基于神经网络非线性的新分数积分法及其在失业滞后测试中的应用

IF 1.9 4区 经济学 Q2 ECONOMICS
Fumitaka Furuoka, Luis A. Gil-Alana, OlaOluwa S. Yaya, Elayaraja Aruchunan, Ahamuefula E. Ogbonna
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引用次数: 0

摘要

本文提出了一种非线性分数单位根方法,即自回归神经网络-分数积分(ARNN-FI)检验。这种新的分数积分检验基于 Yaya 等人(Oxf Bull Econ Stat 83(4):960-981, 2021)提出的一种新的神经网络多层感知器过程。文中给出了所提检验的渐近理论和特性。通过建立蒙特卡罗模拟实验,模拟结果表明,随着观测值数量的增加,检验中的规模和功率失真将消失。基于这一新检验的实证应用表明,三个欧洲国家的失业率既不是静态的,也不是均值回复的,符合滞后假说。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new fractional integration approach based on neural network nonlinearity with an application to testing unemployment hysteresis

This paper proposes a nonlinear fractional unit root approach which is known as the autoregressive neural network–fractional integration (ARNN–FI) test. This new fractional integration test is based on a new multilayer perceptron of a neural network process, proposed in Yaya et al. (Oxf Bull Econ Stat 83(4):960–981, 2021). The asymptotic theory and the properties of the proposed test are given. By setting up a Monte Carlo simulation experiment, the simulation results reveal that as the number of observations increases, size and power distortions would disappear in the test. The empirical application based on this new test reveals that the unemployment rates of three European countries are neither stationary nor mean-reverting in line with the hysteresis hypothesis.

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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
157
期刊介绍: Empirical Economics publishes high quality papers using econometric or statistical methods to fill the gap between economic theory and observed data. Papers explore such topics as estimation of established relationships between economic variables, testing of hypotheses derived from economic theory, treatment effect estimation, policy evaluation, simulation, forecasting, as well as econometric methods and measurement. Empirical Economics emphasizes the replicability of empirical results. Replication studies of important results in the literature - both positive and negative results - may be published as short papers in Empirical Economics. Authors of all accepted papers and replications are required to submit all data and codes prior to publication (for more details, see: Instructions for Authors).The journal follows a single blind review procedure. In order to ensure the high quality of the journal and an efficient editorial process, a substantial number of submissions that have very poor chances of receiving positive reviews are routinely rejected without sending the papers for review.Officially cited as: Empir Econ
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