Machine learning algorithms applied to the estimation of liquidity: the 10-year United States treasury bond

IF 4.2 Q2 BUSINESS
Ignacio Manuel Luque Raya, Pablo Luque Raya
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引用次数: 0

Abstract

PurposeHaving defined liquidity, the aim is to assess the predictive capacity of its representative variables, so that economic fluctuations may be better understood.Design/methodology/approachConceptual variables that are representative of liquidity will be used to formulate the predictions. The results of various machine learning models will be compared, leading to some reflections on the predictive value of the liquidity variables, with a view to defining their selection.FindingsThe predictive capacity of the model was also found to vary depending on the source of the liquidity, in so far as the data on liquidity within the private sector contributed more than the data on public sector liquidity to the prediction of economic fluctuations. International liquidity was seen as a more diffuse concept, and the standardization of its definition could be the focus of future studies. A benchmarking process was also performed when applying the state-of-the-art machine learning models.Originality/valueBetter understanding of these variables might help us toward a deeper understanding of the operation of financial markets. Liquidity, one of the key financial market variables, is neither well-defined nor standardized in the existing literature, which calls for further study. Hence, the novelty of an applied study employing modern data science techniques can provide a fresh perspective on financial markets.
机器学习算法应用于流动性估计:10年期美国国债
在确定流动性之后,目的是评估其代表性变量的预测能力,以便更好地理解经济波动。设计/方法/方法将使用代表流动性的概念变量来制定预测。将比较各种机器学习模型的结果,从而对流动性变量的预测值进行一些反思,以确定它们的选择。调查结果还发现,模型的预测能力因流动性来源而异,因为私营部门内部流动性数据比公共部门流动性数据对预测经济波动的贡献更大。国际流动性被视为一个较为分散的概念,其定义的标准化可能是今后研究的重点。在应用最先进的机器学习模型时,还执行了基准测试过程。原创性/价值更好地理解这些变量可能有助于我们更深入地理解金融市场的运作。流动性作为金融市场的关键变量之一,在现有文献中既没有明确定义,也没有标准化,这需要进一步的研究。因此,采用现代数据科学技术的应用研究的新颖性可以为金融市场提供新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.90
自引率
0.00%
发文量
21
审稿时长
24 weeks
期刊介绍: European Journal of Management and Business Economics is interested in the publication and diffusion of articles of rigorous theoretical, methodological or empirical research associated with the areas of business economics, including strategy, finance, management, marketing, organisation, human resources, operations, and corporate governance, and tourism. The journal aims to attract original knowledge based on academic rigour and of relevance for academics, researchers, professionals, and/or public decision-makers.
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