预测贸易错误定价:高斯多元异常检测模型

Olalere Isaac Opeyemi, Dewa Mendon, Dlamini Lenhle
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摘要

目的-本文预测了贸易错误定价渠道的测量指标及其在识别ifs中的有效性。方法-一个模型高斯多变量异常检测算法,用于分类之间的合法和非法交易,可疑的误报被开发。该方法是一种机器学习技术,使用2000年至2019年期间来自南非、博茨瓦纳、美国和中国的数据,以了解基于这些国家和其他因素的影响,模型性能是否存在有趣的差异。导入和导出用作模型的特征,而从这些特征派生的净流用作模型的第三个特征。进出口数据来源于国际货币基金组织的贸易统计方向数据库。年度关税数据和腐败数据分别来自WDI数据库和透明国际的清廉指数。“会计和审计准则”的数据来自世界经济论坛。研究结果-结果表明,虽然该模型可能有效地检测由于定价错误导致的ifs,但其他因素可能导致被标记为ifs的交易数据的违规行为。这除了计算总量之外,还提供了详细的信息,使政府能够从不同的来源和渠道刺激和推动遏制非法移民的愿望。新颖性-本研究通过证明有助于检测和跟踪iff的基线测量方法,为贸易错误定价的辩论做出了贡献。论文类型:EmpiricalJEL分类:F17, q02关键词:高斯多元异常检测;GMAD;非法资金流动;敌我识别。对本文的借鉴有:Opeyemi, i .;Mendon D;Lenhle, D.(2022)。一种基于高斯多元异常检测模型的贸易错误定价预测方法。经济学。评论,7(1),61-74。https://doi.org/10.35609/jber.2022.7.1 (2)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Trade Mispricing: A Gaussian Multivariate Anomaly Detection Model
Objective - This paper predicts a measurement indicator for the trade mispricing channel and its effectiveness in identifying IFFs. Methodology – A model gaussian multivariate anomaly detection algorithm, for classifying between legal and illegal transactions that are suspicious in terms of misreporting was developed. The method is a machine learning technique and uses data from South Africa, Botswana, the USA, and China over a period from 2000 to 2019, to learn whether there are any intriguing differences in the model performance based on these countries and the effect of other factors. Imports and Exports are used as features of the model while the net flow derived from these features is used as the third feature of the model. Imports and exports data are sourced from IMF’s Direction of Trade Statistics database. Annual tariffs data and corruption data come from the WDI database and Transparency International’s Corruption Perception Index, respectively. Data for ‘accounting and auditing standards’ comes from the world economic forum. Findings - The result showed that while the model may be effective in detecting IFFs due to mispricing, other factors may however contribute to irregularities of trading data that is flagged as IFFs. This in addition to accounting for total quantum, also provides details empowering governments with the information to stimulate and drive the desire to curb IFFs from its different sources and channels. Novelty - This study contributes to the debate on trade mispricing by proving a baseline measurement to help detect and track IFFs. Type of Paper: Empirical JEL Classification: F17, Q02 Keywords: Gaussian Multivariate Anomaly Detection; GMAD; Illicit Financial Flow; IFF., Trade Mispricing; Reference to this paper should be made as follows: Opeyemi, O.I; Mendon, D; Lenhle, D. (2022). Predicting Trade Mispricing: A Gaussian Multivariate Anomaly Detection Model, J. Bus. Econ. Review, 7(1), 61–74. https://doi.org/10.35609/jber.2022.7.1(2)
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