Jordan neural network for inflation forecasting

IF 0.5 Q4 ECONOMICS
Tea Šestanović
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引用次数: 5

Abstract

In times of pronounced nonlinearity of macroeconomic variables and in situations when variables are not normally distributed, i.e. when the assumption of i.i.d. is not fulfilled, neural networks (NNs) should be used for forecasting. In this paper, Jordan neural network (JNN), a special type of NNs is examined, because of its advantages in time series forecasting suitable for inflation forecasting. The variables used as inputs include labour market variable, financial variable, external factor and lagged inflation, i.e. the most commonly used variables in previous researches. The research is conducted at the aggregate level of euro area countries in the period from January 1999 to January 2017. Based on 250 estimated JNNs, which differ in selected variables, sample breaking point and varying parameters (number of hidden neurons, weight value of the context unit), the model adequacy indicators for each JNN are calculated for two periods: in-the-sample and out-of-sample. Finally, the optimal JNN for inflation forecasting is obtained as the best compromise solution between low mean squared error inthe-sample and out-of-sample and low number of parameters to estimate. This paper contributes to existing literature in using JNN for inflation forecasting since it is rarely used for macroeconomic time series prediction in general. Moreover, this paper defines which set of variables contributes to the best inflation forecast. Additionally, JNN is examined thoroughly by fixing certain parameters of the model and alternating other parameters to contribute to the JNN literature, i.e. finding the optimal JNN.
通货膨胀预测的Jordan神经网络
在宏观经济变量明显非线性的情况下,在变量非正态分布的情况下,即当i.i.d假设不满足时,应使用神经网络(nn)进行预测。Jordan neural network (JNN)是一种特殊类型的神经网络,由于其在时间序列预测方面的优势而适用于通货膨胀预测。作为输入的变量包括劳动力市场变量、金融变量、外部因素和滞后通货膨胀,即以前研究中最常用的变量。该研究是在1999年1月至2017年1月期间欧元区国家的总体水平上进行的。基于250个估计的JNN,这些JNN在选择的变量、样本断点和不同的参数(隐藏神经元的数量、上下文单元的权重值)上不同,每个JNN的模型充分性指标在样本内和样本外两个周期内计算。最后,得到了用于通货膨胀预测的最优JNN,作为样本内和样本外均方误差较小和需要估计的参数数量较少之间的最佳折衷解。本文对使用神经网络进行通货膨胀预测的现有文献有所贡献,因为它通常很少用于宏观经济时间序列预测。此外,本文还定义了哪一组变量有助于最佳通货膨胀预测。此外,通过固定模型的某些参数和交替其他参数来彻底检查JNN,以贡献JNN文献,即找到最优JNN。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
5
审稿时长
22 weeks
期刊介绍: Croatian Operational Research Review (CRORR) is the journal which publishes original scientific papers from the area of operational research. The purpose is to publish papers from various aspects of operational research (OR) with the aim of presenting scientific ideas that will contribute both to theoretical development and practical application of OR. The scope of the journal covers the following subject areas: linear and non-linear programming, integer programing, combinatorial and discrete optimization, multi-objective programming, stohastic models and optimization, scheduling, macroeconomics, economic theory, game theory, statistics and econometrics, marketing and data analysis, information and decision support systems, banking, finance, insurance, environment, energy, health, neural networks and fuzzy systems, control theory, simulation, practical OR and applications. The audience includes both researchers and practitioners from the area of operations research, applied mathematics, statistics, econometrics, intelligent methods, simulation, and other areas included in the above list of topics. The journal has an international board of editors, consisting of more than 30 editors – university professors from Croatia, Slovenia, USA, Italy, Germany, Austria and other coutries.
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