异常数字与金融证券价格走势之间的联系:本福德定律如何预测股票收益?

IF 7.5 1区 经济学 Q1 BUSINESS, FINANCE
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引用次数: 0

摘要

本文研究了偏离本福德定律对股票回报预测的潜在影响。偏离预期模式可以作为不规则市场行为或可能的欺诈活动的早期指标,这两种情况都有可能影响未来的价格趋势。在本研究中,偏离是通过第一个显著位数的卡方检验统计来衡量的。初步结果表明,巴黎泛欧交易所和突尼斯股市的每日股票收益数据不符合本福德分布。然后,通过几个模型探讨了对收益率的影响:线性回归模型和带有各种过渡变量的平稳过渡模型。实证结果表明,本福德定律对股票收益预测有非线性影响。我们说明,该定律可以检测和预测发达市场和新兴市场中欺诈或异常活动产生的异常回报。通过使用本福德定律分析领先数字,投资者和分析师可以有效识别违规行为,并获得对市场动态的宝贵见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The link between abnormal numbers and price movements of financial securities: How does Benford’s law predict stock returns?

This paper studies the potential effect of deviation from Benford’s law on stock return prediction. Departures from the anticipated pattern can act as early indicators of irregular market behavior or possible fraudulent activities, both of which have the potential to impact future price trends. In this study, the deviation is measured by chi-squared test statistics over the first significant digit. Preliminary results indicate no compliance between daily stock returns data from Euronext Paris and Tunisian stock markets with Benford’s distribution. Then, the impact on the returns is explored via several models: linear regression and smooth transition models with various transition variables. Empirical results show the nonlinear effect of Benford’s law on stock returns prediction. We illustrate that this law can detect and predict abnormal returns generated by fraudulent or abnormal activities in both developed and emerging markets. By using Benford’s Law to analyze leading digits, investors and analysts can effectively identify irregularities and gain valuable insights into market dynamics.

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来源期刊
CiteScore
10.30
自引率
9.80%
发文量
366
期刊介绍: The International Review of Financial Analysis (IRFA) is an impartial refereed journal designed to serve as a platform for high-quality financial research. It welcomes a diverse range of financial research topics and maintains an unbiased selection process. While not limited to U.S.-centric subjects, IRFA, as its title suggests, is open to valuable research contributions from around the world.
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