Predicting stock market crashes on the African stock markets: evidence from log-periodic power law model

IF 1.4 Q3 ECONOMICS
Sirine Ben Yaala, Jamel Eddine Henchiri
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引用次数: 0

Abstract

Purpose

This study aims to predict stock market crashes identified by the CMAX approach (current index level relative to historical maximum) during periods of global and local events, namely the subprime crisis of 2008, the political and social instability of 2011 and the COVID-19 pandemic.

Design/methodology/approach

Over the period 2004–2020, a log-periodic power law model (LPPL) has been employed which describes the price dynamics preceding the beginning dates of the crisis. In order to adjust the LPPL model, the Global Search algorithm was developed using the “fmincon” function.

Findings

By minimizing the sum of square errors between the observed logarithmic indices and the LPPL predicted values, the authors find that the estimated parameters satisfy all the constraints imposed in the literature. Moreover, the adjustment line of the LPPL models to the logarithms of the indices closely corresponds to the observed trend of the logarithms of the indices, which was overall bullish before the crashes. The most predicted dates correspond to the start dates of the stock market crashes identified by the CMAX approach. Therefore, the forecasted stock market crashes are the results of the bursting of speculative bubbles and, consequently, of the price deviation from their fundamental values.

Practical implications

The adoption of the LPPL model might be very beneficial for financial market participants in reducing their financial crash risk exposure and managing their equity portfolio risk.

Originality/value

This study differs from previous research in several ways. First of all, to the best of the authors' knowledge, the authors' paper is among the first to show stock market crises detection and prediction, specifically in African countries, since they generate recessionary economic and social dynamics on a large extent and on multiple regional and global scales. Second, in this manuscript, the authors employ the LPPL model, which can expect the most probable day of the beginning of the crash by analyzing excessive stock price volatility.

预测非洲股市崩盘:来自对数周期幂律模型的证据
本研究旨在通过CMAX方法(当前指数水平相对于历史最大值)预测全球和局部事件期间的股市崩盘,即2008年次贷危机,2011年政治和社会不稳定以及COVID-19大流行。设计/方法/方法在2004-2020年期间,采用了对数周期幂律模型(LPPL)来描述危机开始日期之前的价格动态。为了调整LPPL模型,利用“fmincon”函数开发了全局搜索算法。通过最小化观测到的对数指数与LPPL预测值之间的误差平方和,作者发现估计参数满足文献中施加的所有约束。此外,LPPL模型对指数对数的调整线与观测到的指数对数趋势非常接近,在崩盘前总体看涨。预测最多的日期与CMAX方法确定的股票市场崩溃的开始日期相对应。因此,预测的股市崩盘是投机泡沫破裂的结果,因此是价格偏离其基本价值的结果。实际意义LPPL模型的采用可能对金融市场参与者减少金融崩溃风险暴露和管理其股票投资组合风险非常有益。原创性/价值本研究在几个方面不同于以往的研究。首先,据作者所知,作者的论文是第一批展示股票市场危机检测和预测的论文之一,特别是在非洲国家,因为它们在很大程度上和在多个区域和全球范围内产生衰退的经济和社会动态。其次,在本文中,作者采用了LPPL模型,该模型可以通过分析股价的过度波动来预测崩盘最可能开始的日期。
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
3.20
自引率
7.70%
发文量
41
期刊介绍: African Journal of Economic and Management Studies (AJEMS) advances both theoretical and empirical research, informs policies and practices, and improves understanding of how economic and business decisions shape the lives of Africans. AJEMS is a multidisciplinary journal and welcomes papers from all the major disciplines in economics, business and management studies.
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