least squares (OLS) estimators suffer from biases in small samples, necessitating various correction methods proposed in the literature. The ANN, trained on simulated data, outperforms these methods due to its nonlinear structure. Unlike competitors requiring simulations for bias corrections based on specific sample sizes, the ANN directly incorporates sample size as input, eliminating the need for repeated simulations. Stability tests involve exploring different ANN architectures and activation functions and robustness to varying distributions of the process innovations. Empirical applications on financial and industrial data highlight significant differences among methods, with ANN estimates suggesting lower persistence than other approaches.
期刊介绍:
Statistica Neerlandica has been the journal of the Netherlands Society for Statistics and Operations Research since 1946. It covers all areas of statistics, from theoretical to applied, with a special emphasis on mathematical statistics, statistics for the behavioural sciences and biostatistics. This wide scope is reflected by the expertise of the journal’s editors representing these areas. The diverse editorial board is committed to a fast and fair reviewing process, and will judge submissions on quality, correctness, relevance and originality. Statistica Neerlandica encourages transparency and reproducibility, and offers online resources to make data, code, simulation results and other additional materials publicly available.