基于NARX神经网络模型的波罗的海干散货指数估计

Gamze Kılınç, T. Kocabiyik, Meltem Karaatlı
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引用次数: 0

摘要

BDI是一个全球贸易指标,对海上贸易感兴趣的人关注它。但它具有波动性、季节性和不确定的周期性。因此,在本研究中,估计BDI为那些对海上贸易感兴趣的人提供初步信息。应用NARX神经网络成功地解决了现实生活中的复杂非线性问题。此外,在以往的研究中尚未发现NARX神经网络模型用于BDI估计。在这项研究中使用了11个自变量,这增加了预测能力。自变量为彭博商品指数(BCOM)、推特经济不确定性指数(TEU)、推特市场不确定性指数(TMU)、标准普尔500指数、MSCI世界指数、欧元/美元平价、波动率指数(CBOE)、美国10年期债券收益率(%)、布伦特原油(美元/桶)、经济不确定性指数和世界贸易量(亿美元)。基于twitter的经济不确定性指数(TEU)和基于twitter的市场不确定性指数(TMU)在BDI估算研究中未被使用,被纳入分析并贡献于文献。该数据集每天的数据周期为9.07.2012-31.08.2020。计算涵盖2020年9月1日至2020年9月15日的11天估计值。对估计值计算MAPE、MAE和RMSE性能标准。得到MAPE值(2.96%)、MAE值(36.6%)和RMSE值(46.68)。结果,将估计值与实际值进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Baltic Dry Index Estimation With NARX Neural Network Model
BDI is a global trade indicator followed by those interested in maritime trade. But it has volatility, seasonality, and uncertain cyclicality. For this reason, in this study, the BDI has been estimated to provide preliminary information to those interested in maritime trade. NARX Neural Network which performs successfully in complex and nonlinear real-life problems is used. In addition, the NARX neural network model has not been found in a previous study used for BDI estimation. Eleven independent variables are used in this study, what increases the predictive power. Independent variables are Bloomberg Commodities Index (BCOM), Twitter-Based Economic Uncertainty Index (TEU), Twitter-Based Market Uncertainty Index (TMU), S&P 500 Index, MSCI World Index, €/$ Parity, VIX (CBOE), US 10-Year Bond Yield (%), Brent Oil (USD/Barrel), Economic Uncertainty Index and World Trade Volume (USD Billion). The Twitter-Based Economic Uncertainty Index (TEU) and Twitter-Based Market Uncertainty Index (TMU), which were not used before in BDI estimation studies, were included in the analysis and contributed to the literature. The data set contains daily data for the period 9.07.2012–31.08.2020. 11-day estimate values covering 1.09.2020–15.09.2020 are calculated. MAPE, MAE and RMSE performance criteria were calculated for the estimation values. Value of MAPE (2.96%), value of MAE (36.6%) and value of RMSE (46.68) were obtained. As a result, the estimate values were compared with the actual values.
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来源期刊
Ekonomika Vilniaus Universitetas
Ekonomika Vilniaus Universitetas Economics, Econometrics and Finance-Economics, Econometrics and Finance (all)
CiteScore
1.40
自引率
0.00%
发文量
15
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